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Attribution in Scale and Space

About

We study the attribution problem [28] for deep networks applied to perception tasks. For vision tasks, attribution techniques attribute the prediction of a network to the pixels of the input image. We propose a new technique called \emph{Blur Integrated Gradients}. This technique has several advantages over other methods. First, it can tell at what scale a network recognizes an object. It produces scores in the scale/frequency dimension, that we find captures interesting phenomena. Second, it satisfies the scale-space axioms [14], which imply that it employs perturbations that are free of artifact. We therefore produce explanations that are cleaner and consistent with the operation of deep networks. Third, it eliminates the need for a 'baseline' parameter for Integrated Gradients [31] for perception tasks. This is desirable because the choice of baseline has a significant effect on the explanations. We compare the proposed technique against previous techniques and demonstrate application on three tasks: ImageNet object recognition, Diabetic Retinopathy prediction, and AudioSet audio event identification.

Shawn Xu, Subhashini Venugopalan, Mukund Sundararajan• 2020

Related benchmarks

TaskDatasetResultRank
Image ClassificationMNIST (test)
Accuracy91.57
882
Image ClassificationSVHN (test)
Accuracy65.04
362
Feature Attribution EvaluationImageNet standard (val)
AUC66.9
39
Attribution Quality EvaluationImageNet (val)
SIC AUC0.56
30
Uncertainty AttributionCIFAR-10
MURR0.971
16
Uncertainty AttributionCIFAR-100
MURR0.318
16
Uncertainty AttributionSVHN
MURR0.896
16
Uncertainty AttributionMNIST
MURR0.515
16
Feature Attribution EvaluationDiabetic Retinopathy (DR) 165 sample images (val)
AUC83.3
13
Feature Attribution EvaluationOpen Images 5000 random images (val)
AUC0.619
13
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