Interaction Modeling with Multiplex Attention
Sun, Fan-Yun, Kauvar, Isaac, Zhang, Ruohan, Li, Jiachen, Kochenderfer, Mykel, Wu, Jiajun, Haber, Nick
–arXiv.org Artificial Intelligence
Modeling multi-agent systems requires understanding how agents interact. Such systems are often difficult to model because they can involve a variety of types of interactions that layer together to drive rich social behavioral dynamics. Here we introduce a method for accurately modeling multi-agent systems. We present Interaction Modeling with Multiplex Attention (IMMA), a forward prediction model that uses a multiplex latent graph to represent multiple independent types of interactions and attention to account for relations of different strengths. We also introduce Progressive Layer Training, a training strategy for this architecture. We show that our approach outperforms state-of-the-art models in trajectory forecasting and relation inference, spanning three multi-agent scenarios: social navigation, cooperative task achievement, and team sports. We further demonstrate that our approach can improve zero-shot generalization and allows us to probe how different interactions impact agent behavior.
arXiv.org Artificial Intelligence
Jan-25-2023
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