Publication | Open Access
Visual Analysis of Discrimination in Machine Learning
54
Citations
62
References
2020
Year
Artificial IntelligenceEngineeringMachine LearningDiscriminationMatrix-based VisualizationData ScienceData MiningPattern RecognitionStatisticsAlgorithmic BiasKnowledge DiscoveryVisual Data MiningDisparate ImpactComputer ScienceAutomated Decision-makingData ClassificationAlgorithmic FairnessClassifier SystemExtended Euler Diagram
The growing use of automated decision-making in critical applications, such as crime prediction and college admission, has raised questions about fairness in machine learning. How can we decide whether different treatments are reasonable or discriminatory? In this paper, we investigate discrimination in machine learning from a visual analytics perspective and propose an interactive visualization tool, DiscriLens, to support a more comprehensive analysis. To reveal detailed information on algorithmic discrimination, DiscriLens identifies a collection of potentially discriminatory itemsets based on causal modeling and classification rules mining. By combining an extended Euler diagram with a matrix-based visualization, we develop a novel set visualization to facilitate the exploration and interpretation of discriminatory itemsets. A user study shows that users can interpret the visually encoded information in DiscriLens quickly and accurately. Use cases demonstrate that DiscriLens provides informative guidance in understanding and reducing algorithmic discrimination.
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