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Generating Explainable Rule Sets from Tree-Ensemble Learning Methods by Answer Set Programming

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arxiv 2109.08290 v1 pith:GSEGXZFK submitted 2021-09-17 cs.AI

Generating Explainable Rule Sets from Tree-Ensemble Learning Methods by Answer Set Programming

classification cs.AI
keywords rulerulestree-ensembleanswerapproachexplainablegeneratingmethods
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a method for generating explainable rule sets from tree-ensemble learners using Answer Set Programming (ASP). To this end, we adopt a decompositional approach where the split structures of the base decision trees are exploited in the construction of rules, which in turn are assessed using pattern mining methods encoded in ASP to extract interesting rules. We show how user-defined constraints and preferences can be represented declaratively in ASP to allow for transparent and flexible rule set generation, and how rules can be used as explanations to help the user better understand the models. Experimental evaluation with real-world datasets and popular tree-ensemble algorithms demonstrates that our approach is applicable to a wide range of classification tasks.

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