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Main Authors: Liang, Geyu, Michielssen, Senne, Fattahi, Salar
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2502.06775
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author Liang, Geyu
Michielssen, Senne
Fattahi, Salar
author_facet Liang, Geyu
Michielssen, Senne
Fattahi, Salar
contents The trade-off between accuracy and interpretability has long been a challenge in machine learning (ML). This tension is particularly significant for emerging interpretable-by-design methods, which aim to redesign ML algorithms for trustworthy interpretability but often sacrifice accuracy in the process. In this paper, we address this gap by investigating the impact of deviations in concept representations-an essential component of interpretable models-on prediction performance and propose a novel framework to mitigate these effects. The framework builds on the principle of optimizing concept embeddings under constraints that preserve interpretability. Using a generative model as a test-bed, we rigorously prove that our algorithm achieves zero loss while progressively enhancing the interpretability of the resulting model. Additionally, we evaluate the practical performance of our proposed framework in generating explainable predictions for image classification tasks across various benchmarks. Compared to existing explainable methods, our approach not only improves prediction accuracy while preserving model interpretability across various large-scale benchmarks but also achieves this with significantly lower computational cost.
format Preprint
id arxiv_https___arxiv_org_abs_2502_06775
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Enhancing Performance of Explainable AI Models with Constrained Concept Refinement
Liang, Geyu
Michielssen, Senne
Fattahi, Salar
Machine Learning
The trade-off between accuracy and interpretability has long been a challenge in machine learning (ML). This tension is particularly significant for emerging interpretable-by-design methods, which aim to redesign ML algorithms for trustworthy interpretability but often sacrifice accuracy in the process. In this paper, we address this gap by investigating the impact of deviations in concept representations-an essential component of interpretable models-on prediction performance and propose a novel framework to mitigate these effects. The framework builds on the principle of optimizing concept embeddings under constraints that preserve interpretability. Using a generative model as a test-bed, we rigorously prove that our algorithm achieves zero loss while progressively enhancing the interpretability of the resulting model. Additionally, we evaluate the practical performance of our proposed framework in generating explainable predictions for image classification tasks across various benchmarks. Compared to existing explainable methods, our approach not only improves prediction accuracy while preserving model interpretability across various large-scale benchmarks but also achieves this with significantly lower computational cost.
title Enhancing Performance of Explainable AI Models with Constrained Concept Refinement
topic Machine Learning
url https://arxiv.org/abs/2502.06775