Publication detail
An Oracle-Guided Approach to Constrained Policy Synthesis Under Uncertainty
MACÁK, F. ANDRIUSHCHENKO, R. ČEŠKA, M. JUNGES, S. KATOEN, J.
Original Title
An Oracle-Guided Approach to Constrained Policy Synthesis Under Uncertainty
Type
journal article - other
Language
English
Original Abstract
Dealing with aleatoric uncertainty is key in many domains involving sequential decision making, e.g., planning in AI, network protocols, and symbolic program synthesis. This paper presents a general-purpose model-based framework to obtain policies operating in uncertain environments in a fully automated manner. The new concept of coloured Markov Decision Processes (MDPs) enables a succinct representation of a wide range of synthesis problems. A coloured MDP describes a collection of possible policy configurations with their structural dependencies. The framework covers the synthesis of (a) programmatic policies from probabilistic program sketches and (b) finite-state controllers representing policies for partially observable MDPs (POMDPs), including decentralised POMDPs as well as constrained POMDPs. We show that all these synthesis problems can be cast as exploring memoryless policies in the corresponding coloured MDP. This exploration uses a symbiosis of two orthogonal techniques: abstraction refinement-using a novel refinement method-and counter-example generalisation. Our approach outperforms dedicated synthesis techniques on some problems and significantly improves an earlier version of this framework.
Keywords
Markov decision processes, model-based reasoning, search, decision making under uncertainty
Authors
MACÁK, F.; ANDRIUSHCHENKO, R.; ČEŠKA, M.; JUNGES, S.; KATOEN, J.
Released
1. 2. 2025
ISBN
1076-9757
Periodical
JOURNAL OF ARTIFICIAL INTELLIGENCE RESEARCH
Year of study
2025
Number
82
State
United States of America
Pages from
433
Pages to
469
Pages count
37
URL
BibTex
@article{BUT196710,
author="MACÁK, F. and ANDRIUSHCHENKO, R. and ČEŠKA, M. and JUNGES, S. and KATOEN, J.",
title="An Oracle-Guided Approach to Constrained Policy Synthesis Under Uncertainty",
journal="JOURNAL OF ARTIFICIAL INTELLIGENCE RESEARCH",
year="2025",
volume="2025",
number="82",
pages="433--469",
doi="10.1613/jair.1.16593",
issn="1076-9757",
url="https://www.jair.org/index.php/jair/article/view/16593"
}