12 - pomdp的初步知情学习政策

Landon Kraemer, Bikramjit Banerjee
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引用次数: 7

摘要

分散式部分可观察马尔可夫决策过程(deco - pomdp)为协作多智能体系统中的规划提供了一种形式化模型,其中智能体使用噪声传感器和执行器以及局部信息进行操作。流行的Dec-POMDP解决方案技术大多是集中的,并且假设了模型的知识。然而,在现实世界的场景中,集中解决可能不是一种选择,模型参数可能是未知的。为了解决这个问题,我们提出了一种分布式的、无模型的算法来学习Dec-POMDP策略,其中智能体轮流学习,每个智能体当前不遵循静态策略学习。对于尚未学习策略的代理,必须初始化此静态策略。我们提出了一种原则性的方法,通过与环境的相互作用来学习这些初始策略。我们表明,通过使用这种知情的初始策略,我们的替代学习算法可以为两个基准问题找到接近最优的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Informed Initial Policies for Learning in Dec-POMDPs
Decentralized partially observable Markov decision processes (Dec-POMDPs) offer a formal model for planning in cooperative multiagent systems where agents operate with noisy sensors and actuators, and local information. Prevalent Dec-POMDP solution techniques have mostly been centralized and have assumed knowledge of the model. In real world scenarios, however, solving centrally may not be an option and model parameters maybe unknown. To address this, we propose a distributed, model-free algorithm for learning Dec-POMDP policies, in which agents take turns learning, with each agent not currently learning following a static policy. For agents that have not yet learned a policy, this static policy must be initialized. We propose a principled method for learning such initial policies through interaction with the environment. We show that by using such informed initial policies, our alternate learning algorithm can find near-optimal policies for two benchmark problems.
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