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Prediction via Shapley Value Regression

Abstract

Shapley values have several desirable, theoretically well-supported, properties for explaining black-box model predictions. Traditionally, Shapley values are computed post-hoc, leading to additional computational cost at inference time. To overcome this, a novel method, called ViaSHAP, is proposed, that learns a function to compute Shapley values, from which the predictions can be derived directly by summation. Two approaches to implement the proposed method are explored; one based on the universal approximation theorem and the other on the Kolmogorov-Arnold representation theorem. Results from a large-scale empirical investigation are presented, showing that ViaSHAP using Kolmogorov-Arnold Networks performs on par with state-of-the-art algorithms for tabular data. It is also shown that the explanations of ViaSHAP are significantly more accurate than the popular approximator FastSHAP on both tabular data and images.

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@article{alkhatib2025_2505.04775,
  title={ Prediction via Shapley Value Regression },
  author={ Amr Alkhatib and Roman Bresson and Henrik Boström and Michalis Vazirgiannis },
  journal={arXiv preprint arXiv:2505.04775},
  year={ 2025 }
}
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