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Tractable Explanations for d-DNNF Classifiers

Xuanxiang Huang, Yacine Izza, Alexey Ignatiev, Martin Cooper, Nicholas Asher, João Marques‐Silva

2022Proceedings of the AAAI Conference on Artificial Intelligence27 citationsDOIOpen Access PDF

Abstract

Compilation into propositional languages finds a growing number of practical uses, including in constraint programming, diagnosis and machine learning (ML), among others. One concrete example is the use of propositional languages as classifiers, and one natural question is how to explain the predictions made. This paper shows that for classifiers represented with some of the best-known propositional languages, different kinds of explanations can be computed in polynomial time. These languages include deterministic decomposable negation normal form (d-DNNF), and so any propositional language that is strictly less succinct than d-DNNF. Furthermore, the paper describes optimizations, specific to Sentential Decision Diagrams (SDDs), which are shown to yield more efficient algorithms in practice.

Topics & Concepts

Propositional calculusPropositional variableComputer scienceNegationPropositional formulaArtificial intelligenceConstraint (computer-aided design)Natural language processingStable model semanticsProgramming languageTheoretical computer scienceMathematicsDescription logicMultimodal logicGeometryIntermediate logicRough Sets and Fuzzy LogicConstraint Satisfaction and OptimizationAI-based Problem Solving and Planning
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