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XRAI: Better Attributions Through Regions

XRAI, an integrated gradients-based region attribution method, enhances deep neural network interpretability with superior results compared to other saliency methods, validated by Performance Information Curves and an axiom-based sanity check.

Year
2019
Venue
xrai-better-attributions-through-regions
Authors
4
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arxiv.org/abs/1906.02825v2ARXIV-DEFAULT
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Abstract

Saliency methods can aid understanding of deep neural networks. Recent years have witnessed many improvements to saliency methods, as well as new ways for evaluating them. In this paper, we 1) present a novel region-based attribution method, XRAI, that builds upon integrated gradients (Sundararajan et al. 2017), 2) introduce evaluation methods for empirically assessing the quality of image-based saliency maps (Performance Information Curves (PICs)), and 3) contribute an axiom-based sanity check for attribution methods. Through empirical experiments and example results, we show that XRAI produces better results than other saliency methods for common models and the ImageNet dataset.

Authors

4