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Research articles

On the measure of conflicts: an argumentation-based framework

Pages 240-259 | Received 06 Dec 2016, Accepted 01 Mar 2018, Published online: 07 May 2018
 

Abstract

An important issue in the management of knowledge-based systems is the handling of inconsistency. This problem has recently been attracting a lot of attention from Artificial Intelligence community. When inconsistency occurs in a knowledge base, there are mainly two ways to deal with it; we either resolve it or accept inconsistency and cope with it. This paper tackles the problem of evaluating the amount of contradiction in propositional knowledge bases, and provides a new measure of conflict based on deductive argumentation theory. Measuring the degree of conflict of a knowledge base can help us to deal with inconsistencies. Several semantic- and syntax-based approaches have been proposed separately. Given the pivotal role of argumentation in representing and handling inconsistency, in this paper, we use logical argumentation as a way to compute the inconsistency measure for propositional formulae. We show using the complete argumentation tree that our family of inconsistency measures is able to localise the conflict of a formula following its context and allows us to distinguish between formulae. We extend our measure to quantify the degree of inconsistency of a set of formulae and give a general formulation of the inconsistency using some logical properties. We also provide a general formulation of our method in order to quantify the conflict of the whole knowledge base. Finally, we address the problem of restoring consistency using inconsistency measures.

Acknowledgements

This work is a revised and extended version of the conference paper (Raddaoui, Citation2015). The author is very grateful to the anonymous reviewers for making a number of important suggestions for improving the paper.

Disclosure statement

No potential conflict of interest was reported by the author.

Notes

This paper is a revised and extended version of the conference paper.

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