{"id":25290545,"url":"https://github.com/wesslen/vast2017-anchoringeffect","last_synced_at":"2026-01-21T10:03:22.220Z","repository":{"id":81790260,"uuid":"101567752","full_name":"wesslen/vast2017-anchoringeffect","owner":"wesslen","description":"Supplemental materials for 2017 VAST Cho et al. \"The Anchoring Effect in Decision-Making with Visual Analytics\"","archived":false,"fork":false,"pushed_at":"2018-11-18T17:46:18.000Z","size":20708,"stargazers_count":0,"open_issues_count":0,"forks_count":0,"subscribers_count":1,"default_branch":"master","last_synced_at":"2025-04-06T18:25:13.340Z","etag":null,"topics":["anchoring-bias","cognitive-bias","network-analysis","structural-topic-modeling","visual-analytics"],"latest_commit_sha":null,"homepage":null,"language":"HTML","has_issues":true,"has_wiki":null,"has_pages":null,"mirror_url":null,"source_name":null,"license":null,"status":null,"scm":"git","pull_requests_enabled":true,"icon_url":"https://github.com/wesslen.png","metadata":{"files":{"readme":"README.md","changelog":null,"contributing":null,"funding":null,"license":null,"code_of_conduct":null,"threat_model":null,"audit":null,"citation":null,"codeowners":null,"security":null,"support":null,"governance":null,"roadmap":null,"authors":null,"dei":null,"publiccode":null,"codemeta":null}},"created_at":"2017-08-27T17:11:37.000Z","updated_at":"2018-11-18T17:46:19.000Z","dependencies_parsed_at":null,"dependency_job_id":"4d64e080-f5d0-4e1c-be57-43b26e97b695","html_url":"https://github.com/wesslen/vast2017-anchoringeffect","commit_stats":null,"previous_names":[],"tags_count":0,"template":false,"template_full_name":null,"purl":"pkg:github/wesslen/vast2017-anchoringeffect","repository_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories/wesslen%2Fvast2017-anchoringeffect","tags_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories/wesslen%2Fvast2017-anchoringeffect/tags","releases_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories/wesslen%2Fvast2017-anchoringeffect/releases","manifests_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories/wesslen%2Fvast2017-anchoringeffect/manifests","owner_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/owners/wesslen","download_url":"https://codeload.github.com/wesslen/vast2017-anchoringeffect/tar.gz/refs/heads/master","sbom_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories/wesslen%2Fvast2017-anchoringeffect/sbom","scorecard":null,"host":{"name":"GitHub","url":"https://github.com","kind":"github","repositories_count":286080680,"owners_count":28631936,"icon_url":"https://github.com/github.png","version":null,"created_at":"2022-05-30T11:31:42.601Z","updated_at":"2026-01-21T04:47:28.174Z","status":"ssl_error","status_checked_at":"2026-01-21T04:47:22.943Z","response_time":86,"last_error":"SSL_connect returned=1 errno=0 peeraddr=140.82.121.5:443 state=error: unexpected eof while reading","robots_txt_status":"success","robots_txt_updated_at":"2025-07-24T06:49:26.215Z","robots_txt_url":"https://github.com/robots.txt","online":false,"can_crawl_api":true,"host_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub","repositories_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories","repository_names_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/repository_names","owners_url":"https://repos.ecosyste.ms/api/v1/hosts/GitHub/owners"}},"keywords":["anchoring-bias","cognitive-bias","network-analysis","structural-topic-modeling","visual-analytics"],"created_at":"2025-02-13T00:26:43.705Z","updated_at":"2026-01-21T10:03:22.196Z","avatar_url":"https://github.com/wesslen.png","language":"HTML","funding_links":[],"categories":[],"sub_categories":[],"readme":"### Paper\n\nCho, Isaac, Ryan Wesslen, Alireza Karduni, Sashank Santhanam, Samira Shaikh and Wenwen Dou (2017). [The Anchoring Effect in Decision-Making with Visual Analytics](./anchorbias.pdf). In Visual Analytics Science and Technology (VAST), 2017 IEEE Conference.\n\n### Code\n\nSTM analysis of Interaction Logs: [RMarkdown](./STMLogAnalysis.Rmd) / [HTML Output](https://rawgit.com/wesslen/vast2017-anchoringeffect/master/STMLogAnalysis.html)\n\n### Data\n\n| format | Description            |\n| ------ | ---------------------- |\n| json   | [Raw Interaction Logs](./data/crystalball_userlog_final.json) |\n| csv    | [Processed Interaction Logs](./data/clean.csv) |\n| Rdata  | [R Data Image of STM Results](./data/stmimage.Rdata) |\n\nAll user level uses a user-id for matching. Demographics data has been excluded due to any potential privacy concerns.\n\n### Task\n\n85 participants were asked to identify and count the number of protest-related events using a Twitter-based event detection visual interface, CrystalBall. Users viewed a five minute training video, a three minute priming video (treatment), and given 30 minutes to complete the task. Their interactions were recorded as interaction logs. \n\nUsers also completed pre and post questionaires on demographics, personality and personal bias.\n\nThe interface included tweets from the Twitter public streaming API for two weeks of Twitter data (Nov 10, 2016 to Nov 24, 2016).\n\n### Experiment Design\n\nUsers were randomly assigned into a 2x2 between-subjects factorial design with two anchoring factors: numerical and visual.\n\n**Numerical:**\n\nNumber used in relation to the users' task: was the number of protests higher than XX ?\n\n*   High: 152 protests\n\n*   Low: 8 protests\n\n**Visual:**\n\nParticipants viewed three minute priming video focused on:\n\n*   Geo: Geo View\n\n*   Time: Calendar View\n\n### Abstract\n\nAnchoring effect is the tendency to focus too heavily on one piece of information when making decisions. In this paper, we present a novel, systematic study and resulting analyses that investigate the effects of anchoring effect on human decision-making using visual analytic systems. Visual analytics interfaces typically contain multiple views that present various aspects of information such as spatial, temporal, and categorical. These views are designed to present complex, heterogeneous data in accessible forms that aid decision-making. However, human decision-making is often hindered by the use of heuristics, or cognitive biases, such as anchoring effect. Anchoring effect can be triggered by the order in which information is presented or the magnitude of information presented. Through carefully designed laboratory experiments, we present evidence of anchoring effect in analysis with visual analytics interfaces when users are primed by representation of different pieces of information. We also describe detailed analyses of users’ interaction logs which reveal the impact of anchoring bias on the visual representation preferred and paths of analysis. We discuss implications for future research to possibly detect and alleviate anchoring bias.\n\n\n\n### Figures \u0026 Explanations\n\n**CrystalBall, the user interface used for the study (left) and user interactions (right)**\n\n\n\u003cimg src=\"./img/overview.png\" width=\"100%\"\u003e\n\nThe CrystalBall interface has 4 main views: (A) calender view, (B) map view, (C) word cloud view, and (D) social network view. The calendar view shows the future event overview (a) by default. The event list (b) is shown when the user selects a subset of future events. The tweet panel (E) is shown when the user clicks the Twitter icon.\n\nThe right figure displays main user interaction logs of the Crystalball interface. Each view has different interaction logs based on its visual elements.\n\n**Network analysis of user interactions by Geo vs Time visual anchors**\n\n\n\u003cimg src=\"./img/network.png\" width=\"100%\"\u003e\n\nSide by side visualization of GeoNetwork and TimeNetwork. The size of nodes is proportional to Pagerank values of nodes in each graph, the color of nodes corresponds to the detected community of each node, and the width of each edges corresponds to the weight of that edges. The bar charts show the top 5 nodes based on their Pagerank value and is color coded based the community the nodes community.\n\n**STM Analysis of the visual and numerical anchors**\n\n\n\u003cimg src=\"./img/STM.png\" width=\"100%\"\u003e\n\nThe figure on the left provides the expected topic (action-cluster) proportions with judgmental labels to aid in interpretation. The figures on the right provide the estimated effect of the visual and numerical anchors on each of the eight topics’ proportions. The dot is the point estimate and the line represents a 95 percent confidence interval. The red dots/lines are topics that are significant with 95% confidence.\n\n**STM Analysis of temporal effects on two interaction clusters (topics)**\n\n\u003cimg src=\"./img/Time-Interaction.png\" width=\"50%\"\u003e\n\nThis figure provides two charts on the effect between the visual anchors (line color) and time as measured by interaction deciles (x-axis) for two topics (Map View and Calendar View). Each line is the estimated topic proportions across the session and controlling for the visual anchor. The solid line is the point estimate and the dotted line is a 95 percent confidence interval. For the interaction deciles (time), we divided users’ sessions into ten evenly distributed groups. A b-spline was used to smooth the curve across the ten points.\n\n\n","project_url":"https://awesome.ecosyste.ms/api/v1/projects/github.com%2Fwesslen%2Fvast2017-anchoringeffect","html_url":"https://awesome.ecosyste.ms/projects/github.com%2Fwesslen%2Fvast2017-anchoringeffect","lists_url":"https://awesome.ecosyste.ms/api/v1/projects/github.com%2Fwesslen%2Fvast2017-anchoringeffect/lists"}