AI System
AI systems are rapidly evolving, prompting intense research into their safety, reliability, and societal impact. Current research focuses on mitigating risks through improved model explainability and interpretability, developing robust auditing and verification methods, and establishing clear liability frameworks. This work spans various model architectures, including large language models and embodied agents, and addresses crucial challenges in fairness, bias, and user trust, with implications for both scientific understanding and the responsible deployment of AI in diverse applications.
Papers
Explanations Can Reduce Overreliance on AI Systems During Decision-Making
Helena Vasconcelos, Matthew Jörke, Madeleine Grunde-McLaughlin, Tobias Gerstenberg, Michael Bernstein, Ranjay Krishna
An Exploratory Study of AI System Risk Assessment from the Lens of Data Distribution and Uncertainty
Zhijie Wang, Yuheng Huang, Lei Ma, Haruki Yokoyama, Susumu Tokumoto, Kazuki Munakata