首页> 外文会议>Machine Learning and Applications, 2009. ICMLA '09 >Automatic Feature Selection for Model-Based Reinforcement Learning in Factored MDPs
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Automatic Feature Selection for Model-Based Reinforcement Learning in Factored MDPs

机译:基于特征的MDP中基于模型的强化学习的自动特征选择

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Feature selection is an important challenge in machine learning. Unfortunately, most methods for automating feature selection are designed for supervised learning tasks and are thus either inapplicable or impractical for reinforcement learning. This paper presents a new approach to feature selection specifically designed for the challenges of reinforcement learning. In our method, the agent learns a model, represented as a dynamic Bayesian network, of a factored Markov decision process, deduces a minimal feature set from this network, and efficiently computes a policy on this feature set using dynamic programming methods. Experiments in a stock-trading benchmark task demonstrate that this approach can reliably deduce minimal feature sets and that doing so can substantially improve performance and reduce the computational expense of planning.
机译:特征选择是机器学习中的重要挑战。不幸的是,大多数用于自动选择特征的方法是为监督学习任务而设计的,因此对于强化学习不适用或不切实际。本文提出了一种新的特征选择方法,专门针对强化学习的挑战而设计。在我们的方法中,代理学习了一个表示为动态贝叶斯网络的因式马尔可夫决策过程模型,从该网络推导了最小特征集,并使用动态编程方法有效地对此特征集计算了策略。在股票交易基准测试任务中进行的实验表明,这种方法可以可靠地推导最少的特征集,并且这样做可以显着提高性能并减少规划的计算费用。

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