2024
DOI: 10.1609/aaai.v38i18.30042
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Inference and Learning in Dynamic Decision Networks Using Knowledge Compilation

Gabriele Venturato,
Vincent Derkinderen,
Pedro Zuidberg Dos Martires
et al.

Abstract: Decision making under uncertainty in dynamic environments is a fundamental AI problem in which agents need to determine which decisions (or actions) to make at each time step to maximise their expected utility. Dynamic decision networks (DDNs) are an extension of dynamic Bayesian networks with decisions and utilities. DDNs can be used to compactly represent Markov decision processes (MDPs). We propose a novel algorithm called mapl-cirup that leverages knowledge compilation techniques developed for (dynamic) Ba… Show more

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