Litcius/Paper detail

StrategyAtlas: Strategy Analysis for Machine Learning Interpretability

Dennis Collaris, Jarke J. van Wijk

2022IEEE Transactions on Visualization and Computer Graphics17 citationsDOIOpen Access PDF

Abstract

Businesses in high-risk environments have been reluctant to adopt modern machine learning approaches due to their complex and uninterpretable nature. Most current solutions provide local, instance-level explanations, but this is insufficient for understanding the model as a whole. In this work, we show that strategy clusters (i.e., groups of data instances that are treated distinctly by the model) can be used to understand the global behavior of a complex ML model. To support effective exploration and understanding of these clusters, we introduce StrategyAtlas, a system designed to analyze and explain model strategies. Furthermore, it supports multiple ways to utilize these strategies for simplifying and improving the reference model. In collaboration with a large insurance company, we present a use case in automatic insurance acceptance, and show how professional data scientists were enabled to understand a complex model and improve the production model based on these insights.

Topics & Concepts

InterpretabilityComputer scienceMachine learningArtificial intelligenceData scienceData modelingProduction (economics)Software engineeringMacroeconomicsEconomicsExplainable Artificial Intelligence (XAI)Machine Learning and Data ClassificationScientific Computing and Data Management