Voronoi Progressive Widening: Efficient Online Solvers for Continuous State, Action, and Observation POMDPs

M. H. Lim, C. Tomlin, Zachary Sunberg
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引用次数: 14

Abstract

This paper introduces Voronoi Progressive Widening (VPW), a generalization of Voronoi optimistic optimization (VOO) and action progressive widening to partially observable Markov decision processes (POMDPs). Tree search algorithms can use VPW to effectively handle continuous or hybrid action spaces by efficiently balancing local and global action searching. This paper proposes two VPW-based algorithms and analyzes them from theoretical and simulation perspectives. Voronoi Optimistic Weighted Sparse Sampling (VOWSS) is a theoretical tool that justifies VPW-based online solvers, and it is the first algorithm with global convergence guarantees for continuous state, action, and observation POMDPs. Voronoi Optimistic Monte Carlo Planning with Observation Weighting (VOMCPOW) is a versatile and efficient algorithm that consistently outperforms state-of-the-art POMDP algorithms in several simulation experiments.
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Voronoi渐进式扩展:连续状态,动作和观察pomdp的有效在线求解器
本文介绍了Voronoi渐进加宽(VPW),将Voronoi乐观优化(VOO)和动作渐进加宽推广到部分可观察马尔可夫决策过程(pomdp)。树搜索算法可以利用VPW有效地处理连续或混合动作空间,从而有效地平衡局部和全局动作搜索。本文提出了两种基于vpw的算法,并从理论和仿真两方面对其进行了分析。Voronoi乐观加权稀疏抽样(VOWSS)是一种理论工具,证明了基于vpw的在线求解器,它是第一个对连续状态、动作和观察pomdp具有全局收敛保证的算法。Voronoi乐观蒙特卡罗规划与观测加权(VOMCPOW)是一个通用和高效的算法,在几个模拟实验中始终优于最先进的POMDP算法。
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