指数成本风险敏感mdp的改进策略迭代

Yashaswini Murthy, Mehrdad Moharrami, R. Srikant
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引用次数: 0

摘要

修正策略迭代(MPI)也称为乐观策略迭代,是许多强化学习算法的核心。它通过结合策略迭代和值迭代的元素来工作。MPI的收敛性已经在折现和平均成本mpp的情况下得到了很好的研究。在这项工作中,我们考虑了指数成本风险敏感的MDP公式,已知它对模型参数具有一定的鲁棒性。虽然政策迭代和价值迭代在风险敏感型mdp的背景下已经得到了很好的研究,但对修正策略迭代的研究相对较少。我们首次证明了在有限状态和有限作用空间下,MPI对于风险敏感问题也是收敛的。由于指数成本公式处理乘法Bellman方程,我们的主要贡献是收敛证明,这与贴现和风险中性平均成本问题的现有结果有很大不同。附录中还提供了对风险敏感的mdp近似修改策略迭代的证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modified Policy Iteration for Exponential Cost Risk Sensitive MDPs
Modified policy iteration (MPI) also known as optimistic policy iteration is at the core of many reinforcement learning algorithms. It works by combining elements of policy iteration and value iteration. The convergence of MPI has been well studied in the case of discounted and average-cost MDPs. In this work, we consider the exponential cost risk-sensitive MDP formulation, which is known to provide some robustness to model parameters. Although policy iteration and value iteration have been well studied in the context of risk sensitive MDPs, modified policy iteration is relatively unexplored. We provide the first proof that MPI also converges for the risk-sensitive problem in the case of finite state and action spaces. Since the exponential cost formulation deals with the multiplicative Bellman equation, our main contribution is a convergence proof which is quite different than existing results for discounted and risk-neutral average-cost problems. The proof of approximate modified policy iteration for risk sensitive MDPs is also provided in the appendix.
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