基于资格跟踪的深度q -学习网络改进算法

Bingyan Liu, X. Ye, ChiFei Zhou, Yijing Liu, Qiyang Zhang, Fang Dong
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引用次数: 2

摘要

目前,Deep Q-learning Network已经成为强化学习的一个重要研究方向。然而,在实际应用中,深度Q-learning网络在一定条件下总是高估动作值,并且成本很高。本文提出了一种新的改进算法。新的改进算法利用每个状态的行为资格跟踪进行经验回放,从而更有效地找到我们需要学习的样本。在Max计算过程中考虑了行为合格性跟踪,有效地解决了过高估计的问题。在优化器的训练过程中,考虑了迹衰落,有效提高了学习效果,加快了算法的收敛速度。不同算法应用于倒立摆系统的仿真结果表明,新算法比自然深度Q-learning网络具有更好的收敛效果、更低的代价和更低的高估。实验结果表明,新算法在深度强化学习中发挥了积极的作用,具有良好的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Improved Algorithm of Deep Q-learning Network Based on Eligibility Trace
At present, Deep Q-learning Network has become an important research direction in reinforcement learning. However, in practical application, the Deep Q-learning Network always overestimates the action value under certain conditions and has a high cost. In this paper, a new improved algorithm is proposed. The new improved algorithm uses the behavioral qualification tracking of each state for experience playback, so as to find the samples we need to learn more effectively. The behavior eligibility trace is considered in the process of Max calculation, and the problem of overestimation is solved effectively. In the process of optimizer training, trace fading is considered to effectively improve the learning effect and accelerate the convergence of the algorithm. The simulation results of different algorithms applied to the inverted pendulum system show that the new algorithm has better convergence effect, lower cost and lower overestimation than the Natural Deep Q-learning Network. The experimental results show that the new algorithm plays an active role in deep reinforcement learning and has a bright future.
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