Decision Relevant Information
Decision-relevant information research focuses on how to effectively utilize information to make optimal choices, encompassing diverse scenarios from single-agent decision-making to complex multi-agent interactions. Current research emphasizes developing models and algorithms, including deep reinforcement learning, large language models, and generative models, to improve decision-making in various contexts, such as resource allocation, robotics, and human-computer interaction. This field is significant because it bridges theoretical frameworks with practical applications, offering solutions to improve efficiency, fairness, and transparency in decision-making processes across numerous domains. The development of robust and explainable decision-making systems has broad implications for both scientific understanding and real-world applications.
Papers
From Decision to Action in Surgical Autonomy: Multi-Modal Large Language Models for Robot-Assisted Blood Suction
Sadra Zargarzadeh, Maryam Mirzaei, Yafei Ou, Mahdi Tavakoli
Real-world validation of safe reinforcement learning, model predictive control and decision tree-based home energy management systems
Julian Ruddick, Glenn Ceusters, Gilles Van Kriekinge, Evgenii Genov, Thierry Coosemans, Maarten Messagie