基于层次结构的强化学习算法集成方法

Daniil Kozlov, V. Myasnikov
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引用次数: 0

摘要

本文提出了一种强化学习算法的集成方法。所提出的方法平均比集成中的每一种算法都要高效。本文讨论了该方法的实现,其中包括REDQ和SAC算法的集成。集成的输出是在DQN作为控制算法的输出之后选择的算法的输出。以不同的数量集成其他算法是可能的。强化学习是机器学习中一个很有前途的领域。强化学习尚未解决的一个重要问题是复杂问题的泛化及其使用元算法的解决方案。该方法可用于由多个子任务组成的复杂问题,并可通过集成中的各种算法提供有效的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Method for Reinforcement Learning Algorithms Based on Hierarchy
The article proposes an ensemble method for reinforcement learning algorithms. The proposed approach is on average more efficient than each of the algorithms in the ensemble separately. The article discusses the implementation of the method, which includes an ensemble of REDQ and SAC algorithms. The output from the ensemble is the output of the algorithm selected following the output of the DQN acting as the control algorithm. It is possible to ensemble other algorithms in a different quantity. Reinforcement learning is a promising area in machine learning. An important unsolved problem of reinforcement learning is the generalization of complex problems, and their solution using meta-algorithms. The proposed method can be used in complex problems consisting of many subtasks, effective solutions for which can be offered by various algorithms from the ensemble.
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