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ProtoVAE: A Trustworthy Self-Explainable Prototypical Variational Model

Authors :
Gautam, Srishti
Boubekki, Ahcene
Hansen, Stine
Salahuddin, Suaiba Amina
Jenssen, Robert
Höhne, Marina MC
Kampffmeyer, Michael
Publication Year :
2022

Abstract

The need for interpretable models has fostered the development of self-explainable classifiers. Prior approaches are either based on multi-stage optimization schemes, impacting the predictive performance of the model, or produce explanations that are not transparent, trustworthy or do not capture the diversity of the data. To address these shortcomings, we propose ProtoVAE, a variational autoencoder-based framework that learns class-specific prototypes in an end-to-end manner and enforces trustworthiness and diversity by regularizing the representation space and introducing an orthonormality constraint. Finally, the model is designed to be transparent by directly incorporating the prototypes into the decision process. Extensive comparisons with previous self-explainable approaches demonstrate the superiority of ProtoVAE, highlighting its ability to generate trustworthy and diverse explanations, while not degrading predictive performance.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.08151
Document Type :
Working Paper