Litcius/Paper detail

What Did My AI Learn? How Data Scientists Make Sense of Model Behavior

Ángel Alexander Cabrera, Marco Túlio Ribeiro, Bongshin Lee, Robert DeLine, Adam Perer, Steven M. Drucker

2022ACM Transactions on Computer-Human Interaction41 citationsDOIOpen Access PDF

Abstract

Data scientists require rich mental models of how AI systems behave to effectively train, debug, and work with them. Despite the prevalence of AI analysis tools, there is no general theory describing how people make sense of what their models have learned. We frame this process as a form of sensemaking and derive a framework describing how data scientists develop mental models of AI behavior. To evaluate the framework, we show how existing AI analysis tools fit into this sensemaking process and use it to design AIFinnity , a system for analyzing image-and-text models. Lastly, we explored how data scientists use a tool developed with the framework through a think-aloud study with 10 data scientists tasked with using AIFinnity to pick an image captioning model. We found that AIFinnity ’s sensemaking workflow reflected participants’ mental processes and enabled them to discover and validate diverse AI behaviors.

Topics & Concepts

SensemakingWorkflowClosed captioningComputer scienceDebuggingMental modelProcess (computing)Data scienceThink aloud protocolFrame (networking)Human–computer interactionArtificial intelligenceImage (mathematics)Cognitive sciencePsychologyUsabilityProgramming languageTelecommunicationsDatabaseExplainable Artificial Intelligence (XAI)Topic ModelingData Visualization and Analytics