Decision Making
Decision-making research currently focuses on improving human-AI collaboration and developing more robust and explainable AI decision-making systems. Key areas include enhancing AI explanations to better align with human reasoning, incorporating uncertainty and context into AI models (e.g., using Bayesian methods, analogical reasoning, and hierarchical reinforcement learning), and evaluating AI decision-making performance against human benchmarks, often using novel metrics and frameworks. This work is significant for advancing both our understanding of human decision processes and for building more effective and trustworthy AI systems across diverse applications, from healthcare and finance to autonomous driving and infrastructure management.
Papers
Evidence fusion with contextual discounting for multi-modality medical image segmentation
Ling Huang, Thierry Denoeux, Pierre Vera, Su Ruan
Improving decision-making via risk-based active learning: Probabilistic discriminative classifiers
Aidan J. Hughes, Paul Gardner, Lawrence A. Bull, Nikolaos Dervilis, Keith Worden