首页 /研究 /Mean-Variance Policy Iteration for Risk-Averse Reinforcement Learning
LEARNING

Mean-Variance Policy Iteration for Risk-Averse Reinforcement Learning

Shangtong Zhang, Bo Liu, Shimon Whiteson

发表年份
2020
引用次数
5
访问权限
开放获取

摘要

We present a mean-variance policy iteration (MVPI) framework for risk-averse control in a discounted infinite horizon MDP optimizing the variance of a per-step reward random variable. MVPI enjoys great flexibility in that any policy evaluation method and risk-neutral control method can be dropped in for risk-averse control off the shelf, in both on- and off-policy settings. This flexibility reduces the gap between risk-neutral control and risk-averse control and is achieved by working on a novel augmented MDP directly. We propose risk-averse TD3 as an example instantiating MVPI, which outperforms vanilla TD3 and many previous risk-averse control methods in challenging Mujoco robot simulation tasks under a risk-aware performance metric. This risk-averse TD3 is the first to introduce deterministic policies and off-policy learning into risk-averse reinforcement learning, both of which are key to the performance boost we show in Mujoco domains.

关键词

Reinforcement learningFlexibility (engineering)Variance (accounting)Computer sciencePerformance metricMetric (unit)Time horizonMathematical optimizationControl (management)Random variable

相关论文

查看 LEARNING 分类全部论文