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Addressing Myopic Constrained POMDP Planning with Recursive Dual Ascent

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arxiv 2403.17358 v1 pith:V4F2BNUK submitted 2024-03-26 cs.AI

Addressing Myopic Constrained POMDP Planning with Recursive Dual Ascent

classification cs.AI
keywords dualascentactionconstrainedcpomdpsdecisionexplorationglobal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Lagrangian-guided Monte Carlo tree search with global dual ascent has been applied to solve large constrained partially observable Markov decision processes (CPOMDPs) online. In this work, we demonstrate that these global dual parameters can lead to myopic action selection during exploration, ultimately leading to suboptimal decision making. To address this, we introduce history-dependent dual variables that guide local action selection and are optimized with recursive dual ascent. We empirically compare the performance of our approach on a motivating toy example and two large CPOMDPs, demonstrating improved exploration, and ultimately, safer outcomes.

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