Litcius/Paper detail

HypoML: Visual Analysis for Hypothesis-based Evaluation of Machine Learning Models

Qianwen Wang, William H. Alexander, Jack Pegg, Huamin Qu, Min Chen

2020IEEE Transactions on Visualization and Computer Graphics16 citationsDOI

Abstract

In this paper, we present a visual analytics tool for enabling hypothesis-based evaluation of machine learning (ML) models. We describe a novel ML-testing framework that combines the traditional statistical hypothesis testing (commonly used in empirical research) with logical reasoning about the conclusions of multiple hypotheses. The framework defines a controlled configuration for testing a number of hypotheses as to whether and how some extra information about a "concept" or "feature" may benefit or hinder an ML model. Because reasoning multiple hypotheses is not always straightforward, we provide HypoML as a visual analysis tool, with which, the multi-thread testing results are first transformed to analytical results using statistical and logical inferences, and then to a visual representation for rapid observation of the conclusions and the logical flow between the testing results and hypotheses. We have applied HypoML to a number of hypothesized concepts, demonstrating the intuitive and explainable nature of the visual analysis.

Topics & Concepts

Computer scienceStatistical hypothesis testingVisual analyticsMachine learningArtificial intelligenceVisual reasoningVisualizationRepresentation (politics)StatisticsPoliticsPolitical scienceLawMathematicsData Visualization and AnalyticsExplainable Artificial Intelligence (XAI)Cell Image Analysis Techniques