Explaining Models by Propagating Shapley Values of Local Components

November 27, 2019 ยท Declared Dead ยท ๐Ÿ› Explainable AI in Healthcare and Medicine

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Authors Hugh Chen, Scott Lundberg, Su-In Lee arXiv ID 1911.11888 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 129 Venue Explainable AI in Healthcare and Medicine Last Checked 4 months ago
Abstract
In healthcare, making the best possible predictions with complex models (e.g., neural networks, ensembles/stacks of different models) can impact patient welfare. In order to make these complex models explainable, we present DeepSHAP for mixed model types, a framework for layer wise propagation of Shapley values that builds upon DeepLIFT (an existing approach for explaining neural networks). We show that in addition to being able to explain neural networks, this new framework naturally enables attributions for stacks of mixed models (e.g., neural network feature extractor into a tree model) as well as attributions of the loss. Finally, we theoretically justify a method for obtaining attributions with respect to a background distribution (under a Shapley value framework).
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