连续动作空间中隐式策略方法强化学习的动作选择方法比较

Barry D. Nichols
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引用次数: 5

摘要

在本文中,我研究了将强化学习应用于没有策略函数的连续状态和动作空间问题的方法。我比较了四种方法的性能,其中一种是动作空间的离散化,另外三种是用于在没有离散化的情况下寻找贪婪动作的优化技术。我使用的优化方法有梯度下降法、奈德-米德法和牛顿法。动作选择方法与SARSA算法结合使用,并使用多层感知器来逼近值函数。将该方法应用于两个模拟的连续状态和动作空间控制问题:Cart-Pole和双Cart-Pole。结果在动作选择时间和训练基准问题所需的试验次数方面进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparison of action selection methods for implicit policy method reinforcement learning in continuous action-space
In this paper I investigate methods of applying reinforcement learning to continuous state- and action-space problems without a policy function. I compare the performance of four methods, one of which is the discretisation of the action-space, and the other three are optimisation techniques applied to finding the greedy action without discretisation. The optimisation methods I apply are gradient descent, Nelder-Mead and Newton's Method. The action selection methods are applied in conjunction with the SARSA algorithm, with a multilayer perceptron utilized for the approximation of the value function. The approaches are applied to two simulated continuous state- and action-space control problems: Cart-Pole and double Cart-Pole. The results are compared both in terms of action selection time and the number of trials required to train on the benchmark problems.
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