Probabilities on Sentences in an Expressive Logic
Marcus Hutter, John W. Lloyd, Kee Siong Ng, William T. B., Uther

TL;DR
This paper develops a theoretical framework for assigning probabilities to sentences in expressive logic, ensuring consistency with knowledge, logical deduction, and inductive reasoning, advancing the integration of logic and probability.
Contribution
It introduces explicit constructions and characterizations of probabilities that unify logic and probability, satisfying multiple desirable criteria for uncertain reasoning.
Findings
Probabilities satisfying all criteria exist.
Provides explicit constructions and characterizations.
Establishes conditions for belief extension to all sentences.
Abstract
Automated reasoning about uncertain knowledge has many applications. One difficulty when developing such systems is the lack of a completely satisfactory integration of logic and probability. We address this problem directly. Expressive languages like higher-order logic are ideally suited for representing and reasoning about structured knowledge. Uncertain knowledge can be modeled by using graded probabilities rather than binary truth-values. The main technical problem studied in this paper is the following: Given a set of sentences, each having some probability of being true, what probability should be ascribed to other (query) sentences? A natural wish-list, among others, is that the probability distribution (i) is consistent with the knowledge base, (ii) allows for a consistent inference procedure and in particular (iii) reduces to deductive logic in the limit of probabilities being…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Logic, Reasoning, and Knowledge · Semantic Web and Ontologies
