Feature Reinforcement Learning: Part I. Unstructured MDPs

Marcus Hutter
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引用次数: 63

Abstract

Feature Reinforcement Learning: Part I. Unstructured MDPs General-purpose, intelligent, learning agents cycle through sequences of observations, actions, and rewards that are complex, uncertain, unknown, and non-Markovian. On the other hand, reinforcement learning is well-developed for small finite state Markov decision processes (MDPs). Up to now, extracting the right state representations out of bare observations, that is, reducing the general agent setup to the MDP framework, is an art that involves significant effort by designers. The primary goal of this work is to automate the reduction process and thereby significantly expand the scope of many existing reinforcement learning algorithms and the agents that employ them. Before we can think of mechanizing this search for suitable MDPs, we need a formal objective criterion. The main contribution of this article is to develop such a criterion. I also integrate the various parts into one learning algorithm. Extensions to more realistic dynamic Bayesian networks are developed in Part II (Hutter, 2009c). The role of POMDPs is also considered there.
特征强化学习:第一部分:非结构化mdp
功能强化学习:第一部分:非结构化mdp通用的、智能的、学习型代理在复杂的、不确定的、未知的、非马尔可夫的观察、行动和奖励序列中循环。另一方面,强化学习在小型有限状态马尔可夫决策过程(mdp)中得到了很好的发展。到目前为止,从简单的观察中提取正确的状态表示,即将一般代理设置简化为MDP框架,是一门需要设计者付出大量努力的艺术。这项工作的主要目标是自动化约简过程,从而显着扩展许多现有强化学习算法和使用它们的代理的范围。在我们能够考虑机械化地寻找合适的发展中国家方案之前,我们需要一个正式的客观标准。本文的主要贡献就是提出了这样一个标准。我还将各个部分整合到一个学习算法中。扩展到更现实的动态贝叶斯网络开发在第二部分(Hutter, 2009c)。其中也考虑了pomdp的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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