Litcius/Paper detail

Explaining a series of models by propagating Shapley values

Hugh Chen, Scott Lundberg, Su‐In Lee

2022Nature Communications242 citationsDOIOpen Access PDF

Abstract

Local feature attribution methods are increasingly used to explain complex machine learning models. However, current methods are limited because they are extremely expensive to compute or are not capable of explaining a distributed series of models where each model is owned by a separate institution. The latter is particularly important because it often arises in finance where explanations are mandated. Here, we present Generalized DeepSHAP (G-DeepSHAP), a tractable method to propagate local feature attributions through complex series of models based on a connection to the Shapley value. We evaluate G-DeepSHAP across biological, health, and financial datasets to show that it provides equally salient explanations an order of magnitude faster than existing model-agnostic attribution techniques and demonstrate its use in an important distributed series of models setting.

Topics & Concepts

SalientShapley valueComputer scienceSeries (stratigraphy)AttributionFeature (linguistics)Machine learningEconometricsArtificial intelligenceData miningMathematical economicsGame theoryMathematicsPsychologyBiologyLinguisticsPhilosophyPaleontologySocial psychologyExplainable Artificial Intelligence (XAI)Machine Learning in HealthcareMachine Learning and Data Classification