利用动态失真风险度量进行稳健强化学习

Anthony Coache, Sebastian Jaimungal
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引用次数: 0

摘要

在强化学习(RL)环境中,代理的最优策略在很大程度上取决于其风险偏好和训练环境的底层模型动态。这两方面会影响代理在面对测试环境时做出知情且时间一致的决策的能力。在这项工作中,我们设计了一个解决鲁棒风险感知 RL 问题的框架,在这个框架中,我们用一类动态鲁棒失真风险度量来同时考虑环境的不确定性和风险。鲁棒性是通过在一个围绕参考模型的 Wasserstein 球内考虑所有模型而引入的。我们利用严格一致的评分函数,使用神经网络估算此类动态稳健风险度量,使用扭曲风险度量的量子表示法推导出政策梯度公式,并构建了一种行为批判算法来解决这类稳健风险感知 RL 问题。我们在一个投资组合分配实例中演示了我们算法的性能。
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Robust Reinforcement Learning with Dynamic Distortion Risk Measures
In a reinforcement learning (RL) setting, the agent's optimal strategy heavily depends on her risk preferences and the underlying model dynamics of the training environment. These two aspects influence the agent's ability to make well-informed and time-consistent decisions when facing testing environments. In this work, we devise a framework to solve robust risk-aware RL problems where we simultaneously account for environmental uncertainty and risk with a class of dynamic robust distortion risk measures. Robustness is introduced by considering all models within a Wasserstein ball around a reference model. We estimate such dynamic robust risk measures using neural networks by making use of strictly consistent scoring functions, derive policy gradient formulae using the quantile representation of distortion risk measures, and construct an actor-critic algorithm to solve this class of robust risk-aware RL problems. We demonstrate the performance of our algorithm on a portfolio allocation example.
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