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Stochastic Variance Reduction for Policy Gradient Estimation

Tian-Bing Xu, Qiang Liu, Jian Peng

发表年份
2017
引用次数
10
访问权限
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摘要

Recent advances in policy gradient methods and deep learning have demonstrated their applicability for complex reinforcement learning problems. However, the variance of the performance gradient estimates obtained from the simulation is often excessive, leading to poor sample efficiency. In this paper, we apply the stochastic variance reduced gradient descent (SVRG) to model-free policy gradient to significantly improve the sample-efficiency. The SVRG estimation is incorporated into a trust-region Newton conjugate gradient framework for the policy optimization. On several Mujoco tasks, our method achieves significantly better performance compared to the state-of-the-art model-free policy gradient methods in robotic continuous control such as trust region policy optimization (TRPO)

关键词

Variance reductionReinforcement learningConjugate gradient methodVariance (accounting)Trust regionGradient descentGradient methodComputer scienceSample (material)Variation (astronomy)

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