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Human Uncertainty in Concept-Based AI Systems

Katherine M. Collins, Matthew L Barker, Mateo Espinosa Zarlenga, Naveen Raman, Umang Bhatt, Mateja Jamnik, Ilia Sucholutsky, Adrian Weller, Krishnamurthy Dvijotham

202317 citationsDOIOpen Access PDF

Abstract

Placing a human in the loop may help abate the risks of deploying AI systems in safety-critical settings (e.g., a clinician working with a medical AI system). However, mitigating risks arising from human error and uncertainty within such human-AI interactions is an important and understudied issue. In this work, we study human uncertainty in the context of concept-based models, a family of AI systems that enable human feedback via concept interventions where an expert intervenes on human-interpretable concepts relevant to the task. Prior work in this space often assumes that humans are oracles who are always certain and correct. Yet, real-world decision-making by humans is prone to occasional mistakes and uncertainty. We study how existing concept-based models deal with uncertain interventions from humans using two novel datasets: UMNIST, a visual dataset with controlled simulated uncertainty based on the MNIST dataset, and CUB-S, a relabeling of the popular CUB concept dataset with rich, densely-annotated soft labels from humans. We show that training with uncertain concept labels may help mitigate weaknesses of concept-based systems when handling uncertain interventions. These results allow us to identify several open challenges, which we argue can be tackled through future multidisciplinary research on building interactive uncertainty-aware systems. To facilitate further research, we release a new elicitation platform, UElic, to collect uncertain feedback from humans in collaborative prediction tasks.

Topics & Concepts

Computer scienceContext (archaeology)Task (project management)Artificial intelligenceMultidisciplinary approachHuman-in-the-loopData scienceMachine learningMNIST databaseRisk analysis (engineering)Psychological interventionHuman–computer interactionDeep learningPaleontologyManagementBiologyPsychologySocial scienceSociologyEconomicsMedicinePsychiatryData Stream Mining TechniquesExplainable Artificial Intelligence (XAI)Machine Learning and Data Classification
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