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Everything about federated learning, including research papers, books, codes, tutorials, videos and beyond
https://github.com/innovation-cat/Awesome-Federated-Machine-Learning

List: Awesome-Federated-Machine-Learning

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Everything about federated learning, including research papers, books, codes, tutorials, videos and beyond

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# Awesome Federated Machine Learning [![Awesome](https://awesome.re/badge.svg)](https://awesome.re)
Federated Learning (FL) is a new machine learning framework, which enables multiple devices collaboratively to train a shared model without compromising data privacy and security.


FL

This repository aims to keep tracking the latest research advancements of federated learning, including but not limited to research papers, books, codes, tutorials, and videos.

## Table of Contents

- [Top Machine Learning Conferences](#top-machine-learning-conferences)
+ [ICML](#icml) [ICLR](#iclr) [NeurIPS](#neurips)
- [Top Computer Vision Conferences](#top-computer-vision-conferences)
+ [CVPR](#cvpr) [ICCV](#iccv) [ECCV](#eccv)
- [Top Artificial Intelligence and Data Mining Conferences](#top-artificial-intelligence-and-data-mining-conferences)
+ [AAAI](#aaai) [AISTATS](#aistats) [KDD](#kdd)
- [Books](#books)
- [Papers (Research directions)](#papers)
+ [Model Aggregation](#1-model-aggregation)
+ [Personalization](#2-personalization)  
+ [Recommender system](#3-recommender-system)
+ [Security](#4-security)  
+ [Survey](#5-survey)  
+ [Efficiency](#7-efficiency)  
+ [Optimization](#8-optimization)  
+ [Fairness](#9-fairness)

+ [Application](#10-applications)  
+ [Boosting](#11-boosting)  
+ [Incentive mechanism](#12-incentive-mechanism)
+ [Unsupervised Learning](#13-unsupervised-learning)  
+ [Heterogeneity](#14-heterogeneity)  
+ [Client Selection](#15-client-selection)
+ [Graph Neural Networks](#16-graph-neural-networks)
+ [Other Machine Learning Paradigm](#18-other-machine-learning-paradigm)
+ [Computational Learning Theory](#19-computational-learning-theory)
- [Google FL Workshops](#google-fl-workshops)
- [Videos and Lectures](#videos-and-lectures)
- [Tutorials and Blogs](#tutorials-and-blogs)
- [Open-Sources](#open-sources)
+ [Enterprise Grade](#enterprise-grade)
+ [Research Purpose](#research-purpose)

 

## Top Machine Learning Conferences

In this section, we will summarize Federated Learning papers accepted by top machine learning conference, Including NeurIPS, ICML, ICLR.

### ICML






Years
Title
Affiliations
Materials


ICML 2023
A General Theory for Federated Optimization with Asynchronous and Heterogeneous Clients Updates
Accenture Labs



Surrogate Model Extension (SME): A Fast and Accurate Weight Update Attack on Federated Learning
ESAT-PSI, KU Leuven
code


LeadFL: Client Self-Defense against Model Poisoning in Federated Learning
Delft University of Technology



Achieving Linear Speedup in Non-IID Federated Bilevel Learning
Meta



On the Convergence of Federated Averaging with Cyclic Client Participation
Carnegie Mellon University



FedVS: Straggler-Resilient and Privacy-Preserving Vertical Federated Learning for Split Models
The Hong Kong University of Science and Technology



Flash: Concept Drift Adaptation in Federated Learning
University of Massachusetts
code


Personalized Federated Learning under Mixture of Distributions
University of California, Los Angeles



Federated Heavy Hitter Recovery under Linear Sketching
Google



Improving the Model Consistency of Decentralized Federated Learning
Tsinghua University



Towards Unbiased Training in Federated Open-world Semi-supervised Learning
The Hong Kong Polytechnic University



Optimizing the Collaboration Structure in Cross-Silo Federated Learning
University of Illinois Urbana-Champaign
code


FedBR: Improving Federated Learning on Heterogeneous Data via Local Learning Bias Reduction
The Chinese University of Hong Kong
code


Federated Online and Bandit Convex Optimization
Toyota Technology Institute



Federated Linear Contextual Bandits with User-level Differential Privacy
The Pennsylvania State University



FedCR: Personalized Federated Learning Based on Across-Client Common Representation with Conditional Mutual Information Regularization
Shanghai Jiao Tong University
code


TabLeak: Tabular Data Leakage in Federated Learning
ETH Zurich



Cocktail Party Attack: Breaking Aggregation-Based Privacy in Federated Learning Using Independent Component Analysis
Georgia Institute of Technology



The Blessing of Heterogeneity in Federated Q-Learning: Linear Speedup and Beyond
Carnegie Mellon University



LESS-VFL: Communication-Efficient Feature Selection for Vertical Federated Learning
Rensselaer Polytechnic Institute



One-Shot Federated Conformal Prediction
Universite Paris-Saclay
code


Fast Federated Machine Unlearning with Nonlinear Functional Theory
Auburn University
code


Efficient Personalized Federated Learning via Sparse Model-Adaptation
Alibaba
code


DoCoFL: Downlink Compression for Cross-Device Federated Learning
VMware Research



Private Federated Learning with Autotuned Compression
The Johns Hopkins University



Analysis of Error Feedback in Federated Non-Convex Optimization with Biased Compression: Linear Speedup and Partial Participation
LinkedIn



Personalized Subgraph Federated Learning
KAIST
code


Chameleon: Adapting to Peer Images for Planting Durable Backdoors in Federated Learning
Hong Kong University of Science and Technology
code


Dynamic Regularized Sharpness Aware Minimization in Federated Learning: Approaching Global Consistency and Smooth Landscape
The University of Sydney



Towards Understanding Ensemble Distillation in Federated Learning
KAIST



SRATTA: Sample Re-ATTribution Attack of Secure Aggregation in Federated Learning
Owkin Inc
code


FedHPO-Bench: A Benchmark Suite for Federated Hyperparameter Optimization
Alibaba
code


Federated Hypergradient Computation via Aggregated Iterative Differentiation
University at Buffalo



Personalized Federated Learning with Inferred Collaboration Graphs
Shanghai Jiao Tong University
code


Secure Federated Correlation Test and Entropy Estimation
Carnegie Mellon University
code


Doubly Adversarial Federated Bandits
London School of Economics and Political Science



FedDisco: Federated Learning with Discrepancy-Aware Collaboration
Shanghai Jiao Tong University
code


Revisiting Weighted Aggregation in Federated Learning with Neural Networks
Zhejiang University



Privacy-Aware Compression for Federated Learning Through Numerical Mechanism Design
Meta



Anchor Sampling for Federated Learning with Partial Client Participation
Purdue University
code


Federated Adversarial Learning: A Framework with Convergence Analysis
University of British Columbia



Fed-CBS: A Heterogeneity-Aware Client Sampling Mechanism for Federated Learning via Class-Imbalance Reduction
Duke University



GuardHFL: Privacy Guardian for Heterogeneous Federated Learning
University of Electronic Science and Technology of China



Vertical Federated Graph Neural Network for Recommender System
National University of Singapore
code


FeDXL: Provable Federated Learning for Deep X-Risk Optimization
Texas A&M University
code


Conformal Prediction for Federated Uncertainty Quantification Under Label Shift
Lagrange Mathematics and Computing Research Center



From Noisy Fixed-Point Iterations to Private ADMM for Centralized and Federated Learning
Univ. Lille, Inria



No One Idles: Efficient Heterogeneous Federated Learning with Parallel Edge and Server Computation
Harbin Institute of Technology
code


Out-of-Distribution Generalization of Federated Learning via Implicit Invariant Relationships
Jilin University
code


Federated Conformal Predictors for Distributed Uncertainty Quantification
MIT
code








ICML 2022
Deep Neural Network Fusion via Graph Matching with Applications to Model Ensemble and Federated Learning
Shanghai Jiao Tong University
code
video


Bitwidth Heterogeneous Federated Learning with Progressive Weight Dequantization
KAIST
video
slide


FedNew: A Communication-Efficient and Privacy-Preserving Newton-Type Method for Federated Learning
University of Oulu
code
video
slide


FedNL: Making Newton-Type Methods Applicable to Federated Learning
KAUST
video
slide
video


Federated Minimax Optimization: Improved Convergence Analyses and Algorithms
Carnegie Mellon University
slide
video


FedNest: Federated Bilevel, Minimax, and Compositional Optimization
University of Michigan
code
video
slide


Fishing for User Data in Large-Batch Federated Learning via Gradient Magnification
University of Maryland
code
slide
video


DisPFL: Towards Communication-Efficient Personalized Federated Learning via Decentralized Sparse Training
University of Science and Technology of China
code
video


Federated Learning with Positive and Unlabeled Data
Xi’an Jiaotong University
video


Neurotoxin: Durable Backdoors in Federated Learning
Southeast University;
Princeton University
code
slide
video


DAdaQuant: Doubly-adaptive quantization for communication-efficient Federated Learning
University of Cambridge
slide
video


Neural Tangent Kernel Empowered Federated Learning
NC State University
code
slide
video


EDEN: Communication-Efficient and Robust Distributed Mean Estimation for Federated Learning
VMware Research
code
slide
video


Architecture Agnostic Federated Learning for Neural Networks
The University of Texas at Austin
slide
video


Fast Composite Optimization and Statistical Recovery in Federated Learning
Shanghai Jiao Tong University
slide
video


Personalization Improves Privacy-Accuracy Tradeoffs in Federated Learning
New York University
slide
video


Communication-Efficient Adaptive Federated Learning
Pennsylvania State University
slide
video


Personalized Federated Learning via Variational Bayesian Inference
Chinese Academy of Sciences
code
video


QSFL: A Two-Level Uplink Communication Optimization Framework for Federated Learning
Nankai University
code
slide
video


Understanding Clipping for Federated Learning: Convergence and Client-Level Differential Privacy
University of Minnesota
video


The Poisson Binomial Mechanism for Unbiased Federated Learning with Secure Aggregation
Stanford University;
Google Research
slide
video


The Fundamental Price of Secure Aggregation in Differentially Private Federated Learning
Stanford University;
Google Research
code
video


Disentangled Federated Learning for Tackling Attributes Skew via Invariant Aggregation and Diversity Transferring
University of Science and Technology of China
slide
video


Federated Reinforcement Learning: Linear Speedup Under Markovian Sampling
Geogia Institute of Technology
slide
video


Orchestra: Unsupervised Federated Learning via Globally Consistent Clustering
University of Michigan
code
video


Resilient and Communication Efficient Learning for Heterogeneous Federated Systems
Michigan State University
slide
video


Accelerated Federated Learning with Decoupled Adaptive Optimization
Auburn University
slide
video


Proximal and Federated Random Reshuffling
KAUST
code
video


Personalized Federated Learning through Local Memorization
Inria
code
video


Federated Learning with Partial Model Personalization
University of Washington
code
slide
video


ProgFed: Effective, Communication, and Computation Efficient Federated Learning by Progressive Training
CISPA Helmholz Center for Information Security
code
video


Federated Learning with Label Distribution Skew via Logits Calibration
Zhejiang University
slide
video


Anarchic Federated Learning
The Ohio State University
slide
video


Virtual Homogeneity Learning: Defending against Data Heterogeneity in Federated Learning
Hong Kong Baptist University
code
video


Generalized Federated Learning via Sharpness Aware Minimization
University of South Florida
slide
video


FedScale: Benchmarking Model and System Performance of Federated Learning at Scale
University of Michigan
code
video


Multi-Level Branched Regularization for Federated Learning
Seoul National University
HomePage
slide
video








ICML 2021
Gradient Disaggregation: Breaking Privacy in Federated Learning by Reconstructing the User Participant Matrix
Harvard University
video
code


FL-NTK: A Neural Tangent Kernel-based Framework for Federated Learning Analysis
Peking University;
Princeton University
video


Personalized Federated Learning using Hypernetworks
Bar-Ilan University;
NVIDIA
code
HomePage
video


Federated Composite Optimization
Stanford University;
Google
code
video
slides


Exploiting Shared Representations for Personalized Federated Learning
University of Texas at Austin;
University of Pennsylvania
code
video


Data-Free Knowledge Distillation for Heterogeneous Federated Learning
Michigan State University
code
video


Federated Continual Learning with Weighted Inter-client Transfer
KAIST
code
video


Federated Deep AUC Maximization for Hetergeneous Data with a Constant Communication Complexity
The University of Iowa
video


Bias-Variance Reduced Local SGD for Less Heterogeneous Federated Learning
The University of Tokyo
video


Federated Learning of User Verification Models Without Sharing Embeddings
Qualcomm
video


Clustered Sampling: Low-Variance and Improved Representativity for Clients Selection in Federated Learning
Accenture
code
video


Ditto: Fair and Robust Federated Learning Through Personalization
CMU;
Facebook AI
code
video


Heterogeneity for the Win: One-Shot Federated Clustering
CMU
video


The Distributed Discrete Gaussian Mechanism for Federated Learning with Secure Aggregation
Google
video


Debiasing Model Updates for Improving Personalized Federated Training
Boston University;
Arm
video


One for One, or All for All: Equilibria and Optimality of Collaboration in Federated Learning
Toyota;
Berkeley;
Cornell University
code
video


CRFL: Certifiably Robust Federated Learning against Backdoor Attacks
UIUC;
IBM
code
video


Federated Learning under Arbitrary Communication Patterns
Indiana University;
Amazon
video








ICML 2020
FedBoost: A Communication-Efficient Algorithm for Federated Learning
Google
Video


FetchSGD: Communication-Efficient Federated Learning with Sketching
UC Berkeley;
Johns Hopkins University;
Amazon
Video
Code


SCAFFOLD: Stochastic Controlled Averaging for Federated Learning
EPFL;
Google
Video


Federated Learning with
Only Positive Labels

Google
Video


From Local SGD to Local Fixed-Point Methods for Federated Learning
Moscow Institute of Physics and Technology;
KAUST
Slide
Video


Acceleration for Compressed Gradient Descent in Distributed and Federated Optimization
KAUST
Slide
Video








ICML 2019
Bayesian Nonparametric Federated Learning of Neural Networks
IBM
Code


Analyzing Federated Learning through an Adversarial Lens
Princeton University;
IBM
Code


Agnostic Federated Learning
Google

### ICLR






Years
Title
Affiliation
Materials


ICLR 2023
MocoSFL: enabling cross-client collaborative self-supervised learning
Arizona State University
Code


Personalized Federated Learning with Feature Alignment and Classifier Collaboration
Tsinghua University



Single-shot General Hyper-parameter Optimization for Federated Learning
IBM Research



Where to Begin? On the Impact of Pre-Training and Initialization in Federated Learning
Meta AI



FedExP: Speeding Up Federated Averaging via Extrapolation
Carnegie Mellon University
code


Turning the Curse of Heterogeneity in Federated Learning into a Blessing for Out-of-Distribution Detection
Michigan State University
code


DASHA: Distributed Nonconvex Optimization with Communication Compression and Optimal Oracle Complexity
KAUST
code


Federated Neural Bandits
National University of Singapore
code


Machine Unlearning of Federated Clusters
University of Illinois Urbana-Champaign
code


FedFA: Federated Feature Augmentation
ETH Zurich
code


Federated Learning as Variational Inference: A Scalable Expectation Propagation Approach
Carnegie Mellon University
code


Better Generative Replay for Continual Federated Learning
University of Virginia
code


Federated Learning from Small Datasets
University Hospital Essen
code


Federated Nearest Neighbor Machine Translation
University of Science and Technology of China
code


Test-Time Robust Personalization for Federated Learning
Westlake University
code


DepthFL : Depthwise Federated Learning for Heterogeneous Clients
Seoul National University



Towards Addressing Label Skews in One-Shot Federated Learning
National University of Singapore
code


Towards Understanding and Mitigating Dimensional Collapse in Heterogeneous Federated Learning
National University of Singapore
code


Bias Propagation in Federated Learning
National University of Singapore
code


Panning for Gold in Federated Learning: Targeted Text Extraction under Arbitrarily Large-Scale Aggregation
University of Maryland



SWIFT: Rapid Decentralized Federated Learning via Wait-Free Model Communication
University of Maryland
code


Private Federated Learning Without a Trusted Server: Optimal Algorithms for Convex Losses
University of Southern California



Effective passive membership inference attacks in federated learning against overparameterized models
Purdue University



FedSpeed: Larger Local Interval, Less Communication Round, and Higher Generalization Accuracy
The University of Sydney



FiT: Parameter Efficient Few-shot Transfer Learning for Personalized and Federated Image Classification
University of Cambridge
code


Multimodal Federated Learning via Contrastive Representation Ensemble
Tsinghua University



Faster federated optimization under second-order similarity
Princeton University



Share Your Representation Only: Guaranteed Improvement of the Privacy-Utility Tradeoff in Federated Learning
ETH Zurich
code


The Best of Both Worlds: Accurate Global and Personalized Models through Federated Learning with Data-Free Hyper-Knowledge Distillation
The University of Texas at Austin



PerFedMask: Personalized Federated Learning with Optimized Masking Vectors
The University of British Columbia
code


FedDAR: Federated Domain-Aware Representation Learning
Harvard University
code


EPISODE: Episodic Gradient Clipping with Periodic Resampled Corrections for Federated Learning with Heterogeneous Data
George Mason University
code


FLIP: A Provable Defense Framework for Backdoor Mitigation in Federated Learning
Purdue University
code


Generalization Bounds for Federated Learning: Fast Rates, Unparticipating Clients and Unbounded Losses
Renmin University of China



Combating Exacerbated Heterogeneity for Robust Models in Federated Learning
Hong Kong Baptist University
code


Efficient Federated Domain Translation
Purdue University



On the Importance and Applicability of Pre-Training for Federated Learning
The Ohio State University
code


A Statistical Framework for Personalized Federated Learning and Estimation: Theory, Algorithms, and Privacy
University of California, Los Angeles



Instance-wise Batch Label Restoration via Gradients in Federated Learning
Beihang University
code


Decepticons: Corrupted Transformers Breach Privacy in Federated Learning for Language Models
University of Maryland



Meta Knowledge Condensation for Federated Learning
Center for Frontier AI Research



Data-Free One-Shot Federated Learning Under Very High Statistical Heterogeneity
William & Mary



CANIFE: Crafting Canaries for Empirical Privacy Measurement in Federated Learning
University of Warwick
code


Sparse Random Networks for Communication-Efficient Federated Learning
Stanford University
code


Hyperparameter Optimization through Neural Network Partitioning
University of Cambridge



Does Learning from Decentralized Non-IID Unlabeled Data Benefit from Self Supervision?
MIT CSAIL
code


Variance Reduction is an Antidote to Byzantines: Better Rates, Weaker Assumptions and Communication Compression as a Cherry on the Top
KAUST









ICLR 2022
Bayesian Framework for Gradient Leakage
ETH Zurich
Code


Federated Learning from only unlabeled data with class-conditional-sharing clients
The University of Tokyo;
The Chinese University of Hong Kong
Code


FedChain: Chained Algorithms for Near-Optimal Communication Cost in Federated Learning
Carnegie Mellon University;
University of Illinois at Urbana-Champaign;
University of Washington



Acceleration of Federated Learning with Alleviated Forgetting in Local Training
Tsinghua University
Code


FedPara: Low-rank Hadamard Product for Communication-Efficient Federated Learning
POSTECH
Code


An Agnostic Approach to Federated Learning with Class Imbalance
University of Pennsylvania
Code


Efficient Split-Mix Federated Learning for On-Demand and In-Situ Customization
Michigan State University;
The University of Texas at Austin
code


Robbing the Fed: Directly Obtaining Private Data in Federated Learning with Modified Models
University of Maryland;
New York University
code (Minimum)
code (Comprehensive)


ZeroFL: Efficient On-Device Training for Federated Learning with Local Sparsity
University of Cambridge;
University of Oxford



Diverse Client Selection for Federated Learning via Submodular Maximization
Intel;
Carnegie Mellon University
code


Recycling Model Updates in Federated Learning: Are Gradient Subspaces Low-Rank?
Purdue University
code


Diurnal or Nocturnal? Federated Learning of Multi-branch Networks from Periodically Shifting Distributions
University of Maryland;
Google
code


Towards Model Agnostic Federated Learning Using Knowledge Distillation
EPFL



Divergence-aware Federated Self-Supervised Learning
Nanyang Technological University;
SenseTime



What Do We Mean by Generalization in Federated Learning?
Stanford University;
Google
code


FedBABU: Toward Enhanced Representation for Federated Image Classification
KAIST
code


Byzantine-Robust Learning on Heterogeneous Datasets via Bucketing
EPFL
code


Improving Federated Learning Face Recognition via Privacy-Agnostic Clusters
Aibee
code


Hybrid Local SGD for Federated Learning with Heterogeneous Communications
University of Texas;
Pennsylvania State University



On Bridging Generic and Personalized Federated Learning for Image Classification
The Ohio State University
code


Minibatch vs Local SGD with Shuffling: Tight Convergence Bounds and Beyond
KAIST;
MIT









ICLR 2021
Federated Learning Based on Dynamic Regularization
Boston University;
ARM



Achieving Linear Speedup with Partial Worker Participation in Non-IID Federated Learning
The Ohio State University



HeteroFL: Computation and Communication Efficient Federated Learning for Heterogeneous Clients
Duke University
code


FedMix: Approximation of Mixup under Mean Augmented Federated Learning
KAIST



Federated Learning via Posterior Averaging: A New Perspective and Practical Algorithms
CMU; Google
code


Adaptive Federated Optimization
Google
code


Personalized Federated Learning with First Order Model Optimization
Stanford University; NVIDIA



FedBN: Federated Learning on Non-IID Features via Local Batch Normalization
Princeton University
code


FedBE: Making Bayesian Model Ensemble Applicable to Federated Learning
The Ohio State University



Federated Semi-Supervised Learning with Inter-Client Consistency & Disjoint Learning
KAIST
code








ICLR 2020
Federated Adversarial Domain Adaptation
Boston University;
Columbia University;
Rutgers University



DBA: Distributed Backdoor Attacks against Federated Learning
Zhejiang University;
IBM Research
Code


Fair Resource Allocation in Federated Learning
CMU;
Facebook AI
Code


Federated Learning with Matched Averaging
University of Wisconsin-Madison;
IBM Research
Code


Differentially Private Meta-Learning
CMU



Generative Models for Effective ML on Private, Decentralized Datasets
Google
Code


On the Convergence of FedAvg on Non-IID Data
Peking University
Code

### NeurIPS






Years
Title
Affiliation
Materials


NeurIPS 2023
SimFBO: Towards Simple, Flexible and Communication-efficient Federated Bilevel Learning
University at Buffalo



Multiply Robust Federated Estimation of Targeted Average Treatment Effects
Northeastern University



Incentivized Communication for Federated Bandits
University of Virginia



Zeroth-Order Methods for Nondifferentiable, Nonconvex, and Hierarchical Federated Optimization
Rutgers University



Private Federated Frequency Estimation: Adapting to the Hardness of the Instance
Johns Hopkins University



Handling Data Heterogeneity via Architectural Design for Federated Visual Recognition
Mohamed Bin Zayed University of Artificial Intelligence
code


Convergence Analysis of Sequential Federated Learning on Heterogeneous Data
Beijing University of Posts and Telecommunications
code


Incentives in Federated Learning: Equilibria, Dynamics, and Mechanisms for Welfare Maximization
University of Illinois, Urbana-Champaign
code


Federated Linear Bandits with Finite Adversarial Actions
University of Virginia



EvoFed: Leveraging Evolutionary Strategies for Communication-Efficient Federated Learning
KAIST



IBA: Towards Irreversible Backdoor Attacks in Federated Learning
Vanderbilt University
code


Is Heterogeneity Notorious? Taming Heterogeneity to Handle Test-Time Shift in Federated Learning
University of Technology Sydney



A Data-Free Approach to Mitigate Catastrophic Forgetting in Federated Class Incremental Learning for Vision Tasks
University of Southern California
code


Navigating Data Heterogeneity in Federated Learning: A Semi-Supervised Federated Object Detection
KAIST



Fine-Grained Theoretical Analysis of Federated Zeroth-Order Optimization
Huazhong Agricultural University



Guiding The Last Layer in Federated Learning with Pre-Trained Models
Concordia University
code


FedNAR: Federated Optimization with Normalized Annealing Regularization
Mohamed bin Zayed University of Artificial Intelligence
code


One-Pass Distribution Sketch for Measuring Data Heterogeneity in Federated Learning
Rice University
code


Lockdown: Backdoor Defense for Federated Learning with Isolated Subspace Training
Georgia Institute of Technology
code


FedGame: A Game-Theoretic Defense against Backdoor Attacks in Federated Learning
The Pennsylvania State University
code


Towards Personalized Federated Learning via Heterogeneous Model Reassembly
The Pennsylvania State University
code


Every Parameter Matters: Ensuring the Convergence of Federated Learning with Dynamic Heterogeneous Models Reduction
The George Washington University



DFRD: Data-Free Robustness Distillation for Heterogeneous Federated Learning
East China Normal University
code


A Unified Solution for Privacy and Communication Efficiency in Vertical Federated Learning
Western University
code


RECESS Vaccine for Federated Learning: Proactive Defense Against Model Poisoning Attacks
Xidian University



Federated Learning with Bilateral Curation for Partially Class-Disjoint Data
Shanghai Jiao Tong University
code


Federated Learning with Client Subsampling, Data Heterogeneity, and Unbounded Smoothness: A New Algorithm and Lower Bounds
George Mason University
code


FedL2P: Federated Learning to Personalize
University of Cambridge
code


Adaptive Test-Time Personalization for Federated Learning
University of Illinois Urbana-Champaign
code


Federated Conditional Stochastic Optimization
University of Pittsburgh



Federated Spectral Clustering via Secure Similarity Reconstruction
The Chinese University of Hong Kong



Mobilizing Personalized Federated Learning in Infrastructure-Less and Heterogeneous Environments via Random Walk Stochastic ADMM
University of Michigan



FedGCN: Convergence-Communication Tradeoffs in Federated Training of Graph Convolutional Networks
Carnegie Mellon University
code


FLuID: Mitigating Stragglers in Federated Learning using Invariant Dropout
University of British Columbia
code


Flow: Per-instance Personalized Federated Learning
University of Massachusetts
code


A3FL: Adversarially Adaptive Backdoor Attacks to Federated Learning
The Pennsylvania State University

code


Federated Compositional Deep AUC Maximization
Temple University



DELTA: Diverse Client Sampling for Fasting Federated Learning
The Chinese University of Hong Kong
code


Understanding How Consistency Works in Federated Learning via Stage-wise Relaxed Initialization
The University of Sydney
code


StableFDG: Style and Attention Based Learning for Federated Domain Generalization
KAIST



Communication-Efficient Federated Bilevel Optimization with Global and Local Lower Level Problems
University of Pittsburgh



Resolving the Tug-of-War: A Separation of Communication and Learning in Federated Learning
University of Pittsburgh



Solving a Class of Non-Convex Minimax Optimization in Federated Learning
University of Pittsburgh
code


Fed-CO$_{2}$: Cooperation of Online and Offline Models for Severe Data Heterogeneity in Federated Learning
ShanghaiTech University
code


Dynamic Personalized Federated Learning with Adaptive Differential Privacy
Wuhan University
code


Fed-GraB: Federated Long-tailed Learning with Self-Adjusting Gradient Balancer
Zhejiang University
code


Structured Federated Learning through Clustered Additive Modeling
University of Technology Sydney



Federated Learning with Manifold Regularization and Normalized Update Reaggregation
Beijing Institute of Technology



Eliminating Domain Bias for Federated Learning in Representation Space
Shanghai Jiao Tong University
code


Spectral Co-Distillation for Personalized Federated Learning
Singapore University of Technology and Design
code


PRIOR: Personalized Prior for Reactivating the Information Overlooked in Federated Learning
Sichuan University
code


FedFed: Feature Distillation against Data Heterogeneity in Federated Learning
Beihang University
code


Fed-FA: Theoretically Modeling Client Data Divergence for Federated Language Backdoor Defense
National Key Laboratory for Multimedia Information Processing
code


Fed-FA: Theoretically Modeling Client Data Divergence for Federated Language Backdoor Defense
National Key Laboratory for Multimedia Information Processing
code


SPACE: Single-round Participant Amalgamation for Contribution Evaluation in Federated Learning
National Taiwan University
code


Improved Communication Efficiency in Federated Natural Policy Gradient via ADMM-based Gradient Updates
Purdue University









NeurIPS 2022
Federated Learning from Pre-Trained Models: A Contrastive Learning Approach
University of Technology Sydney



CalFAT: Calibrated Federated Adversarial Training with Label Skewness
Zhejiang University



DENSE: Data-Free One-Shot Federated Learning
Zhejiang University



Federated Submodel Optimization for Hot and Cold Data Features
Shanghai Jiao Tong University
code


SoteriaFL: A Unified Framework for Private Federated Learning with Communication Compression
CMU
code


Factorized-FL: Personalized Federated Learning with Parameter Factorization & Similarity Matching
KAIST



FedRolex: Model-Heterogeneous Federated Learning with Rolling Sub-Model Extraction
Michigan State University
code


A Simple and Provably Efficient Algorithm for Asynchronous Federated Contextual Linear Bandits
UCLA
code


Byzantine-tolerant federated Gaussian process regression for streaming data
Pennsylvania State University



Preservation of the Global Knowledge by Not-True Distillation in Federated Learning
KAIST



TCT: Convexifying Federated Learning using Bootstrapped Neural Tangent Kernels
UC Berkeley
code


A Unified Analysis of Federated Learning with Arbitrary Client Participation
IBM
code


SemiFL: Semi-Supervised Federated Learning for Unlabeled Clients with Alternate Training
Duke University
code


A Communication-efficient Algorithm with Linear Convergence for Federated Minimax Learning
Northwestern University



Resource-Adaptive Federated Learning with All-In-One Neural Composition
Johns Hopkins University



Fairness in Federated Learning via Core-Stability
University of Illinois at Urbana Champaign
code


FedSR: A Simple and Effective Domain Generalization Method for Federated Learning
University of Oxford
code


On Sample Optimality in Personalized Collaborative and Federated Learning
Inria



Global Convergence of Federated Learning for Mixed Regression
Northeastern University



DReS-FL: Dropout-Resilient Secure Federated Learning for Non-IID Clients via Secret Data Sharing
Hong Kong University of Science and Technology



SAGDA: Achieving Communication Complexity in Federated Min-Max Learning
The Ohio State University



SAGDA: Achieving Communication Complexity in Federated Min-Max Learning
The Ohio State University



FairVFL: A Fair Vertical Federated Learning Framework with Contrastive Adversarial Learning
Tsinghua University
code


FedPop: A Bayesian Approach for Personalised Federated Learning
Skolkovo Institute of Science and Technology
code


Self-Aware Personalized Federated Learning
Amazon



Recovering Private Text in Federated Learning of Language Models
Princeton University
code


Communication Efficient Federated Learning for Generalized Linear Bandits
University of Virginia
code


A Coupled Design of Exploiting Record Similarity for Practical Vertical Federated Learning
National University of Singapore
code


On Privacy and Personalization in Cross-Silo Federated Learning
CMU
code


Personalized Online Federated Learning with Multiple Kernels
University of California Irvine
code


Communication Acceleration of Local Gradient Methods via an Accelerated Primal-Dual Algorithm with an Inexact Prox
KAUST



Learning to Attack Federated Learning: A Model-based Reinforcement Learning Attack Framework
Tulane University
code


Coresets for Vertical Federated Learning: Regularized Linear Regression and K-Means Clustering
Nanjing University
code


An Adaptive Kernel Approach to Federated Learning of Heterogeneous Causal Effects
National University of Singapore
code


LAMP: Extracting Text from Gradients with Language Model Priors
ETH Zurich
code


SecureFedYJ: a safe feature Gaussianization protocol for Federated Learning
Owkin Inc



VF-PS: How to Select Important Participants in Vertical Federated Learning, Efficiently and Securely?
Wuhan University



Sharper Convergence Guarantees for Asynchronous SGD for Distributed and Federated Learning
EPFL



Variance Reduced ProxSkip: Algorithm, Theory and Application to Federated Learning
KAUST



Taming Fat-Tailed (“Heavier-Tailed” with Potentially Infinite Variance) Noise in Federated Learning
The Ohio State University



FedAvg with Fine Tuning: Local Updates Lead to Representation Learning
The University of Texas at Austin



Personalized Federated Learning towards Communication Efficiency, Robustness and Fairness
Peking University
code


On Convergence of FedProx: Local Dissimilarity Invariant Bounds, Non-smoothness and Beyond
Baidu Research



Improved Differential Privacy for SGD via Optimal Private Linear Operators on Adaptive Streams
University of Wisconsin-Madison



Decentralized Gossip-Based Stochastic Bilevel Optimization over Communication Networks
HKUST



Asymptotic Behaviors of Projected Stochastic Approximation: A Jump Diffusion Perspective
Peking University



Subspace Recovery from Heterogeneous Data with Non-isotropic Noise
Stanford University



EF-BV: A Unified Theory of Error Feedback and Variance Reduction Mechanisms for Biased and Unbiased Compression in Distributed Optimization
KAUST



On-Demand Sampling: Learning Optimally from Multiple Distributions
University of California, Berkeley
code


Improved Utility Analysis of Private CountSketch
University of Copenhagen
code


Rate-Distortion Theoretic Bounds on Generalization Error for Distributed Learning
Huawei Technologies France
code


Decentralized Local Stochastic Extra-Gradient for Variational Inequalities
Yandex
code


BEER: Fast Rate for Decentralized Nonconvex Optimization with Communication Compression
Princeton University
code


Escaping Saddle Points with Bias-Variance Reduced Local Perturbed SGD for Communication Efficient Nonconvex Distributed Learning
NTT DATA Mathematical Systems Inc



Near-Optimal Collaborative Learning in Bandits
Université Paris Cité
code


Distributed Methods with Compressed Communication for Solving Variational Inequalities, with Theoretical Guarantees
Yandex



Towards Optimal Communication Complexity in Distributed Non-Convex Optimization
TTIC
code








NeurIPS 2021
Sageflow: Robust Federated Learning against Both Stragglers and Adversaries
KAIST
HomePage


CAFE: Catastrophic Data Leakage in Vertical Federated Learning
Rensselaer Polytechnic Institute;
IBM Research
code
HomePage


Fault-Tolerant Federated Reinforcement Learning with Theoretical Guarantee
NUS
code
HomePage


Optimality and Stability in Federated Learning: A Game-theoretic Approach
Cornell University
code
HomePage


QuPeD: Quantized Personalization via Distillation with Applications to Federated Learning
UCLA
HomePage


The Skellam Mechanism for Differentially Private Federated Learning
Google Research;
CMU
HomePage


No Fear of Heterogeneity: Classifier Calibration for Federated Learning with Non-IID Data
NUS;
Huawei
HomePage


STEM: A Stochastic Two-Sided Momentum Algorithm Achieving Near-Optimal Sample and Communication Complexities for Federated Learning
University of Minnesota
HomePage


Subgraph Federated Learning with Missing Neighbor Generation
Emory University;
University of British Columbia;
Lehigh University
HomePage


Evaluating Gradient Inversion Attacks and Defenses in Federated Learning
Princeton University
Code
HomePage


Personalized Federated Learning With Gaussian Processes
Bar-Ilan University
code
HomePage


Differentially Private Federated Bayesian Optimization with Distributed Exploration
MIT;
NUS
code
HomePage


Parameterized Knowledge Transfer for Personalized Federated Learning
Hong Kong Polytechnic University;

HomePage


Federated Reconstruction: Partially Local Federated Learning
Google Research
HomePage


Fast Federated Learning in the Presence of Arbitrary Device Unavailability
Tsinghua University;
Princeton University;
MIT
code
HomePage


FL-WBC: Enhancing Robustness against Model Poisoning Attacks in Federated Learning from a Client Perspective
Duke University;
Accenture Labs
code
HomePage


FjORD: Fair and Accurate Federated Learning under heterogeneous targets with Ordered Dropout
KAUST;
Samsung AI Center
HomePage


Linear Convergence in Federated Learning: Tackling Client Heterogeneity and Sparse Gradients
University of Pennsylvania
HomePage


Federated Multi-Task Learning under a Mixture of Distributions
INRIA;
Accenture Labs
code
HomePage


Federated Graph Classification over Non-IID Graphs
Emory University
HomePage


Federated Hyperparameter Tuning: Challenges, Baselines, and Connections to Weight-Sharing
CMU;
Hewlett Packard Enterprise
code
HomePage


On Large-Cohort Training for Federated Learning
Google;
CMU
code
HomePage


DeepReduce: A Sparse-tensor Communication Framework for Federated Deep Learning
KAUST;
Columbia University;
University of Central Florida
code
HomePage


PartialFed: Cross-Domain Personalized Federated Learning via Partial Initialization
Huawei
HomePage


Federated Split Task-Agnostic Vision Transformer for COVID-19 CXR Diagnosis
KAIST
HomePage


Addressing Algorithmic Disparity and Performance Inconsistency in Federated Learning
Tsinghua University;
Alibaba;
Weill Cornell Medicine
code
HomePage


Federated Linear Contextual Bandits
The Pennsylvania State University;
Facebook;
University of Virginia
HomePage


Few-Round Learning for Federated Learning
KAIST
HomePage


Breaking the centralized barrier for cross-device federated learning
EPFL;
Google Research
code
HomePage


Federated-EM with heterogeneity mitigation and variance reduction
Ecole Polytechnique;
Google Research
HomePage


Delayed Gradient Averaging: Tolerate the Communication Latency for Federated Learning
MIT;
Amazon;
Google
HomePage


FedDR – Randomized Douglas-Rachford Splitting Algorithms for Nonconvex Federated Composite Optimization
University of North Carolina at Chapel Hill;
IBM Research
code
HomePage


Gradient Inversion with Generative Image Prior
Pohang University of Science and Technology;
University of Wisconsin-Madison;
University of Washington
code
HomePage








NeurIPS 2020
Differentially-Private Federated Linear Bandits
MIT
code


Federated Principal Component Analysis
University of Cambridge;
Quine Technologies
code


FedSplit: an algorithmic framework for fast federated optimization
UC Berkeley



Federated Bayesian Optimization via Thompson Sampling
NUS; MIT



Lower Bounds and Optimal Algorithms for Personalized Federated Learning
KAUST



Robust Federated
Learning: The Case of Affine Distribution Shifts

UC Santa Barbara; MIT



An Efficient Framework for Clustered Federated Learning
UC Berkeley; DeepMind
Code


Distributionally Robust
Federated Averaging

Pennsylvania State University
Code


Personalized
Federated Learning with Moreau Envelopes

The University of Sydney
code


Personalized Federated
Learning with Theoretical Guarantees: A Model-Agnostic Meta-Learning Approach

MIT; UT Austin



Group Knowledge
Transfer: Federated Learning of Large CNNs at the Edge

University of Southern California
code


Tackling the Objective
Inconsistency Problem in Heterogeneous Federated Optimization

CMU;
Princeton University



Attack of the Tails:
Yes, You Really Can Backdoor Federated Learning

University of Wisconsin-Madison



Federated Accelerated
Stochastic Gradient Descent

Stanford University
code


Inverting Gradients -
How easy is it to break privacy in federated learning?

University of Siegen
code


Ensemble Distillation for Robust Model Fusion in Federated Learning
EPFL



Throughput-Optimal Topology Design for Cross-Silo Federated Learning
INRIA
code








NeurIPS 2018
cpSGD: Communication-efficient and differentially-private distributed SGD
Princeton University;
Google









NeurIPS 2017
Federated Multi-Task Learning
Stanford;
USC;
CMU
code

 

## Top Computer Vision Conferences
In this section, we will summarize Federated Learning papers accepted by top computer vision conference, Including CVPR, ICCV, ECCV.

### CVPR






Years
Title
Affiliation
Materials


CVPR 2023
STDLens: Model Hijacking-Resilient Federated Learning for Object Detection
Georgia Instutite of Technology
code


On the Effectiveness of Partial Variance Reduction in Federated Learning With Heterogeneous Data
Technical University of Denmark
code


GradMA: A Gradient-Memory-Based Accelerated Federated Learning With Alleviated Catastrophic Forgetting
East China Normal University
code


Confidence-Aware Personalized Federated Learning via Variational Expectation Maximization
ESAT-PSI, KU Leuven
code


Elastic Aggregation for Federated Optimization
Meituan



Federated Learning With Data-Agnostic Distribution Fusion
Nanjing University
code


How To Prevent the Poor Performance Clients for Personalized Federated Learning?
Central South University



FedDM: Iterative Distribution Matching for Communication-Efficient Federated Learning
UCLA



DaFKD: Domain-Aware Federated Knowledge Distillation
Huazhong University of Science and Technology
code


Adaptive Channel Sparsity for Federated Learning Under System Heterogeneity
University of Macau



ScaleFL: Resource-Adaptive Federated Learning With Heterogeneous Clients
Georgia Institute of Technology
code


The Resource Problem of Using Linear Layer Leakage Attack in Federated Learning
Purdue University



Re-Thinking Federated Active Learning Based on Inter-Class Diversity
KAIST
code


Rethinking Federated Learning With Domain Shift: A Prototype View
Wuhan University
code


Reliable and Interpretable Personalized Federated Learning
Tianjin University



Make Landscape Flatter in Differentially Private Federated Learning
Tsinghua University
code


Federated Incremental Semantic Segmentation
Shenyang Institute of Automation
code


Federated Domain Generalization with Generalization Adjustment
Shanghai Jiao Tong University
code


FedSeg: Class-Heterogeneous Federated Learning for Semantic Segmentation
Zhejiang University



Bias-Eliminating Augmentation Learning for Debiased Federated Learning
National Taiwan University



Class Balanced Adaptive Pseudo Labeling for Federated Semi-Supervised Learning
East China Normal University
code


Learning Federated Visual Prompt in Null Space for MRI Reconstruction
IHPC
code


Fair Federated Medical Image Segmentation via Client Contribution Estimation
The Chinese University of Hong Kong
HomePage


Breaching FedMD: Image Recovery via Paired-Logits Inversion Attack
Tsinghua University
code








CVPR 2022
FedDC: Federated Learning with Non-IID Data via Local Drift Decoupling and Correction
National University of Defense Technology
code


Federated Class-Incremental Learning
Chinese Academy of Sciences;
Northwestern University;
University of Technology Sydney
code


Fine-tuning Global Model via Data-Free Knowledge Distillation for Non-IID Federated Learning
Peking University;
JD Explore Academy;
The University of Sydney



Differentially Private Federated Learning with Local Regularization and Sparsification
Chinese Academy of Sciences



Auditing Privacy Defenses in Federated Learning via Generative Gradient Leakage
University of Tennessee;
Oak Ridge National Laboratory;
Google Research
code
video


FedCor: Correlation-Based Active Client Selection Strategy for Heterogeneous Federated Learning
Duke University



Learn from Others and Be Yourself in Heterogeneous Federated Learning
Wuhan University
code
video


ResSFL: A Resistance Transfer Framework for Defending Model Inversion Attack in Split Federated Learning
Arizona State University
code


Robust Federated Learning with Noisy and Heterogeneous Clients
Wuhan University
code


Rethinking Architecture Design for Tackling Data Heterogeneity in Federated Learning
Stanford University
video
code


CD2-pFed: Cyclic Distillation-guided Channel Decoupling for Model Personalization in Federated Learning
Shanghai Jiao Tong University



FedCorr: Multi-Stage Federated Learning for Label Noise Correction
Singapore University of Technology and Design
video
code


ATPFL: Automatic Trajectory Prediction Model Design under Federated Learning Framework
Harbin Institute of Technology



Federated Learning with Position-Aware Neurons
Nanjing University



RSCFed: Random Sampling Consensus Federated Semi-supervised Learning
The Hong Kong University of Science and Technology
code


Closing the Generalization Gap of Cross-silo Federated Medical Image Segmentation
Univ. of Pittsburgh;
NVIDIA
code


Layer-wised Model Aggregation for Personalized Federated Learning
The Hong Kong Polytechnic University



Local Learning Matters: Rethinking Data Heterogeneity in Federated Learning
University of Central Florida
code








CVPR 2021
Multi-Institutional Collaborations for Improving Deep Learning-Based Magnetic Resonance Image Reconstruction Using Federated Learning
Johns Hopkins University
code


Model-Contrastive Federated Learning
National University of Singapore;
UC Berkeley
code


FedDG: Federated Domain Generalization on Medical Image Segmentation via Episodic Learning in Continuous Frequency Space
The Chinese University of Hong Kong
code


Soteria: Provable Defense Against Privacy Leakage in Federated Learning From Representation Perspective
Duke University
code

### ECCV






Years
Title
Affiliation
Materials


ECCV 2022
Auto-FedRL: Federated Hyperparameter Optimization for Multi-institutional Medical Image Segmentation
Johns Hopkins University
code


Personalizing Federated Medical Image
Segmentation via Local Calibration

Xiamen Universit
code


SphereFed: Hyperspherical Federated Learning
Harvard University



FedX: Unsupervised Federated Learning
with Cross Knowledge Distillation

KAIST
code


FedVLN: Privacy-preserving Federated
Vision-and-Language Navigation

University of California
code


Addressing Heterogeneity in Federated Learning
via Distributional Transformation

Johns Hopkins University
code


FedLTN: Federated Learning for Sparse and Personalized Lottery Ticket Networks
MIT



Improving Generalization in Federated Learning
by Seeking Flat Minima

Politecnico di Torino
code


Federated Self-supervised Learning for Video Understanding
TCL AI Lab
code


AdaBest: Minimizing Client Drift in Federated Learning via Adaptive Bias Estimation
Dalhousie University









ECCV 2020
Federated Visual Classification with Real-World Data Distribution
MIT;
Google
Video

### ICCV






Years
Title
Affiliation
Materials


ICCV 2021
Federated Learning for Non-IID Data via Unified Feature Learning and Optimization Objective Alignment
Peking University



Ensemble Attention Distillation for Privacy-Preserving Federated Learning
University at Buffalo



Collaborative Unsupervised Visual Representation Learning from Decentralized Data
Nanyang Technological University;
SenseTime

 

## Top Artificial Intelligence and Data Mining Conferences

In this section, we will summarize Federated Learning papers accepted by top AI and DM conference, Including AAAI, AISTATS, KDD.

### AAAI






Years
Title
Affiliation
Materials


AAAI 2023
Win-Win: A Privacy-Preserving Federated Framework for Dual-Target Cross-Domain Recommendation
Chinese Academy of Sciences



Untargeted Attack against Federated Recommendation Systems via Poisonous Item Embeddings and the Defense
University of Science and Technology of China
code


Incentive-Boosted Federated Crowdsourcing
Shandong University
code


Tackling Data Heterogeneity in Federated Learning with Class Prototypes
Lehigh University
code


FairFed: Enabling Group Fairness in Federated Learning
University of Southern California



Federated Robustness Propagation: Sharing Adversarial Robustness in Heterogeneous Federated Learning
Michigan State University
code


Complement Sparsification: Low-Overhead Model Pruning for Federated Learning
New Jersey Institute of Technology



Almost Cost-Free Communication in Federated Best Arm Identification
National University of Singapore



Layer-Wise Adaptive Model Aggregation for Scalable Federated Learning
University of Southern California



Poisoning with Cerberus: Stealthy and Colluded Backdoor Attack against Federated Learning
Beijing Jiaotong University



FedMDFG: Federated Learning with Multi-Gradient Descent and Fair Guidance
The Chinese University of Hong Kong



Securing Secure Aggregation: Mitigating Multi-Round Privacy Leakage in Federated Learning
University of Southern California



Federated Learning on Non-IID Graphs via Structural Knowledge Sharing
University of Technology Sydney
code


Efficient Distribution Similarity Identification in Clustered Federated Learning via Principal Angles between Client Data Subspaces
UC San Diego
code


FedABC: Targeting Fair Competition in Personalized Federated Learning
Wuhan University



Beyond ADMM: A Unified Client-Variance-Reduced Adaptive Federated Learning Framework
Singapore University of Technology and Design



FedGS: Federated Graph-Based Sampling with Arbitrary Client Availability
Xiamen University
code


Faster Adaptive Federated Learning
University of Pittsburgh



FedNP: Towards Non-IID Federated Learning via Federated Neural Propagation
The Hong Kong University of Science and Technology
code


Bayesian Federated Neural Matching That Completes Full Information
Tongji University
code


CDMA: A Practical Cross-Device Federated Learning Algorithm for General Minimax Problems
Zhejiang University
code


Federated Generative Model on Multi-Source Heterogeneous Data in IoT
Georgia State University



DeFL: Defending against Model Poisoning Attacks in Federated Learning via Critical Learning Periods Awareness
SUNY-Binghamton University



FedALA: Adaptive Local Aggregation for Personalized Federated Learning
Shanghai Jiao Tong University
code


Delving into the Adversarial Robustness of Federated Learning
Zhejiang University



On the Vulnerability of Backdoor Defenses for Federated Learning
Tongji University



Echo of Neighbors: Privacy Amplification for Personalized Private Federated Learning with Shuffle Model
Renmin University of China



DPAUC: Differentially Private AUC Computation in Federated Learning
ByteDance
code








AAAI 2022
HarmoFL: Harmonizing Local and Global Drifts in Federated Learning on Heterogeneous Medical Images
The Chinese University of Hong Kong;
Beihang University
code


Cross-Modal Federated Human Activity Recognition via Modality-Agnostic and Modality-Specific Representation Learning
Chinese Academy of Sciences



FedInv: Byzantine-Robust Federated Learning by Inversing Local Model Updates
Nanjing University of Aeronautics and Astronautics



Learning Advanced Client Selection Strategy for Federated Learning
Harvard University



Federated Learning for Face Recognition with Gradient Correction
Beijing University of Posts and Telecommunications



SpreadGNN: Decentralized Multi-Task Federated Learning for Graph Neural Networks on Molecular Data
university of Southern California
code


SmartIdx: Reducing Communication Cost in Federated Learning by Exploiting the CNNs Structures
Harbin Institute of Technology;
Peng Cheng Laboratory



Is Your Data Relevant?: Dynamic Selection of Relevant Data for Federated Learning
IIT Bombay



Seizing Critical Learning Periods in Federated Learning
SUNY-Binghamton University;
Louisiana State University



Coordinating Momenta for Cross-silo Federated Learning
University of Pittsburgh



FedProto: Federated Prototype Learning over Heterogeneous Devices
University of Technology Sydney;
University of Washington
code


FedSoft: Soft Clustered Federated Learning with Proximal Local Updating
Carnegie Mellon University



Federated Dynamic Sparse Training: Computing Less, Communicating Less, Yet Learning Better
The University of Texas at Austin
code


FedFR: Joint Optimization Federated Framework for Generic and Personalized Face Recognition
National Taiwan University
code


SplitFed: When Federated Learning Meets Split Learning
CSIRO;
Lehigh University
code


Efficient Device Scheduling with Multi-Job Federated Learning
Soochow University;
Baidu



Implicit Gradient Alignment in Distributed and Federated Learning
IIT Kanpur;
EPFL



Federated Nearest Neighbor Classification with a Colony of Fruit-Flies
IBM Research;
Wichita State University
code








AAAI 2021
Secure Bilevel Asynchronous Vertical Federated Learning with Backward Updating
Xidian University;
JD Tech
video


FedRec++: Lossless Federated Recommendation with Explicit Feedback
Shenzhen University
video


Federated Multi-Armed Bandits
University of Virginia
code
video


On the Convergence of Communication-Efficient Local SGD for Federated Learning
Temple University;
University of Pittsburgh
video


FLAME: Differentially Private Federated Learning in the Shuffle Model
Renmin University of China;
Kyoto University
video
code


Toward Understanding the Influence of Individual Clients in Federated Learning
Shanghai Jiao Tong University;
The University of Texas at Dallas
video


Provably Secure Federated Learning against Malicious Clients
Duke University
video
slides


Personalized Cross-Silo Federated Learning on Non-IID Data
Simon Fraser University;
McMaster University
video


Model-Sharing Games: Analyzing Federated Learning under Voluntary Participation
Cornell University
code
video


Curse or Redemption? How Data Heterogeneity Affects the Robustness of Federated Learning
University of Nevada;
IBM Research
video


Game of Gradients: Mitigating Irrelevant Clients in Federated Learning
IIT Bombay;
IBM Research
video
Supplementary


Federated Block Coordinate Descent Scheme for Learning Global and Personalized Models
The Chinese University of Hong Kong;
Arizona State University
video
code


Adressing Class Imbalance in Federated Learning
Northwestern University
video
code


Defending against Backdoors in Federated Learning with Robust Learning Rate
The University of Texas at Dallas
video
code








AAAI 2020
Practical Federated Gradient Boosting Decision Trees
National University of Singapore;
The University of Western Australia
code


Federated Learning for Vision-and-Language Grounding Problems
Peking University;
Tencent



Federated Latent Dirichlet Allocation: A Local Differential Privacy Based Framework
Beihang University



Federated Patient Hashing
Cornell University



Robust Federated Learning via Collaborative Machine Teaching
Symantec Research Labs;
KAUST

### AISTATS






Years
Title
Affiliation
Materials


AISTATS 2022
Federated Reinforcement Learning with Environment Heterogeneity
Peking University
code


Basis Matters: Better Communication-Efficient Second Order Methods for Federated Learning
KAUST



Federated Learning with Buffered Asynchronous Aggregation
Meta AI
video


Federated Myopic Community Detection with One-shot Communication
Purdue University



QLSD: Quantised Langevin Stochastic Dynamics for Bayesian Federated Learning
Criteo AI Lab
video
code


Asynchronous Upper Confidence Bound Algorithms for Federated Linear Bandits
University of Virginia
code


SparseFed: Mitigating Model Poisoning Attacks in Federated Learning with Sparsification
Princeton University
video
code


Federated Functional Gradient Boosting
University of Pennsylvania
code


Towards Federated Bayesian Network Structure Learning with Continuous Optimization
Carnegie Mellon University
code


Sharp Bounds for Federated Averaging (Local SGD) and Continuous Perspective
Stanford University
code


Differentially Private Federated Learning on Heterogeneous Data
Stanford University
code


Towards Understanding Biased Client Selection in Federated Learning
Carnegie Mellon University
code


FLIX: A Simple and Communication-Efficient Alternative to Local Methods in Federated Learning
KAUST
code








AISTATS 2021
Free-rider Attacks on Model Aggregation in Federated Learning
Accenture Labs
video
Supplementary


Federated f-differential privacy
University of Pennsylvania
code
video
Supplementary


Federated learning with compression: Unified analysis and sharp guarantees
The Pennsylvania State University;
The University of Texas at Austin
code
video
Supplementary


Shuffled Model of Differential Privacy in Federated Learning
UCLA;
Google
video
Supplementary


Convergence and Accuracy Trade-Offs in Federated Learning and Meta-Learning
Google
video
Supplementary


Federated Multi-armed Bandits with Personalization
University of Virginia;
The Pennsylvania State University
code
video
Supplementary


Towards Flexible Device Participation in Federated Learning
CMU;
Sun Yat-Sen University
video
Supplementary








AISTATS 2020
FedPAQ: A Communication-Efficient Federated Learning Method with Periodic Averaging and Quantization
UC Santa Barbara;
UT Austin
video
Supplementary


How To Backdoor Federated Learning
Cornell Tech
video
code
Supplementary


Federated Heavy Hitters Discovery with Differential Privacy
RPI;
Google
video
Supplementary

### KDD






Years
Sessions
Title
Affiliation
Materials


KDD 2023
Research Track
FedAPEN: Personalized Cross-silo Federated Learning with Adaptability to Statistical Heterogeneity
Zhejiang University
code


DM-PFL: Hitchhiking Generic Federated Learning for Efficient Shift-Robust Personalization
Beihang University
code


FedCP: Separating Feature Information for Personalized Federated Learning via Conditional Policy
Shanghai Jiao Tong University
code


Personalized Federated Learning with Parameter Propagation
UniversityofIllinoisatUrbana-Champaign



Navigating Alignment for Non-identical Client Class Sets: A Label Name-Anchored Federated Learning Framework
University of California, San Diego
code


CriticalFL: A Critical Learning Periods Augmented Client Selection Framework for Efficient Federated Learning
State University of New York, Binghamton



Federated Few-shot Learning
University of Virginia
code


FedDefender: Client-Side Attack-Tolerant Federated Learning
KAIST
code


Serverless Federated AUPRC Optimization for Multi-Party Collaborative Imbalanced Data Mining
University of Pittsburgh
code


Theoretical Convergence Guaranteed Resource-Adaptive Federated Learning with Mixed Heterogeneity
Shandong University
code


ShapleyFL: Robust Federated Learning Based on Shapley Value
Zhejiang University
code


FedPseudo: Privacy-Preserving Pseudo Value-Based Deep Learning Models for Federated Survival Analysis
University of Maryland, Baltimore County
code


Privacy Matters: Vertical Federated Linear Contextual Bandits for Privacy Protected Recommendation
University of Cambridge
code


FLAMES2Graph: An Interpretable Federated Multivariate Time Series Classification Framework
L3S Research Center



Applied Data Science Track
FedMultimodal: A Benchmark for Multimodal Federated Learning
University of Southern California
code


UA-FedRec: Untargeted Attack on Federated News Recommendation
University of Science and Technology of China
code


PrivateRec: Differentially Private Model Training and Online Serving for Federated News Recommendation
Renmin University of China



FS-REAL: Towards Real-World Cross-Device Federated Learning
Alibaba Group
code


Revisiting Personalized Federated Learning: Robustness Against Backdoor Attacks
Hong Kong University of Science and Technology
code








KDD 2022
Research Track
Collaboration Equilibrium in Federated Learning

Tsinghua University;
Alibaba Group
code


Connected Low-Loss Subspace Learning for a Personalization in Federated Learning
Ulsan National Institute of Science and Technology & Kakao Enterprise
code


Communication-Efficient Robust Federated Learning with Noisy Labels
University of Pittsburgh



FedMSplit: Correlation-Adaptive Federated Multi-Task Learning across Multimodal Split Networks




Application Track
Fed-LTD: Towards Cross-Platform Ride Hailing via Federated Learning to Dispatch
Beihang University



No One Left Behind: Inclusive Federated Learning over Heterogeneous Devices
Renmin University of China



EasyFGL: Towards a Unified, Comprehensive and Efficient Platform for Federated Graph Learning
Alibaba Group
code


FedAttack: Effective and Covert Poisoning Attack on Federated Recommendation via Hard Sampling
Tsinghua University
code








KDD 2021
Research Track
Fed2: Feature-Aligned Federated Learning

George Mason University;
Microsoft;
University of Maryland



FedRS: Federated Learning with Restricted Softmax for Label Distribution Non-IID Data
Nanjing University
code


Federated Adversarial Debiasing for Fair and Trasnferable Representations
Michigan State University
HomePage


Cross-Node Federated Graph Neural Network for Spatio-Temporal Data Modeling
University of Southern California
code


Application Track
AsySQN: Faster Vertical Federated Learning Algorithms with Better Computation Resource Utilization
JD Tech



FLOP: Federated Learning on Medical Datasets using Partial Networks
Duke University
code








KDD 2020
Research Track
FedFast: Going Beyond Average for Faster Training of Federated Recommender Systems
University College Dublin
video


Application Track
Federated Doubly Stochastic Kernel Learning for Vertically Partitioned Data
JD Tech
video

 

## Books

- 联邦学习(Federated Learning)

[Chinese Version](https://item.jd.com/12649191.html)

[English Version](https://www.amazon.com/Federated-Learning-Synthesis-Artificial-Intelligence/dp/1681736977/ref=sr_1_1?dchild=1&keywords=federated+learning&qid=1617695403&sr=8-1)

- 联邦学习实战(Practicing Federated Learning)

[Chinese Version](https://item.jd.com/13206070.html)

[Github](https://github.com/FederatedAI/Practicing-Federated-Learning)

- Federated Learning - A Comprehensive Overview of Methods and Applications

[English Version](https://link.springer.com/book/10.1007/978-3-030-96896-0)
 

## Papers

### 1. Model Aggregation

Model Aggregation (or Model Fusion) refers to how to combine local models into a shared global model.






Papers
Abbreviation
Conferences/Affiliations
Materials


Communication-Efficient Learning of Deep Networks from Decentralized Data
FedAvg
ASTATS 2017



A bayesian federated learning framework with online laplace approximation
FedBayes
TPAMI
code


Bayesian Nonparametric Federated Learning of Neural Networks
PFNM
ICML 2019
code


Machine Learning with Adversaries: Byzantine Tolerant Gradient Descent
Krum
NeurIPS 2017



Byzantine-Robust Distributed Learning: Towards Optimal Statistical Rates
median;
trimmed mean
ICML 2018



Distributed Training with Heterogeneous Data: Bridging Median- and Mean-Based Algorithms
median;
mean
NeurIPS 2020



The hidden vulnerability of distributed learning in byzantium
Bulyan
ICML 2018



Zeno: Distributed Stochastic Gradient Descent with Suspicion-based Fault-tolerance
Zeno
ICML 2019
code


Statistical Model Aggregation via Parameter Matching
SPAHM
NeurIPS 2019
code


Fed+: A Unified Approach to Robust Personalized Federated Learning
Fed+




FEDERATED OPTIMIZATION IN HETEROGENEOUS NETWORKS
FedProx
MLSys 2020
code


Separation of Powers in Federated Learning
Truda




FedBE: Making Bayesian Model Ensemble Applicable to Federated Learning
FedBE
ICLR 2021
(The Ohio State University)



Federated Learning with Matched Averaging
FedMA
ICLR 2020
(University of Wisconsin-Madison; IBM)
Code


FedSim: Similarity Guided Model Aggregation for Federated Learning
FedSim
Neurocomputing 2022 (Vol 483)
(Robert Gordon University, UK)
Code


Model Fusion via Optimal Transport


NeurIPS 2020
(ETH, EPFL)
Code

 

### 2. Personalization

Personalized federated learning refers to train a model for each client, based on the client’s own dataset and the datasets of other clients. There are two major motivations for personalized federated learning:

- Due to statistical heterogeneity across clients, a single global model would not be a good choice for all clients. Sometimes, the local models trained solely on their private data perform better than the global shared model.
- Different clients need models specifically customized to their own environment. As an example of model heterogeneity, consider the sentence: “I live in .....”. The next-word prediction task applied on this sentence needs to predict a different answer customized for each user. Different clients may assign different labels to the same data.

Personalized federated learning Survey paper:

- [Survey of Personalization Techniques for Federated Learning](https://arxiv.org/pdf/2003.08673.pdf)

- [Three Approaches for Personalization with Applications to Federated Learning](https://arxiv.org/pdf/2002.10619.pdf)

- [Personalized Federated Learning for Intelligent IoT Applications: A Cloud-Edge based Framework](https://arxiv.org/pdf/2002.10671.pdf)





Methodology
Papers
Conferences/Affiliations
Materials


Multi-Task Learning
Federated Multi-Task Learning
NeurIPS 2017
(Stanford; USC; CMU)
code


Decentralized Collaborative Learning of Personalized Models over Networks
AISTATS 2017
(INRIA)



Variational Federated Multi-Task Learning
ETH Zurich



Fully Decentralized Joint Learning of Personalized Models and Collaboration Graphs
AISTATS 2020
(INRIA)
video


Personalized Cross-Silo Federated Learning on Non-IID Data
AAAI 2021
(Simon Fraser University; McMaster University; Huawei Technologies Canada)
video


Ditto: Fair and Robust Federated Learning Through Personalization
ICML 2021
(CMU; Facebook AI)
code
video


Federated Multi-Task Learning under a Mixture of Distributions
NeurIPS 2021
(Inria; Accenture Labs)
code








Meta Learning
Personalized Federated Learning: A Meta-Learning Approach
MIT



Debiasing Model Updates for Improving Personalized Federated Training
ICML 2021
(Boston University; Arm)
video


Improving Federated Learning Personalization via Model Agnostic Meta Learning
University of Washington; Google



Adaptive Gradient-Based Meta-Learning Methods
CMU



Federated Meta-Learning with Fast Convergence and Efficient Communication
Huawei Noah’s Ark Lab









Mixture of Global and Local Models
Federated Learning of a Mixture of Global and Local Models
KAUST



Federated User Representation Learning
University of Michigan
Facebook



Adaptive Personalized Federated Learning
The Pennsylvania State University









Personalization Layers
Federated Learning with Personalization Layers
Adobe Research
Indian Institute of Technology



Think Locally, Act Globally: Federated Learning with Local and Global Representations
CMU
University of Tokyo
Columbia University



Exploiting Shared Representations for Personalized Federated Learning
ICML 2021
(University of Texas at Austin;
University of Pennsylvania)
code
video








Transfer Learning
Federated evaluation of on-device personalization
Google



Salvaging Federated Learning by Local Adaptation
Cornell University



Private Federated Learning with Domain Adaptation

Oracle Labs



QuPeD: Quantized Personalization via Distillation with Applications to Federated Learning
NeurIPS 2021
(UCLA)
HomePage








Clustering
Clustered Federated Learning: Model-Agnostic Distributed Multi-Task Optimization under Privacy Constraints
Fraunhofer Heinrich Hertz Institute
Code


An Efficient Framework for Clustered Federated Learning
UC Berkeley
DeepMind
Code


Robust Federated Learning in a Heterogeneous Environment
UC Berkeley



Personalized Federated Learning with First Order Model Optimization
ICLR 2021
(Stanford University; NVIDIA)









Hypernetwork
Personalized Federated Learning using Hypernetworks
Bar-Ilan University;
NVIDIA
code
HomePage
video

 

### **3. Recommender system**

Recommender system (RecSys) is widely used to solve information overload. In general, the more data RecSys use, the better the recommendation performance we can obtain.

Traditionally, RecSys requires the data that are distributed across multiple devices to be uploaded to the central database for model training. However, due to privacy and security concerns, such directly sharing user data strategies are no longer appropriate.

The incorporation of federated learning and RecSys is a promising approach, which can alleviate the risk of privacy leakage.

More federated recommendation papers can be found in this repository: [FedRecPapers](https://github.com/AustinNeverPee/FedRecPapers)





Methodology
Papers
Conferences/Affiliations
Materials


Matrix Factorization
Secure federated matrix factorization
IEEE Intelligent Systems



Federated Multi-view Matrix Factorization for Personalized Recommendations
ECML-PKDD 2020
video


Decentralized Recommendation Based on Matrix Factorization: A Comparison of Gossip and Federated Learning
ECML-PKDD 2019



Towards Privacy-preserving Mobile Applications with Federated Learning: The Case of Matrix Factorization
MobiSys 2019



Meta Matrix Factorization for Federated Rating Predictions
ACM SIGIR 2020
code


Federated Collaborative Filtering for Privacy-Preserving Personalized Recommendation System
Arxiv









GNN
FedGNN: Federated Graph Neural Network for Privacy-Preserving Recommendation
Arxiv



Federated Social Recommendation with Graph Neural Network
ACM TIST



Personalized Federated Recommendation via Joint Representation Learning, User Clustering, and Model Adaptation
CIKM 2022



Federated Meta Embedding Concept Stock Recommendation
IEEE Big Data 2022



Federated Learning-Based Cross-Enterprise Recommendation With Graph Neural Networks
IEEE Transactions on Industrial Informatics

 

### **4. Security**

#### 4.1. Attack





Methodology
Papers
Conferences/Affiliations
Materials


Backdoor Attack
How To Backdoor Federated Learning
AISTATS 2020
code


Can You Really Backdoor Federated Learning?
Arxiv



Attack of the Tails: Yes, You Really Can Backdoor Federated Learning
NeurIPS 2020
code


DBA: Distributed Backdoor Attacks against Federated Learning
ICLR 2020
code








Gradients Attack
Deep Leakage from Gradients
NeurIPS 2020
HomePage
code


Gradient Disaggregation: Breaking Privacy in Federated Learning by Reconstructing the User Participant Matrix
ICML 2021
code


Deep Models Under the GAN: Information Leakage from Collaborative Deep Learning
ACM CCS 2017
video


iDLG: Improved Deep Leakage from Gradients
Arxiv
code


See through Gradients: Image Batch Recovery via GradInversion
CVPR 2021



Inverting Gradients - How easy is it to break Privacy in Federated Learning?
NeurIPS 2020
code


CAFE: Catastrophic Data Leakage in Vertical Federated Learning
NeurIPS 2021
(Rensselaer Polytechnic Institute; IBM)
code
HomePage


Evaluating Gradient Inversion Attacks and Defenses in Federated Learning
NeurIPS 2021
(Princeton University)



R-GAP: RECURSIVE GRADIENT ATTACK ON PRIVACY
ICLR 2021
(KU Leuven, Belgium)
Code


Auditing Privacy Defenses in Federated Learning via Generative Gradient Leakage
CVPR 2022
(University of Tennessee;Oak Ridge National Laboratory)
Code








Model Poison Attack
Analyzing Federated Learning through an Adversarial Lens
ICML 2019
(Princeton University; IBM)
Code


Turning Privacy-preserving Mechanisms against Federated Learning
CCS 2023
(University of Pavia; TU Delft; University of Padua; Radboud University)
Code

 

#### 4.2. Defense






Methodology
Papers
Conferences/Affiliations
Materials


FL+DP
Federated Learning With Differential Privacy: Algorithms and Performance Analysis
IEEE Transactions on Information Forensics and Security



Differentially Private Federated Learning: A Client Level Perspective
Arxiv
code


Learning Differentially Private Recurrent Language Models
ICLR 2018



The Distributed Discrete Gaussian Mechanism for Federated Learning with Secure Aggregation
ICML 2021
(Google)
video


The Skellam Mechanism for Differentially Private Federated Learning
NeurIPS 2021
(Google Research; CMU)
HomePage








FL+HE
Private federated learning on vertically partitioned data via entity resolution and additively homomorphic encryption
Arxiv



BatchCrypt: Efficient Homomorphic Encryption for Cross-Silo Federated Learning
USENIX 2020
code








FL+TEE
PPFL: Privacy-preserving Federated Learning with Trusted Execution Environments
ACM MobiSys 2021



Darknetz: towards model privacy at the edge using trusted execution environments.
ACM MobiSys 2020
code
video








Algorithm
A Little Is Enough: Circumventing Defenses For Distributed Learning
NeurIPS 2019



CRFL: Certifiably Robust Federated Learning against Backdoor Attacks
ICML 2021
(UIUC; IBM)
code
video


Evaluating Gradient Inversion Attacks and Defenses in Federated Learning
NeurIPS 2021
(Princeton University)
Code
HomePage

 

### **5. Survey**





Category
Papers


General
Federated Learning with Privacy-preserving and Model IP-right-protection


Federated machine learning: Concept and applications


A Survey on Federated Learning Systems: Vision, Hype and Reality for Data Privacy and Protection


Federated Learning in Mobile Edge Networks: A Comprehensive Survey


Advances and Open Problems in Federated Learning


Federated Learning: Challenges, Methods, and Future Directions


The Internet of Federated Things (IoFT)


Vertical Federated Learning: Challenges, Methodologies and Experiments


Vertical Federated Learning






Security
A survey on security and privacy of federated learning


Threats to Federated Learning: A Survey


Vulnerabilities in Federated Learning






Personalization
Survey of Personalization Techniques for Federated Learning


Towards Personalized Federated Learning






Aggregation
Emerging Trends in Federated Learning: From Model Fusion to Federated X Learning






Incentive
A Comprehensive Survey of Incentive Mechanism for Federated Learning


A Survey of Incentive Mechanism Design for Federated Learning


Incentive Mechanisms for Federated Learning:
From Economic and Game Theoretic Perspective







Applications
A Survey on Federated Learning and its Applications for Accelerating Industrial Internet of Things


Applications
Privacy Computing Meets Metaverse: Necessity, Taxonomy and Challenges






Fairness
A Survey of Fairness-Aware Federated Learning






Graph
FedGraphNN: A Federated Learning System and Benchmark for Graph Neural Networks


Federated Graph Learning - A Position Paper


Federated Graph Machine Learning: A Survey of Concepts, Techniques, and Applications


Federated Graph Neural Networks: Overview, Techniques and Challenges






System
Towards Efficient Synchronous Federated Training: A Survey on System Optimization Strategies

 

### **7. Efficiency**

**Communication-Based:** Improving efficiency by reducing model parameters transmission.

**Hardware-Based:** Improving efficiency by hardware acceleration (GPU, FPGA, etc.)

**Algorithm-Based:** Improving efficiency by accelerating model convergence rate (local training, model aggregation, client selection, etc.)






Taxonomy
Papers
Techniques
Materials


Communication-Based
Communication-Efficient Distributed Learning via Lazily Aggregated Quantized Gradients
Quantization



Lazily Aggregated Quantized Gradient Innovation for Communication-Efficient Federated Learning
Quantization



Communication Efficient Federated Learning with Adaptive Quantization
Quantization



QSGD: Communication-Efficient SGD via Gradient Quantization and Encoding
Quantization



SAFARI: Sparsity enabled Federated Learning with Limited and Unreliable Communications
Sparsity



RPN: A Residual Pooling Network for Efficient Federated Learning
Sparsity



FedMD: Heterogenous Federated Learning via Model Distillation
Knowledge Distillation
code


Ensemble distillation for robust model fusion in federated learning
Knowledge Distillation
code








Hardware-Based
FPGA-Based Hardware Accelerator of Homomorphic Encryption for Efficient Federated Learning
FPGA-Based Acceleration



Hardware Accelerated Learning at the Edge
GPU-Based Acceleration



HAFLO: GPU-Based Acceleration for Federated Logistic Regression
GPU-Based Acceleration









Algorithm
FetchSGD: Communication-Efficient Federated Learning with Sketching
Optimization
Video
Code


Acceleration for Compressed Gradient Descent in Distributed and Federated Optimization
Optimization
Slide
Video


FedBoost: A Communication-Efficient Algorithm for Federated Learning
Optimization
Video


Federated Learning: Strategies for Improving Communication Efficiency
Optimization



One-Shot Federated Learning
Model Aggregation

 

### **8. Optimization**






Papers
Application Scenarios
Conferences/Affiliations
Materials


Federated Composite Optimization
loss function contains a non-smooth regularizer
ICML 2021(Google)
code


Federated Deep AUC Maximization for Hetergeneous Data with a Constant Communication Complexity
Federated Deep AUC Maximization
ICML 2021
(The University of Iowa)
video


Bias-Variance Reduced Local SGD for Less Heterogeneous Federated Learning
Non-Convex Objective optimization
ICML 2021
(The University of Tokyo)
video


From Local SGD to Local Fixed-Point Methods for Federated Learning
fixed-point algorithms optimization
ICML 2020
(Moscow Institute of Physics and Technology; KAUST)
Slide
Video


Federated Learning Based on Dynamic Regularization
In each round, the objective function for each device dynamically updates its regularizer
ICLR 2021
(Boston University; ARM)



Federated Learning via Posterior Averaging: A New Perspective and Practical Algorithms
Formulate federated learning optimization as a posterior inference problem
ICLR 2021
(CMU; Google)
code


Adaptive Federated Optimization
Federated versions of adaptive optimizers
ICLR 2021
(Google)
code


FedBN: Federated Learning on Non-IID Features via Local Batch Normalization
How to uses local batch normalization to alleviate the feature shift before averaging models.
ICLR 2021
(Princeton University)
code


Federated Semi-Supervised Learning with Inter-Client Consistency & Disjoint Learning
SFederated versions of emi-Supervised Learning
ICLR 2021
(KAIST)
code


Sageflow: Robust Federated Learning against Both Stragglers and Adversaries
Handle both stragglers (slow devices) and adversaries simultaneously
NeurIPS 2021
(KAIST)
HomePage


STEM: A Stochastic Two-Sided Momentum Algorithm Achieving Near-Optimal Sample and Communication Complexities for Federated Learning
Distributed stochastic non-convex optimization
University of Minnesota
HomePage


Secure Bilevel Asynchronous Vertical Federated Learning with Backward Updating
Vertical Federated Learning Optimization
AAAI 2021
(Xidian University; JD Tech)
video

 

### **9. Fairness**






Taxonomy
Papers
Conferences/Affiliations
Materials


Performance Fairness
Addressing Algorithmic Disparity and Performance Inconsistency in Federated Learning
NeurIPS 2021
(Tsinghua University; Alibaba)
code
HomePage


Fairness-aware Agnostic Federated Learning
SDM 2021
(University of Arkansas)



Fair Resource Allocation in Federated Learning
ICLR 2020
(CMU; Facebook AI)
Code


Agnostic Federated Learning
ICML 2019
(Google)



Mitigating Bias in Federated Learning
arXiv
(IBM)



Ditto: Fair and Robust Federated Learning Through Personalization
ICML 2021
(CMU; Facebook AI)
code
video








Client Selection Fairness
An Efficiency-boosting Client Selection Scheme for Federated Learning with Fairness Guarantee
IEEE Transactions on Parallel and Distributed Systems



Stochastic Client Selection for Federated Learning with Volatile Clients
IEEE Internet of Things Journal



Federated learning with class imbalance reduction
European Signal Processing Conference



Reputation-Based Federated Learning for Secure Wireless Networks
” IEEE Internet of Things Journal









Contribution Fairness
Profit Allocation for Federated Learning
2019 IEEE International Conference on Big Data



Stochastic Client Selection for Federated Learning with Volatile Clients
IEEE Internet of Things Journal



Federated learning with class imbalance reduction
European Signal Processing Conference



Reputation-Based Federated Learning for Secure Wireless Networks
” IEEE Internet of Things Journal

 

### **10. Applications**





Applications
Papers
Conferences/Affiliations
Materials


Computer Vision
FedVision: An Online Visual Object Detection Platform Powered by Federated Learning
WeBank (AAAI 2020)
code








Nature Language Processing
Federated learning for emoji prediction in a mobile keyboard
Google



Federated Learning for Mobile Keyboard Prediction
Google



Applied federated learning: Improving google keyboard query suggestions
Google



Federated Learning Of Out-Of-Vocabulary Words
Google









Automatic Speech Recognition
A Federated Approach in Training Acoustic Models
MicroSoft (INTERSPEECH 2020)
Video


Privacy-Preserving Adversarial Representation Learning in ASR: Reality or Illusion?
INRIA (INTERSPEECH 2019)



Training Speech Recognition Models with Federated Learning: A Quality/Cost Framework
Google (ICASSP 2021)
Google Assistant Help


Federated Evaluation and Tuning for On-Device Personalization: System Design \& Applications
Apple
Report








Healthcare
Privacy-preserving Federated Brain Tumour Segmentation
NVIDIA (MICCAI MLMI 2019)



Advancing health research with Google Health Studies
Google
Blog


Multi-institutional Deep Learning Modeling Without Sharing Patient Data: A Feasibility Study on Brain Tumor Segmentation
Intel
Blog








Blockchain
FedCoin: A Peer-to-Peer Payment System for Federated Learning
Arxiv



Blockchained On-Device Federated Learning
IEEE Communications Letters 2019

 

### **11. Boosting**





Category
Papers
Conferences/Affiliations
Materials


Tree-Base Boosting
Practical Federated Gradient Boosting Decision Trees
AAAI 2020
(NUS)
code


Secureboost: A lossless federated learning framework
IEEE Intelligent Systems 2021
(WeBank; HKUST)



Large-scale Secure XGB for Vertical Federated Learning
CIKM 2021
(Ant Group)
video






 

### **12. Incentive mechanism**

Typically, the incentive mechanism consists of the following two steps:

* How to evaluate the contribution of each participant (Shapley value)

* How to allocate profits based on contributions






Steps
Techniques
Papers
Affiliations
Materials


1. Contribution Evaluation
Shapley Value
Data Shapley: Equitable Valuation of Data for Machine Learning
ICML 2019
(Stanford University)
code


A principled approach to data valuation for federated learning
Arxiv
(Harvard University)



Measure contribution of participants in federated learning
IEEE Big Data
(Swiss Re)



GTG-Shapley: Efficient and Accurate Participant Contribution Evaluation in Federated Learning
IAAI 2021
(NTU)



Profit allocation for federated learning
Arxiv
(Beihang University)



Fedcoin: A peer-to-peer payment system for federated learning
NTU









2. Profit Allocation
Contract Theory
Hierarchical Incentive Mechanism Design for Federated Machine Learning in Mobile networks
IEEE Internet of Things Journal 2020



Incentive Design for Efficient Federated Learning in Mobile Networks: A Contract Theory Approach
2019 IEEE VTS Asia Pacific Wireless Communications Symposium



Incentive Mechanism for Reliable Federated Learning: A Joint Optimization Approach to Combining Reputation and Contract Theory
IEEE Internet of Things Journal 2019



A Contract Theory based Incentive Mechanism for Federated Learning
FTL-IJCAI Workshop 2021



Stackelberg Game
Motivating Workers in Federated Learning: A
Stackelberg Game Perspective

IEEE Networking Letters, 2020.



A Learning-based Incentive
Mechanism for Federated Learning

IEEE Internet of Things Journal, 2020



Auction
FMore: An Incentive Scheme of Multi-dimensional
Auction for Federated Learning in MEC

IEEE ICDCS, 2020.



A VCG-based Fair Incentive Mechanism for Federated Learning
arXiv preprint



Toward an Automated Auction Framework for Wireless Federated Learning Services Market
IEEE Transactions on Mobile Computing, 2020



Auction based Incentive Design for Efficient Federated Learning in Cellular Wireless Networks
2020 IEEE Wireless Communications and Networking Conference



FAIR: Quality-Aware Federated Learning with Precise User Incentive and Model Aggregation
IEEE INFOCOM, 2021.



Incentive Mechanism for Horizontal Federated Learning Based on Reputation and Reverse Auction
WWW, 2021
video

 

### **13. Unsupervised Learning**






Category
Papers
Conferences/Affiliations
Materials


Clustering
Heterogeneity for the Win: One-Shot Federated Clustering
ICML 2021
(CMU)
video








Representations Learning
Exploiting Shared Representations for Personalized Federated Learning
ICML 2021
(University of Texas at Austin;
University of Pennsylvania)
code
video


Towards Federated Unsupervised Representation Learning
EdgeSys '20
(Eindhoven University of Technology)



Federated Unsupervised Representation Learning
Zhejiang University



Collaborative Unsupervised Visual Representation Learning from Decentralized Data
(ICCV 2021)
(Nanyang Technological University;SenseTime)



Divergence-aware Federated Self-Supervised Learning
(ICLR 2022)
(Nanyang Technological University)



Orchestra: Unsupervised Federated Learning via Globally Consistent Clustering
(ICML 2022)
(University of Michigan;University of Cambridge)
code

 

### **14. Heterogeneity**






Category
Papers
Conferences/Affiliations
Materials


Data Heterogeneity (NON-IID)
Data-Free Knowledge Distillation for Heterogeneous Federated Learning
ICML 2021
(Michigan State University)
code
video


Federated Deep AUC Maximization for Hetergeneous Data with a Constant Communication Complexity
ICML 2021
(The University of Iowa)
video


Exploiting Shared Representations for Personalized Federated Learning
ICML 2021
(University of Texas at Austin;
University of Pennsylvania)
code
video


SCAFFOLD: Stochastic Controlled Averaging for Federated Learning
ICML 2020
(EPFL; Google)
Video


Achieving Linear Speedup with Partial Worker Participation in Non-IID Federated Learning
ICLR 2021
(The Ohio State University)



HeteroFL: Computation and Communication Efficient Federated Learning for Heterogeneous Clients
ICLR 2021
(Duke University)
code


FedMix: Approximation of Mixup under Mean Augmented Federated Learning
ICLR 2021
(KAIST)



On the Convergence of FedAvg on Non-IID Data
ICLR 2020
(Peking University)
Code


No Fear of Heterogeneity: Classifier Calibration for Federated Learning with Non-IID Data
NeurIPS 2021
(NUS; Huawei)
HomePage


HarmoFL: Harmonizing Local and Global Drifts in Federated Learning on Heterogeneous Medical Images
AAAI 2022
(The Chinese University of Hong Kong)
code








Model Heterogeneity
Personalized Federated Learning with Moreau Envelopes
NeurIPS 2020
(The University of Sydney)
code


Federated Learning of a Mixture of Global and Local Models
KAUST



Salvaging Federated Learning by Local Adaptation
Cornell University









Device Heterogeneity
Sageflow: Robust Federated Learning against Both Stragglers and Adversaries
NeurIPS 2021
(KAIST)
HomePage


Towards Flexible Device Participation in Federated Learning
AISTATS 2021
(CMU; Sun Yat-Sen University)
video
Supplementary


Asynchronous Federated Optimization
12th Annual Workshop on Optimization for Machine Learning



Pisces: Efficient Federated Learning via Guided Asynchronous Training
ACM SoCC 2022
(HKUST)
Code
Slides

 

### **15. Client Selection**





Papers
Conferences/Affiliations
Materials


Diverse Client Selection for Federated Learning via Submodular Maximization
ICLR 2022
(Intel; CMU)
code


TiFL: A Tier-based Federated Learning System
HPDC 2020
(George Mason University)



HACCS: Heterogeneity-Aware Clustered Client Selection for Accelerated Federated Learning
IPDPS 2022
(University of Minnesota)
code


Communication-Efficient Federated Learning via Optimal Client Sampling
University of Texas at Austin



Oort: Efficient Federated Learning via Guided Participant Selection
OSDI 2021
(University of Michigan)
code


Optimizing federated learning on non-iid data with reinforcement learning
IEEE INFOCOM 2020
(University of Toronto)



Learning Advanced Client Selection Strategy for Federated Learning
AAAI 2022
(Harvard University)



Towards understanding biased client selection in federated learning
AISTATS 2022
(Carnegie Mellon University)



Stochastic Client Selection for Federated Learning with Volatile Clients
IEEE Internet of Things Journal 2022
(South China University of Technology)



Oort: Efficient Federated Learning via Guided Participant Selection
OSDI 2021
(University of Michigan)
code
video


Clustered Sampling: Low-Variance and Improved Representativity for Clients Selection in Federated Learning
ICML 2021
(Accenture)
code
video


Federated Multi-Armed Bandits
AAAI 2021
(University of Virginia)
code
video


FedPAQ: A Communication-Efficient Federated Learning Method with Periodic Averaging and Quantization
AISTATS 2020
(UC Santa Barbara; UT Austin)
video
Supplementary

 

### **16. Graph Neural Networks**






Category
Papers
Conferences/Affiliations
Materials


Graph-Level
Federated Graph Classification over Non-IID Graphs
NeurIPS 2021
(Emory University)



Federated Learning of Molecular Properties with Graph Neural Networks in a Heterogeneous Setting
arXiv
(University of Rochester)



FedGCN: Federated Learning-Based Graph Convolutional Networks for Non-Euclidean Spatial Data
Mathematics 2022
(Nanjing University of Information Science and Technology)









SubGraph-Level
FedGraph: Federated Graph Learning with Intelligent Sampling
IEEE TPDS
(University of Aizu)



Glint: Decentralized Federated Graph Learning with Traffic Throttling and Flow Scheduling
IWQOS 2021
(University of Aizu)



PPSGCN: A Privacy-Preserving Subgraph Sampling Based Distributed GCN Training Method
Arxiv
(Xi’an Jiaotong University)



Subgraph Federated Learning with Missing Neighbor Generation
NeurIPS 2021
(Emory University;)
HomePage


FedNI: Federated Graph Learning with Network Inpainting for Population-Based Disease Prediction
Arxiv
( University of Electronic Science and Technology of China)



FedGL: Federated Graph Learning Framework with Global Self-Supervision
Arxiv
(Sun Yat-sen University)




Personalized Subgraph Federated Learning
ICML 2023
(KAIST)









Node-Level
Cross-Node Federated Graph Neural Network for Spatio-Temporal Data Modeling
KDD 2021
(University of Southern California)



Personalized Federated Learning With Graph
IJCAI 2022
(Beihang University)
code


BiG-Fed: Bilevel Optimization Enhanced Graph-Aided Federated Learning
FL-ICML Workshop 2021
(Nanyang Technological University)



Decentralized Federated Graph Neural Networks
FL-IJCAI Workshop 2021
(Blue Elephant Tec)



Peer-to-Peer Federated Learning on Graphs
Arxiv
(University of California)



A Graph Federated Architecture with Privacy
Preserving Learning

Arxiv
(EPFL)



Decentralized Federated Learning for Electronic Health Records
Arxiv
(IBM)



Learn Electronic Health Records by Fully Decentralized Federated Learning
FL-NeurIPS 2019
(University of Minnesota)



Decentralized Federated Learning via SGD over
Wireless D2D Networks

Arxiv
(Shenzhen University)



SpreadGNN: Decentralized Multi-Task Federated Learning for Graph Neural Networks on Molecular Data
AAAI 2022
(university of Southern California)
code


A New Look and Convergence Rate of Federated
Multi-Task Learning with Laplacian Regularization

Arxiv
(The University of Sydney)
code


Decentralized Event-Triggered Federated Learning
with Heterogeneous Communication Thresholds

Arxiv
( Purdue University)
code

 

### **18. Other Machine Learning Paradigm**





Taxonomy
Papers
Conferences/Affiliations
Materials


Neural Architecture Search
Federated Neural Architecture Search
Beijing University of Posts and Telecommunications



FedNAS: Federated Deep Learning via Neural Architecture Search
CVPR 2020 workshop
(University of Southern California)



Self-supervised cross-silo federated neural architecture search
WeBank









Active Learning
Active Federated Learning
University of Michigan



Active learning based federated learning for waste and natural disaster image classification
Hamad Bin Khalifa University



Federated Active Learning
Harvard Medical School









Continual Learning
Federated Continual Learning with Weighted Inter-client Transfer
KAIST (ICML 2021)
code


Partitioned variational inference: A unified framework encompassing federated and continual learning
University of Sydney



A distillation-based approach integrating continual learning and federated learning for pervasive services
Inria



FedSpeech: Federated Text-to-Speech with Continual Learning
Zhejiang University

 

### **19. Computational Learning Theory**

Privacy, utility, and efficiency are the three key concepts of trustworthy federated learning. We point out that there is no security mechanism that can achieve optimality in terms of privacy leakage, utility loss, and efficiency loss simultaneously.

* [No Free Lunch Theorem for Security and Utility in Federated Learning](https://arxiv.org/pdf/2203.05816.pdf)
* [Trading Off Privacy, Utility and Efficiency in Federated Learning](https://arxiv.org/pdf/2209.00230.pdf)
* [Probably Approximately Correct Federated Learning](https://arxiv.org/pdf/2304.04641.pdf)
* [A Game-theoretic Framework for Federated Learning](https://arxiv.org/pdf/2304.05836.pdf)
* [Optimizing Privacy, Utility and Efficiency in Constrained Multi-Objective Federated Learning](https://arxiv.org/pdf/2305.00312.pdf)

 

## Google FL Workshops
* [Google Workshop on Federated Learning and Analytics 2022](https://www.youtube.com/watch?v=ZokMxYDlCJk&list=PLSIUOFhnxEiA-Ky_BuirTS6Amb9A60uSH&ab_channel=GoogleTechTalks)
* [Google Workshop on Federated Learning and Analytics 2021](https://www.youtube.com/playlist?list=PLSIUOFhnxEiD9uihG5t9ABdPhSVqQ3HWA)
* [Google Workshop on Federated Learning and Analytics 2020](https://www.youtube.com/playlist?list=PLSIUOFhnxEiCJS8q6SYdc0944xlV_6Jbu)
* [Google Federated Learning workshop 2019](https://sites.google.com/view/federated-learning-2019/home)

 

## Videos and Lectures

* [TensorFlow Federated Tutorial Session](https://www.youtube.com/watch?v=JBNas6Yd30A&ab_channel=GoogleTechTalks)

* [TensorFlow Federated (TFF): Machine Learning on Decentralized Data ](https://www.youtube.com/watch?v=1YbPmkChcbo) - Google, TF Dev Summit ‘19 2019

* [Federated Learning: Machine Learning on Decentralized Data](https://www.youtube.com/watch?v=89BGjQYA0uE) - Google, Google I/O 2019

* [Federated Learning](https://www.youtube.com/watch?v=xJkY3ehX_MI) - Cloudera Fast Forward Labs, DataWorks Summit 2019

* [GDPR, Data Shortage and AI](https://vimeo.com/313941621) - Qiang Yang, AAAI 2019 Invited Talk

* [Code Tutorial: From Centralized to Federated](https://www.youtube.com/watch?v=Ky6TicaPfVI) - Flower Summit 2021

 

## Tutorials and Blogs

* [What is Federated Learning](https://blogs.nvidia.com/blog/2019/10/13/what-is-federated-learning/) - Nvidia 2019
* [Online Federated Learning Comic](https://federated.withgoogle.com/) - Google 2019
* [Federated Learning: Collaborative Machine Learning without Centralized Training Data](https://ai.googleblog.com/2017/04/federated-learning-collaborative.html) - Google AI Blog 2017
* [Go Federated with OpenFL](https://medium.com/@igor.davidyuk_98364/go-federated-with-openfl-8bc145a5ead1) - Intel 2021

 

## Open-Sources

Developing a federated learning framework from scratch is very time-consuming, especially in industrial. An excellent FL framework can facilitate engineers and researchers to train, research and deploy the FL model in practice. In this section, we summarize some commonly used open-source FL frameworks from both industrial and academia perspectives.

### Enterprise Grade





Platform
Papers
Affiliations/HomePage


FATE
FATE: An Industrial Grade Platform for Collaborative Learning With Data Protection
WeBank


FedML
FedML: A Research Library and Benchmark for Federated Machine Learning
fedml.ai


OpenFL
OpenFL: An open-source framework for Federated Learning
Intel


NVFlare

NVIDIA


IBM Federated Learning
IBM Federated Learning: an Enterprise Framework White Paper
IBM


Fedlearner

Bytedance


PaddleFL

Baidu


Sherpa.ai Federated Learning
Federated Learning and Differential Privacy: Software tools analysis, the Sherpa.ai FL framework and methodological guidelines for preserving data privacy
Sherpa.ai


FederatedScope
FederatedScope: A Flexible Federated Learning Platform for Heterogeneity
Alibaba


secretflow

Antgroup


FEDn
Scalable federated machine learning with FEDn
Scaleout Systems

 

### Research Purpose





Platform
Papers
Affiliations/HomePage


Tensorflow-Federated
Towards Federated Learning at Scale: System Design
Google


FedJAX
FEDJAX: Federated learning simulation with JAX
Google


Flower
Flower: A Friendly Federated Learning Research Framework
flower.dev


FLUTE
FLUTE: A Scalable, Extensible Framework for High-Performance Federated Learning Simulations
Microsoft


FLSim

Meta


PySyft
A generic framework for privacy preserving deep learning
OpenMined


PyVertical
PyVertical: A Vertical Federated Learning Framework for Multi-headed SplitNN
OpenMined


LEAF
LEAF: A Benchmark for Federated Settings
CMU


FedScale
FedScale: Benchmarking Model and System Performance of Federated Learning at Scale
SymbioticLab(University of Michigan)


EasyFL
EasyFL: A Low-code Federated Learning Platform For Dummies
NTU


FedLab
FedLab: A Flexible Federated Learning Framework
SMILELab-FL


Galaxy Federated Learning
GFL: A Decentralized Federated Learning Framework Based On Blockchain
Zhejiang University


FedTree

National University of Singapore

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