风险敏感强化学习的概率视角

Erfaun Noorani, J. Baras
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摘要

鲁棒性是强化学习(RL)在现实世界应用的关键因素。风险敏感控制器的鲁棒性早已确立。我们通过理论分析风险敏感指数(总回报的指数)标准,以及引入风险敏感性给传统强化学习带来的好处和改进,研究了风险敏感强化学习(作为风险敏感随机控制的推广)。我们提供了(I)风险敏感指数、(II)风险中性预期累积奖励和(III)最大熵强化学习目标的概率解释,并从概率角度探讨了它们之间的联系。使用概率图模型(PGM),我们建立了在RL设置中,风险敏感指数标准的最大化等同于在事件中所有时间步采取最佳行动的概率最大化。我们证明了标准风险中性预期累积收益的最大化等同于在事件中所有时间步采取最优行动的概率的下界,特别是证据下界的最大化。此外,我们证明了最大熵强化学习目标的最大化相当于在一个事件中所有时间步采取最优行动的概率的最大化下界,其中最大熵目标对应的下界比预期累积回报目标对应的下界更紧密和平滑。这些等价建立了风险敏感指数目标的好处,并阐明了先前假设的正则化目标,例如最大熵。利用PGM模型,加上指数准则,提供了许多优点(例如,方便理论分析和推导边界)。
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A Probabilistic Perspective on Risk-sensitive Reinforcement Learning
Robustness is a key enabler of real-world applications of Reinforcement Learning (RL). The robustness properties of risk-sensitive controllers have long been established. We investigate risk-sensitive Reinforcement Learning (as a generalization of risk-sensitive stochastic control), by theoretically analyzing the risk-sensitive exponential (exponential of the total reward) criteria, and the benefits and improvements the introduction of risk-sensitivity brings to conventional RL. We provide a probabilistic interpretation of (I) the risk-sensitive exponential, (II) the risk-neutral expected cumulative reward, and (III) the maximum entropy Reinforcement Learning objectives, and explore their connections from a probabilistic perspective. Using Probabilistic Graphical Models (PGM), we establish that in the RL setting, maximization of the risk-sensitive exponential criteria is equivalent to maximizing the probability of taking an optimal action at all time-steps during an episode. We show that the maximization of the standard risk-neutral expected cumulative return is equivalent to maximizing a lower bound, particularly the Evidence lower Bound, on the probability of taking an optimal action at all time-steps during an episode. Furthermore, we show that the maximization of the maximum-entropy Reinforcement Learning objective is equivalent to maximizing a lower bound on the probability of taking an optimal action at all time-steps during an episode, where the lower bound corresponding to the maximum entropy objective is tighter and smoother than the lower bound corresponding to the expected cumulative return objective. These equivalences establish the benefits of risk-sensitive exponential objective and shed lights on previously postulated regularized objectives, such as maximum entropy. The utilization of a PGM model, coupled with exponential criteria, offers a number of advantages (e.g. facilitate theoretical analysis and derivation of bounds).
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