A simple mixture policy parameterization for improving sample efficiency of CVaR optimization

Reinforcement learning algorithms utilizing policy gradients (PG) to optimize Conditional Value at Risk (CVaR) face significant challenges with sample inefficiency, hindering their practical applications. This inefficiency stems from two main facts: a focus on tail-end performance that overlooks man...

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書目詳細資料
Main Authors: Luo, Y, Pan, Y, Wang, H, Torr, P, Poupart, P
格式: Conference item
語言:English
出版: University of Massachusetts Amherst 2024