{"title":"解决方案质量不打折扣:通过自适应多级简化加速依赖信念的连续部分可观测马尔可夫决策过程","authors":"Andrey Zhitnikov, Ori Sztyglic, Vadim Indelman","doi":"10.1177/02783649241261398","DOIUrl":null,"url":null,"abstract":"Continuous Partially Observable Markov Decision Processes (POMDPs) with general belief-dependent rewards are notoriously difficult to solve online. In this paper, we present a complete provable theory of adaptive multilevel simplification for the setting of a given externally constructed belief tree and Monte Carlo Tree Search (MCTS) that constructs the belief tree on the fly using an exploration technique. Our theory allows to accelerate POMDP planning with belief-dependent rewards without any sacrifice in the quality of the obtained solution. We rigorously prove each theoretical claim in the proposed unified theory. Using the general theoretical results, we present three algorithms to accelerate continuous POMDP online planning with belief-dependent rewards. Our two algorithms, SITH-BSP and LAZY-SITH-BSP, can be utilized on top of any method that constructs a belief tree externally. The third algorithm, SITH-PFT, is an anytime MCTS method that permits to plug-in any exploration technique. All our methods are guaranteed to return exactly the same optimal action as their unsimplified equivalents. We replace the costly computation of information-theoretic rewards with novel adaptive upper and lower bounds which we derive in this paper, and are of independent interest. We show that they are easy to calculate and can be tightened by the demand of our algorithms. Our approach is general; namely, any bounds that monotonically converge to the reward can be utilized to achieve a significant speedup without any loss in performance. Our theory and algorithms support the challenging setting of continuous states, actions, and observations. The beliefs can be parametric or general and represented by weighted particles. We demonstrate in simulation a significant speedup in planning compared to baseline approaches with guaranteed identical performance.","PeriodicalId":501362,"journal":{"name":"The International Journal of Robotics Research","volume":"6 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-09-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"No compromise in solution quality: Speeding up belief-dependent continuous partially observable Markov decision processes via adaptive multilevel simplification\",\"authors\":\"Andrey Zhitnikov, Ori Sztyglic, Vadim Indelman\",\"doi\":\"10.1177/02783649241261398\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Continuous Partially Observable Markov Decision Processes (POMDPs) with general belief-dependent rewards are notoriously difficult to solve online. In this paper, we present a complete provable theory of adaptive multilevel simplification for the setting of a given externally constructed belief tree and Monte Carlo Tree Search (MCTS) that constructs the belief tree on the fly using an exploration technique. Our theory allows to accelerate POMDP planning with belief-dependent rewards without any sacrifice in the quality of the obtained solution. We rigorously prove each theoretical claim in the proposed unified theory. Using the general theoretical results, we present three algorithms to accelerate continuous POMDP online planning with belief-dependent rewards. Our two algorithms, SITH-BSP and LAZY-SITH-BSP, can be utilized on top of any method that constructs a belief tree externally. The third algorithm, SITH-PFT, is an anytime MCTS method that permits to plug-in any exploration technique. All our methods are guaranteed to return exactly the same optimal action as their unsimplified equivalents. We replace the costly computation of information-theoretic rewards with novel adaptive upper and lower bounds which we derive in this paper, and are of independent interest. We show that they are easy to calculate and can be tightened by the demand of our algorithms. Our approach is general; namely, any bounds that monotonically converge to the reward can be utilized to achieve a significant speedup without any loss in performance. Our theory and algorithms support the challenging setting of continuous states, actions, and observations. The beliefs can be parametric or general and represented by weighted particles. 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引用次数: 0
摘要
具有一般信念依赖奖励的连续部分可观测马尔可夫决策过程(POMDPs)在线求解的难度是众所周知的。在本文中,我们针对给定外部构建的信念树和蒙特卡罗树搜索(Monte Carlo Tree Search,MCTS)提出了一套完整的可证明的自适应多级简化理论,该理论可使用探索技术快速构建信念树。我们的理论允许在不牺牲所获解决方案质量的情况下,加速具有依赖于信念的奖励的 POMDP 规划。我们严格证明了所提出的统一理论中的每个理论主张。利用一般理论结果,我们提出了三种算法来加速具有信念依赖奖励的连续 POMDP 在线规划。我们的两种算法 SITH-BSP 和 LAZY-SITH-BSP 可用于任何从外部构建信念树的方法。第三种算法 SITH-PFT 是一种随时 MCTS 方法,允许插入任何探索技术。我们的所有方法都能保证返回与其未简化等效方法完全相同的最优行动。我们用新颖的自适应上界和下界取代了代价高昂的信息论奖励计算,这些上界和下界是我们在本文中推导出来的,具有独立的意义。我们证明,它们很容易计算,而且可以根据我们算法的要求加以收紧。我们的方法是通用的,即可以利用任何单调收敛于奖励的边界,在不损失任何性能的情况下实现显著提速。我们的理论和算法支持具有挑战性的连续状态、行动和观察设置。信念可以是参数信念,也可以是一般信念,并用加权粒子表示。我们在仿真中证明,与保证性能相同的基线方法相比,规划速度明显加快。
No compromise in solution quality: Speeding up belief-dependent continuous partially observable Markov decision processes via adaptive multilevel simplification
Continuous Partially Observable Markov Decision Processes (POMDPs) with general belief-dependent rewards are notoriously difficult to solve online. In this paper, we present a complete provable theory of adaptive multilevel simplification for the setting of a given externally constructed belief tree and Monte Carlo Tree Search (MCTS) that constructs the belief tree on the fly using an exploration technique. Our theory allows to accelerate POMDP planning with belief-dependent rewards without any sacrifice in the quality of the obtained solution. We rigorously prove each theoretical claim in the proposed unified theory. Using the general theoretical results, we present three algorithms to accelerate continuous POMDP online planning with belief-dependent rewards. Our two algorithms, SITH-BSP and LAZY-SITH-BSP, can be utilized on top of any method that constructs a belief tree externally. The third algorithm, SITH-PFT, is an anytime MCTS method that permits to plug-in any exploration technique. All our methods are guaranteed to return exactly the same optimal action as their unsimplified equivalents. We replace the costly computation of information-theoretic rewards with novel adaptive upper and lower bounds which we derive in this paper, and are of independent interest. We show that they are easy to calculate and can be tightened by the demand of our algorithms. Our approach is general; namely, any bounds that monotonically converge to the reward can be utilized to achieve a significant speedup without any loss in performance. Our theory and algorithms support the challenging setting of continuous states, actions, and observations. The beliefs can be parametric or general and represented by weighted particles. We demonstrate in simulation a significant speedup in planning compared to baseline approaches with guaranteed identical performance.