2023
DOI: 10.1007/s42979-023-02198-x
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Discovering Rules for Rule-Based Machine Learning with the Help of Novelty Search

Michael Heider,
Helena Stegherr,
David Pätzel
et al.

Abstract: Automated prediction systems based on machine learning (ML) are employed in practical applications with increasing frequency and stakeholders demand explanations of their decisions. ML algorithms that learn accurate sets of rules, such as learning classifier systems (LCSs), produce transparent and human-readable models by design. However, whether such models can be effectively used, both for predictions and analyses, strongly relies on the optimal placement and selection of rules (in ML this task is known as m… Show more

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Cited by 3 publications
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