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Robust Attribution Regularization

About

An emerging problem in trustworthy machine learning is to train models that produce robust interpretations for their predictions. We take a step towards solving this problem through the lens of axiomatic attribution of neural networks. Our theory is grounded in the recent work, Integrated Gradients (IG), in axiomatically attributing a neural network's output change to its input change. We propose training objectives in classic robust optimization models to achieve robust IG attributions. Our objectives give principled generalizations of previous objectives designed for robust predictions, and they naturally degenerate to classic soft-margin training for one-layer neural networks. We also generalize previous theory and prove that the objectives for different robust optimization models are closely related. Experiments demonstrate the effectiveness of our method, and also point to intriguing problems which hint at the need for better optimization techniques or better neural network architectures for robust attribution training.

Jiefeng Chen, Xi Wu, Vaibhav Rastogi, Yingyu Liang, Somesh Jha• 2019

Related benchmarks

TaskDatasetResultRank
Image ClassificationGTSRB
Natural Accuracy97.02
87
Domain GeneralizationVLCS (test)--
62
Attributional RobustnessCIFAR-10 (test)
Top-k Intersection78.7
13
Attribution RobustnessMNIST (test)
Top-K Intersection41.53
13
Attribution RobustnessFashion MNIST (test)
Top-K Intersection57.27
13
Domain GeneralizationTerra-Incognita (test)
Location 38 cAcc85.87
8
Image ClassificationVLCS Caltech101 LabelMe SUN09 VOC2007 OOD Cross-domain
Accuracy (Train: Caltech101, Test: LabelMe)26.65
6
Image ClassificationFlower
Attributional Robustness (IN)66.33
5
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