Litcius/Paper detail

Intuitively Assessing ML Model Reliability through Example-Based Explanations and Editing Model Inputs

Harini Suresh, Kathleen M. Lewis, John V. Guttag, Arvind Satyanarayan

202220 citationsDOIOpen Access PDF

Abstract

Interpretability methods aim to help users build trust in and understand the capabilities of machine learning models. However, existing approaches often rely on abstract, complex visualizations that poorly map to the task at hand or require non-trivial ML expertise to interpret. Here, we present two interface modules that facilitate intuitively assessing model reliability. To help users better characterize and reason about a model’s uncertainty, we visualize raw and aggregate information about a given input’s nearest neighbors. Using an interactive editor, users can manipulate this input in semantically-meaningful ways, determine the effect on the output, and compare against their prior expectations. We evaluate our approach using an electrocardiogram beat classification case study. Compared to a baseline feature importance interface, we find that 14 physicians are better able to align the model’s uncertainty with domain-relevant factors and build intuition about its capabilities and limitations.

Topics & Concepts

InterpretabilityComputer scienceIntuitionMachine learningAggregate (composite)Reliability (semiconductor)Artificial intelligenceAnimationBaseline (sea)Task (project management)Human–computer interactionData miningEconomicsPhilosophyMaterials scienceEpistemologyComputer graphics (images)PhysicsQuantum mechanicsPower (physics)OceanographyGeologyComposite materialManagementExplainable Artificial Intelligence (XAI)Artificial Intelligence in Healthcare and EducationMachine Learning in Healthcare