transqmix:利用多智能体强化学习问题的图结构的变压器

Matteo Gallici, Mario Martín, I. Masmitja
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引用次数: 1

摘要

协调是多智能体强化学习(MARL)中最困难的方面之一。原因之一是,行为主体通常独立于彼此选择自己的行为。为了了解独立策略组合中出现的协调策略,最近的研究集中在使用集中函数(CF)来学习每个代理对团队奖励的贡献。然而,将环境呈现给代理和CF的结构通常被忽略。我们已经观察到用于描述协调问题的特征可以表示为潜在图结构的顶点特征。在这里,我们提出了transferqmix,这是一种使用变压器来利用这种潜在结构并学习更好的协调策略的新方法。我们的转换代理对可观察实体的状态执行图形推理。我们的变压器Q-mixer从包含代理的内部和外部状态的更大的图中学习单调混合函数。transferqmix被设计为完全可转移的,这意味着相同的参数可以用来控制和训练或大或小的代理团队。这使得部署有前途的方法能够节省训练时间并得出MARL中的一般策略,例如迁移学习,零射击迁移和课程学习。我们报告了transferqmix在Spread和星际争霸II环境中的表现。在这两种情况下,它都优于最先进的Q-Learning模型,并且它在解决其他方法无法解决的问题方面显示出有效性。
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TransfQMix: Transformers for Leveraging the Graph Structure of Multi-Agent Reinforcement Learning Problems
Coordination is one of the most difficult aspects of multi-agent reinforcement learning (MARL). One reason is that agents normally choose their actions independently of one another. In order to see coordination strategies emerging from the combination of independent policies, the recent research has focused on the use of a centralized function (CF) that learns each agent's contribution to the team reward. However, the structure in which the environment is presented to the agents and to the CF is typically overlooked. We have observed that the features used to describe the coordination problem can be represented as vertex features of a latent graph structure. Here, we present TransfQMix, a new approach that uses transformers to leverage this latent structure and learn better coordination policies. Our transformer agents perform a graph reasoning over the state of the observable entities. Our transformer Q-mixer learns a monotonic mixing-function from a larger graph that includes the internal and external states of the agents. TransfQMix is designed to be entirely transferable, meaning that same parameters can be used to control and train larger or smaller teams of agents. This enables to deploy promising approaches to save training time and derive general policies in MARL, such as transfer learning, zero-shot transfer, and curriculum learning. We report TransfQMix's performances in the Spread and StarCraft II environments. In both settings, it outperforms state-of-the-art Q-Learning models, and it demonstrates effectiveness in solving problems that other methods can not solve.
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