Probabilistic entailment on first order languages and reasoning with inconsistencies

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Abstract

We investigate an approach for drawing logical inference from inconsistent premisses. The main idea in this approach is that the inconsistencies in the premisses should be interpreted as uncertainty of the information. We propose a mechanism, based on Kinght’s [14] study of inconsistency, for revising an inconsistent set of premisses to a minimally uncertain, probabilistically consistent one. We will then generalise the probabilistic entailment relation introduced in [15] for propositional languages to the first order case to draw logical inference from a probabilistic set of premisses. We will show how this combination can allow us to limit the effect of uncertainty introduced by inconsistent premisses to only the reasoning on the part of the premise set that is relevant to the inconsistency.
Original languageEnglish
Pages (from-to)351-368
JournalThe Review of Symbolic Logic
Volume16
Issue number2
Early online date7 Jul 2022
Publication statusPublished - Jun 2023

Keywords

  • Probabilistic reasoning
  • Inconsistency

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