鲁棒部分可观察马尔可夫决策过程

M. Rasouli, S. Saghafian
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引用次数: 12

摘要

在各种应用程序中,需要在收到关于底层系统状态的不完美观察后动态地做出决策。部分可观察马尔可夫决策过程(pomdp)广泛应用于此类应用。然而,要使用POMDP,决策者必须能够获得每个可能状态和动作对下的核心状态和观测转移概率的可靠估计。这通常是具有挑战性的,主要原因是缺乏充足的数据,特别是当一些行动在实践中没有足够频繁地采取时。这极大地限制了pomdp在现实环境中的应用。例如,在医疗保健领域,医学测试通常会出现假阳性和假阴性错误,因此,决策者对患者健康状况的信息是不完全的。此外,由于过去没有推荐或探索过一些治疗方案,因此无法使用数据可靠地估计患者健康状态所需的所有过渡概率。我们引入了pomdp的扩展,称为鲁棒pomdp (rpomdp),它允许在转移概率不明确时进行动态决策。这种扩展可以通过减少对单一概率模型的依赖来做出稳健的决策,同时仍然允许不完美的状态观察。我们开发了求解rpomdp的动态规划方程,提供了一个简洁的统计和信息状态,讨论了降低rpomdp计算复杂度的方法,并将它们与具有不完善私有监控的随机零和博弈联系起来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Partially Observable Markov Decision Processes
In a variety of applications, decisions need to be made dynamically after receiving imperfect observations about the state of an underlying system. Partially Observable Markov Decision Processes (POMDPs) are widely used in such applications. To use a POMDP, however, a decision-maker must have access to reliable estimations of core state and observation transition probabilities under each possible state and action pair. This is often challenging mainly due to lack of ample data, especially when some actions are not taken frequently enough in practice. This significantly limits the application of POMDPs in real world settings. In healthcare, for example, medical tests are typically subject to false-positive and false-negative errors, and hence, the decision-maker has imperfect information about the health state of a patient. Furthermore, since some treatment options have not been recommended or explored in the past, data cannot be used to reliably estimate all the required transition probabilities regarding the health state of the patient. We introduce an extension of POMDPs, termed Robust POMDPs (RPOMDPs), which allows dynamic decision-making when there is ambiguity regarding transition probabilities. This extension enables making robust decisions by reducing the reliance on a single probabilistic model of transitions, while still allowing for imperfect state observations. We develop dynamic programming equations for solving RPOMDPs, provide a sucient statistic and an information state, discuss ways in which their computational complexity can be reduced, and connect them to stochastic zero-sum games with imperfect private monitoring.
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