3.8 Proceedings Paper

Fair and Efficient Alternatives to Shapley-based Attribution Methods

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SPRINGER INTERNATIONAL PUBLISHING AG
DOI: 10.1007/978-3-031-26387-3_19

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Machine learning interpretability; XAI; Local interpretability; Attribution method

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The interpretability of predictive machine learning models is crucial for applications where end-users need to understand the decisions made. A new attribution method called FESP is introduced as an alternative to the popular Shapley value. Results show that FESP and ES produce better attribution maps compared to existing approaches in image and text classification settings.
Interpretability of predictive machine learning models is critical for numerous application contexts that require decisions to be understood by end-users. It can be studied through the lens of local explainability and attribution methods that focus on explaining a specific decision made by a model for a given input, by evaluating the contribution of input features to the results, e.g. probability assigned to a class. Many attribution methods rely on a game-theoretic formulation of the attribution problem based on an approximation of the popular Shapley value, even if the underlying rationale motivating the use of this specific value is today questioned. In this paper we introduce the FESP - Fair-Efficient-Symmetric-Perturbation - attribution method as an alternative approach sharing relevant axiomatic properties with the Shapley value, and the Equal Surplus value (ES) commonly applied in cooperative games. Our results show that FESP and ES produce better attribution maps compared to state-of-the-art approaches in image and text classification settings.

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