Scaling the Explanation of Multi-Class Bayesian Network Classifiers
arXiv cs.AI / 3/17/2026
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Key Points
- The article presents a new algorithm for compiling Bayesian network classifiers (BNCs) into class formulas, enabling explicit input-output representations of the classifier.
- Class formulas serve to support logical explanations of classifier decisions, aligning with explainable AI approaches.
- Unlike prior work, the algorithm handles multiclass (not restricted to binary) BNCs, broadening its applicability.
- The method demonstrates significant improvements in compilation time compared to previous approaches.
- The produced class formulas are in negation normal form (NNF) circuits that are OR-decomposable, which facilitates efficient computation of explanations.
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