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A Nested Genetic Algorithm for Explaining Classification Data Sets with Decision Rules

2022-08-23 11:42:15
Paul-Amaury Matt, Rosina Ziegler, Danilo Brajovic, Marco Roth, Marco F. Huber

Abstract

Our goal in this paper is to automatically extract a set of decision rules (rule set) that best explains a classification data set. First, a large set of decision rules is extracted from a set of decision trees trained on the data set. The rule set should be concise, accurate, have a maximum coverage and minimum number of inconsistencies. This problem can be formalized as a modified version of the weighted budgeted maximum coverage problem, known to be NP-hard. To solve the combinatorial optimization problem efficiently, we introduce a nested genetic algorithm which we then use to derive explanations for ten public data sets.

Abstract (translated)

URL

https://arxiv.org/abs/2209.07575

PDF

https://arxiv.org/pdf/2209.07575.pdf


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