POMDP policies can be checked for robustness to observation model changes by solving a bi-level optimization via root-finding with the Robust Interval Search algorithm, which runs in polynomial time for non-sticky history-independent deviations when using finite-state controllers.
JAIR 58, 231–266 (2017)
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VOiLA learns task-agnostic POMDP models with diffusion models, distills them for speed, and integrates with vectorized online planning to match or exceed baselines using under 10% of the training data while generalizing better and succeeding on physical robots.
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Robustness Analysis of POMDP Policies to Observation Perturbations
POMDP policies can be checked for robustness to observation model changes by solving a bi-level optimization via root-finding with the Robust Interval Search algorithm, which runs in polynomial time for non-sticky history-independent deviations when using finite-state controllers.