资源论文The Markov Assumption: Formalization and Impact Alexander Bochman

The Markov Assumption: Formalization and Impact Alexander Bochman

2019-11-11 | |  79 |   39 |   0
Abstract We provide both a semantic interpretation and logical (inferential) characterization of the Markov principle that underlies the main action theories in AI. This principle will be shown to constitute a nonmonotonic assumption that justifies the actual restrictions on action descriptions in these theories, as well as constraints on allowable queries. It will be shown also that the well-known regression principle is a consequence of the Markov assumption, and it is valid also for non-deterministic domains.

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