Přístupnostní navigace
E-přihláška
Vyhledávání Vyhledat Zavřít
Detail publikačního výsledku
GALESLOOT, M.; ANDRIUSHCHENKO, R.; ČEŠKA, M.; JUNGES, S.; JANSEN, N.
Originální název
Robust Finite-Memory Policy Gradients for Hidden-Model POMDPs
Anglický název
Druh
Stať ve sborníku v databázi WoS či Scopus
Originální abstrakt
Partially observable Markov decision processes (POMDPs) model specific environments in sequential decision-making under uncertainty. Critically, optimal policies for POMDPs may not be robust against perturbations in the environment. Hidden-model POMDPs (HM-POMDPs) capture sets of different environment models, that is, POMDPs with a shared action and observation space. The intuition is that the true model is hidden among a set of potential models, and it is unknown which model will be the environment at execution time. A policy is robust for a given HM-POMDP if it achieves sufficient performance for each of its POMDPs. We compute such robust policies by combining two orthogonal techniques: (1) a deductive formal verification technique that supports tractable robust policy evaluation by computing a worst-case POMDP within the HM-POMDP, and (2) subgradient ascent to optimize the candidate policy for a worst-case POMDP. The empirical evaluation shows that, compared to various baselines, our approach (1) produces policies that are more robust and generalize better to unseen POMDPs, and (2) scales to HM-POMDPs that consist of over a hundred thousand environments.
Anglický abstrakt
Klíčová slova
POMDPs;planning under uncertainty;learning in planning and scheduling;partially observable reinforcement learning and POMDPs
Klíčová slova v angličtině
Autoři
Vydáno
16.08.2025
Nakladatel
International Joint Conferences on Artificial Intelligence Organization
ISBN
978-1-956792-06-5
Kniha
Proceedings of the Thirty-Fourth International Joint Conference on Artificial Intelligence
Strany od
8518
Strany do
8526
Strany počet
9
URL
https://doi.org/10.24963/ijcai.2025/947
BibTex
@inproceedings{BUT198874, author="{} and Roman {Andriushchenko} and Milan {Češka} and {} and {}", title="Robust Finite-Memory Policy Gradients for Hidden-Model POMDPs", booktitle="Proceedings of the Thirty-Fourth International Joint Conference on Artificial Intelligence", year="2025", pages="8518--8526", publisher="International Joint Conferences on Artificial Intelligence Organization", doi="10.24963/ijcai.2025/947", isbn="978-1-956792-06-5", url="https://doi.org/10.24963/ijcai.2025/947" }