Evolving Interpretable Classification Models via Readability-Enhanced Genetic Programming

Souza Abreu JVT, Martins DML, Lima Neto FB


Zusammenfassung

As the impact of Machine Learning (ML) on busi-ness and society grows, there is a need for making opaque ML models transparent and interpretable, especially in the light of fairness, bias, and discrimination. Nevertheless, interpreting complex opaque models is not trivial. Current interpretability approaches rely on local explanations or produce long explanations that tend to overload the user's cognitive abilities. In this paper, we address this problem by extracting interpretable, transparent models from opaque ones via a new readability-enhanced multi-objective Genetic Programming approach called REMO-GP. To achieve that, we adapt text readability metrics into model complexity proxies that support evaluating ML interpretability. We demonstrate that our approach can generate global interpretable models that mimic the decisions of complex opaque models over several datasets, while keeping model complexity low.

Schlüsselwörter
Artificial Intelligence; Opaque Models; Genetic Programming; Interpretability; Binary Classification



Publikationstyp
Forschungsartikel in Sammelband (Konferenz)

Begutachtet
Ja

Publikationsstatus
Veröffentlicht

Jahr
2022

Konferenz
2022 Symposium Series on Computational Intelligence (SSCI)

Konferenzort
Singapur

Buchtitel
Proceedings of the 2022 IEEE Symposium Series on Computational Intelligence (SSCI 2022), 4 – 7 December 2022, Singapore

Herausgeber
Ishibuchi, Hisao; Kwoh, Chee-Keong; Tan, Ah-Hwee; Srinivasan, Dipti; Miao, Chunyan; Trivedi, Anupam; Crockett, Keeley

Erste Seite
1691

Letzte Seite
1697

Verlag
IEEE

Ort
Singapur

Sprache
Englisch

ISBN
978-1-6654-8768-9

DOI