Group Setting
Research on group settings spans diverse fields, focusing on understanding and optimizing interactions within groups, whether composed of humans, AI agents, or data points. Current research emphasizes developing models and algorithms that address fairness, efficiency, and robustness within these group contexts, employing techniques like federated learning, transformer networks, and graph neural networks to analyze complex interactions and improve outcomes. This work has significant implications for various applications, including social media analysis, computer vision, and the development of more equitable and effective AI systems.
Papers
Explore the possibility of advancing climate negotiations on the basis of regional trade organizations: A study based on RICE-N
Wubo Dai
MorphoLander: Reinforcement Learning Based Landing of a Group of Drones on the Adaptive Morphogenetic UAV
Sausar Karaf, Aleksey Fedoseev, Mikhail Martynov, Zhanibek Darush, Aleksei Shcherbak, Dzmitry Tsetserukou