An open API service indexing awesome lists of open source software.

https://github.com/machine-learning-tokyo/ml-math

Mathematics for Machine Learning
https://github.com/machine-learning-tokyo/ml-math

Last synced: 12 months ago
JSON representation

Mathematics for Machine Learning

Awesome Lists containing this project

README

          

# ML-Math

This repository is part of our **MLT もくもく会 Math Reading Sessions** and the **MLT Mathematics for Machine Learning Discussions**.

# Review sessions and presentations

### [YouTube Playlist](https://www.meetup.com/Machine-Learning-Tokyo/events/270761078/)

- [Singular Value Decomposition](https://youtu.be/ONScfggC-M0) by [Jayson Cunanan, Ph.D.](https://www.linkedin.com/in/jayson-cunanan-phd/), AI Researcher/Engineer at AI inside 株式会社
- [Intro to Principal Component Analysis and Probabilistic PCA](https://www.youtube.com/watch?v=yyO08F5bFuA&list=PLaPdEEY26UXygpV-Cxch8Xkpl7IbFKBvK&index=5&t=0s) by [Hiroshi Urata, Data Scientist](https://www.linkedin.com/in/hiroshi-u/), Data Scientist, IBM Japan
- [Fourier transforms and a brief comparison with SVD](https://www.youtube.com/watch?v=8zRmr25vYBw&list=PLaPdEEY26UXygpV-Cxch8Xkpl7IbFKBvK&index=4&t=0s) by [Jayson Cunanan, Ph.D.](https://www.linkedin.com/in/jayson-cunanan-phd/), AI Researcher/Engineer at AI inside 株式会社
- [ML Math Review Session: Singular Value Decomposition](https://www.youtube.com/watch?v=PrIv-7SBTw8&list=PLaPdEEY26UXygpV-Cxch8Xkpl7IbFKBvK&index=3&t=0s) by [Emil Vatai](https://twitter.com/vatai), Postdoctoral Researcher, RIKEN, Japan (Review Chapter 4: Matrix Decompositions)
- [ML Math Review Session: Groups, residue classes](https://www.youtube.com/watch?v=nOxQ1vRt_p0&list=PLaPdEEY26UXygpV-Cxch8Xkpl7IbFKBvK&index=2&t=0s) by [Emil Vatai](https://twitter.com/vatai), Postdoctoral Researcher, RIKEN, Japan (Review Chapter 2: Linear Algebra)
- [ML Math Review Session: Gaussian Mixture Models](https://www.youtube.com/watch?v=2Tw0peN814k&t=10s) by [Pavitra Chakravarty](https://twitter.com/genomixgmailcom), Data Analyst, Converging Health, Dallas, TX USA (Review Chapter 11: Density Estimation with Gaussian Mixture Models)

# Reading sessions

Our [もくもく会 ML Math Reading Sessions](https://machinelearningtokyo.com/2019/11/28/ml-math-reading-sessions/) were based on "Mathematics For Machine Learning" by Marc Peter Deisenroth, A Aldo Faisal, and Cheng Soon Ong, to be published by Cambridge University Press. https://mml-book.github.io/

Sessions were held bi-weekly in different time zones on Sundays (PST, EST, GMT, CET, IST) and Mondays (APAC).

## Part I: Mathematical Foundations

- Introduction and Motivation
- Linear Algebra
- Analytic Geometry
- Matrix Decompositions
- Vector Calculus
- Probability and Distribution
- Continuous Optimization

## Part II: Central Machine Learning Problems

- When Models Meet Data
- Linear Regression
- Dimensionality Reduction with Principal Component Analysis
- Density Estimation with Gaussian Mixture Models
- Classification with Support Vector Machines