定义批强化学习中高置信度策略评估的可接受奖励

Niranjani Prasad, B. Engelhardt, F. Doshi-Velez
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引用次数: 5

摘要

在有限的批量数据的实际应用中,强化学习(RL)的一个关键障碍是定义一个奖励函数,该函数反映了我们对任务的合理行为的隐式了解,并允许鲁棒的非策略评估。在这项工作中,我们开发了一种方法来确定政策的一组可接受的奖励函数,这些函数(a)在性能上不会偏离先前的行为太远,并且(b)可以在仅给定过去轨迹的集合的情况下以高可信度进行评估。这些因素共同确保我们避免在高风险环境中提出不合理的政策。我们展示了我们在综合领域以及重症监护环境下的奖励设计方法,以指导奖励功能的设计,巩固临床目标,以学习脱离机械通气患者的策略。
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Defining admissible rewards for high-confidence policy evaluation in batch reinforcement learning
A key impediment to reinforcement learning (RL) in real applications with limited, batch data is in defining a reward function that reflects what we implicitly know about reasonable behaviour for a task and allows for robust off-policy evaluation. In this work, we develop a method to identify an admissible set of reward functions for policies that (a) do not deviate too far in performance from prior behaviour, and (b) can be evaluated with high confidence, given only a collection of past trajectories. Together, these ensure that we avoid proposing unreasonable policies in high-risk settings. We demonstrate our approach to reward design on synthetic domains as well as in a critical care context, to guide the design of a reward function that consolidates clinical objectives to learn a policy for weaning patients from mechanical ventilation.
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