A Benchmark for Interpretability Methods in Deep Neural Networks
Machine Learning
2019-11-06 v3 Artificial Intelligence
Machine Learning
Abstract
We propose an empirical measure of the approximate accuracy of feature importance estimates in deep neural networks. Our results across several large-scale image classification datasets show that many popular interpretability methods produce estimates of feature importance that are not better than a random designation of feature importance. Only certain ensemble based approaches---VarGrad and SmoothGrad-Squared---outperform such a random assignment of importance. The manner of ensembling remains critical, we show that some approaches do no better then the underlying method but carry a far higher computational burden.
Cite
@article{arxiv.1806.10758,
title = {A Benchmark for Interpretability Methods in Deep Neural Networks},
author = {Sara Hooker and Dumitru Erhan and Pieter-Jan Kindermans and Been Kim},
journal= {arXiv preprint arXiv:1806.10758},
year = {2019}
}
Comments
In NeurIPS 2019