Variance Control for Distributional Reinforcement Learning

Qi Kuang, Zhoufan Zhu, Liwen Zhang, Fan Zhou
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Abstract

Although distributional reinforcement learning (DRL) has been widely examined in the past few years, very few studies investigate the validity of the obtained Q-function estimator in the distributional setting. To fully understand how the approximation errors of the Q-function affect the whole training process, we do some error analysis and theoretically show how to reduce both the bias and the variance of the error terms. With this new understanding, we construct a new estimator \emph{Quantiled Expansion Mean} (QEM) and introduce a new DRL algorithm (QEMRL) from the statistical perspective. We extensively evaluate our QEMRL algorithm on a variety of Atari and Mujoco benchmark tasks and demonstrate that QEMRL achieves significant improvement over baseline algorithms in terms of sample efficiency and convergence performance.
分布式强化学习的方差控制
尽管分布强化学习(DRL)在过去几年中得到了广泛的研究,但很少有研究调查在分布设置下得到的q函数估计量的有效性。为了充分理解q函数的近似误差是如何影响整个训练过程的,我们进行了一些误差分析,并从理论上展示了如何减少误差项的偏差和方差。基于这一新的认识,我们构造了一个新的估计量\emph{量子化展开均值}(QEM),并从统计学的角度引入了一种新的DRL算法(QEMRL)。我们在各种Atari和Mujoco基准任务上广泛评估了我们的QEMRL算法,并证明QEMRL在样本效率和收敛性能方面比基线算法取得了显着改进。
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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