PredDiff: Explanations and interactions from conditional expectations

作者:

摘要

PredDiff is a model-agnostic, local attribution method that is firmly rooted in probability theory. Its simple intuition is to measure prediction changes while marginalizing features. In this work, we clarify properties of PredDiff and its close connection to Shapley values. We stress important differences between classification and regression, which require a specific treatment within both formalisms. We extend PredDiff by introducing a new, well-founded measure for interaction effects between arbitrary feature subsets. The study of interaction effects represents an inevitable step towards a comprehensive understanding of black-box models and is particularly important for science applications. Equipped with our novel interaction measure, PredDiff is a promising model-agnostic approach for obtaining reliable, numerically inexpensive and theoretically sound attributions.

论文关键词:Explainable AI,Interactions,Feature attribution,Interpretability,Shapley values

论文评审过程:Received 15 October 2021, Revised 19 July 2022, Accepted 10 August 2022, Available online 12 August 2022, Version of Record 28 August 2022.

论文官网地址:https://doi.org/10.1016/j.artint.2022.103774