BEHAVIOR Explanation
Behavior explanation in artificial intelligence and robotics focuses on understanding and interpreting the actions of agents, both biological and artificial, to improve their design, control, and trustworthiness. Current research emphasizes developing models that link neural activity or agent actions to observable behaviors, often employing techniques like recurrent neural networks, transformers, and reinforcement learning algorithms, sometimes incorporating attention mechanisms and graph representations to capture complex dynamics. This work is crucial for enhancing the safety and reliability of autonomous systems, improving the interpretability of machine learning models, and furthering our understanding of biological behavior through computational modeling.
Papers
MAGIC-TBR: Multiview Attention Fusion for Transformer-based Bodily Behavior Recognition in Group Settings
Surbhi Madan, Rishabh Jain, Gulshan Sharma, Ramanathan Subramanian, Abhinav Dhall
Improving Opioid Use Disorder Risk Modelling through Behavioral and Genetic Feature Integration
Sybille Légitime, Kaustubh Prabhu, Devin McConnell, Bing Wang, Dipak K. Dey, Derek Aguiar
Adaptive Chameleon or Stubborn Sloth: Revealing the Behavior of Large Language Models in Knowledge Conflicts
Jian Xie, Kai Zhang, Jiangjie Chen, Renze Lou, Yu Su
Flying Adversarial Patches: Manipulating the Behavior of Deep Learning-based Autonomous Multirotors
Pia Hanfeld, Marina M. -C. Höhne, Michael Bussmann, Wolfgang Hönig