Improving POMDP tractability via belief compression and clustering.

Xin Li, William K Cheung, Jiming Liu
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引用次数: 17

Abstract

Partially observable Markov decision process (POMDP) is a commonly adopted mathematical framework for solving planning problems in stochastic environments. However, computing the optimal policy of POMDP for large-scale problems is known to be intractable, where the high dimensionality of the underlying belief space is one of the major causes. In this paper, we propose a hybrid approach that integrates two different approaches for reducing the dimensionality of the belief space: 1) belief compression and 2) value-directed compression. In particular, a novel orthogonal nonnegative matrix factorization is derived for the belief compression, which is then integrated in a value-directed framework for computing the policy. In addition, with the conjecture that a properly partitioned belief space can have its per-cluster intrinsic dimension further reduced, we propose to apply a k-means-like clustering technique to partition the belief space to form a set of sub-POMDPs before applying the dimension reduction techniques to each of them. We have evaluated the proposed belief compression and clustering approaches based on a set of benchmark problems and demonstrated their effectiveness in reducing the cost for computing policies, with the quality of the policies being retained.

通过信念压缩和聚类提高POMDP的可追溯性。
部分可观察马尔可夫决策过程(POMDP)是求解随机环境下规划问题的常用数学框架。然而,对于大规模问题,计算POMDP的最优策略是一个棘手的问题,其中底层信念空间的高维是主要原因之一。在本文中,我们提出了一种混合方法,集成了两种不同的方法来降低信念空间的维数:1)信念压缩和2)值导向压缩。特别地,推导了一种新的正交非负矩阵分解方法用于信念压缩,然后将其集成到一个值导向的策略计算框架中。此外,利用适当划分的信念空间可以进一步降低其每簇内在维数的假设,我们提出在对每个信念空间进行降维之前,先采用类k均值聚类技术对信念空间进行划分,形成一组子pomdp。我们基于一组基准问题评估了所提出的信念压缩和聚类方法,并证明了它们在降低计算策略成本方面的有效性,同时保留了策略的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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