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Beyond Shapley Values: Cooperative Games for the Interpretation of Machine Learning Models

Beyond Shapley Values: Cooperative Games for the Interpretation of Machine Learning Models

来源:Arxiv_logoArxiv
英文摘要

Cooperative game theory has become a cornerstone of post-hoc interpretability in machine learning, largely through the use of Shapley values. Yet, despite their widespread adoption, Shapley-based methods often rest on axiomatic justifications whose relevance to feature attribution remains debatable. In this paper, we revisit cooperative game theory from an interpretability perspective and argue for a broader and more principled use of its tools. We highlight two general families of efficient allocations, the Weber and Harsanyi sets, that extend beyond Shapley values and offer richer interpretative flexibility. We present an accessible overview of these allocation schemes, clarify the distinction between value functions and aggregation rules, and introduce a three-step blueprint for constructing reliable and theoretically-grounded feature attributions. Our goal is to move beyond fixed axioms and provide the XAI community with a coherent framework to design attribution methods that are both meaningful and robust to shifting methodological trends.

Marouane Il Idrissi、Agathe Fernandes Machado、Arthur Charpentier

计算技术、计算机技术

Marouane Il Idrissi,Agathe Fernandes Machado,Arthur Charpentier.Beyond Shapley Values: Cooperative Games for the Interpretation of Machine Learning Models[EB/OL].(2025-06-16)[2025-07-16].https://arxiv.org/abs/2506.13900.点此复制

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