部分可观测非确定性规划的迭代信念修正

Dongning Rao, Zhihua Jiang
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引用次数: 0

摘要

在部分观测不确定性规划(PONDP)中,任何关于当前状态的信息都是宝贵的。由于系统不能确切地知道当前的状态,新的观测信息有助于使其更清晰。虽然延迟效应在现实世界中很常见,但它们从未在PONDP中得到解决。因此,我们提出了一种新的PONDP中信念状态的推理方法,特别是在延迟效应的情况下。解决延迟效应不仅需要修正当前的信念状态,还需要修正整个信念历史。其核心算法是迭代信念修正算法(IBR),首次将PONDP与信念变化之间的差距进行了弥补。IBR首先找出新已知事实的所有行动候选项,然后确定发生了哪些影响,最后根据当前状态修改信念历史。实例表明,IBR履行了自己的职责。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Iterative Belief Revision in Partial Observable Non-deterministic Planning
Any information about the current state is precious in Partial Observed Nondeterministic Planning (PONDP). Since the system do not exactly know the current state, new observation information is helpful to make it clearer. Although delayed effects are common in real-world domains, they have never been addressed in PONDP. Hence we propose a novel method for reasoning about belief states in PONDP, especially in the case of delayed effects. Addressing delayed effects need to revise not only the current belief state but also the whole belief history. The core algorithm is called Iterative Belief Revision algorithm (IBR), which bridges the gap between PONDP and belief change for the first time. IBR first finds out all action candidates for a newly known fact, and then determines which effects have happened, and finally revise the belief history along with the current state. Examples show that IBR fulfills its duty.
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