Litcius/Paper detail

Benefits of Human-AI Interaction for Expert Users Interacting with Prediction Models: a Study on Marathon Running

Heleen Muijlwijk, Martijn C. Willemsen, Barry Smyth, Wijnand A. IJsselsteijn

202414 citationsDOIOpen Access PDF

Abstract

Users with large domain knowledge can be reluctant to use prediction models. This also applies to the sports domain, where running coaches rarely rely on marathon prediction tools for race-plan advice for their runners’ next marathon. This paper studies the effect of adding interactivity to such prediction models, to incorporate and acknowledge users’ domain knowledge. In think-aloud sessions and an online study, we tested an interactive machine learning tool that allowed coaches to indicate the importance of earlier races feeding into the model. Our results show that coaches deploy rich knowledge when working with the model on runners familiar to them, and their adaptations improved model accuracy. Those coaches who could interact with the model displayed more trust and acceptance in the resulting predictions.

Topics & Concepts

InteractivityComputer scienceDomain (mathematical analysis)Domain knowledgeHuman–computer interactionPlan (archaeology)Artificial intelligenceSubject-matter expertThink aloud protocolMachine learningMultimediaExpert systemUsabilityHistoryMathematical analysisArchaeologyMathematicsExplainable Artificial Intelligence (XAI)Sports Analytics and PerformanceData Visualization and Analytics