Active Legibility in Multiagent Reinforcement Learning
- URL: http://arxiv.org/abs/2410.20954v1
- Date: Mon, 28 Oct 2024 12:15:49 GMT
- Title: Active Legibility in Multiagent Reinforcement Learning
- Authors: Yanyu Liu, Yinghui Pan, Yifeng Zeng, Biyang Ma, Doshi Prashant,
- Abstract summary: The legibility-oriented framework allows agents to conduct legible actions so as to help others optimise their behaviors.
The experimental results demonstrate that the new framework is more efficient and costs less training time compared to several multiagent reinforcement learning algorithms.
- Score: 3.7828554251478734
- License:
- Abstract: A multiagent sequential decision problem has been seen in many critical applications including urban transportation, autonomous driving cars, military operations, etc. Its widely known solution, namely multiagent reinforcement learning, has evolved tremendously in recent years. Among them, the solution paradigm of modeling other agents attracts our interest, which is different from traditional value decomposition or communication mechanisms. It enables agents to understand and anticipate others' behaviors and facilitates their collaboration. Inspired by recent research on the legibility that allows agents to reveal their intentions through their behavior, we propose a multiagent active legibility framework to improve their performance. The legibility-oriented framework allows agents to conduct legible actions so as to help others optimise their behaviors. In addition, we design a series of problem domains that emulate a common scenario and best characterize the legibility in multiagent reinforcement learning. The experimental results demonstrate that the new framework is more efficient and costs less training time compared to several multiagent reinforcement learning algorithms.
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