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  4. Understanding integrated gradients with SmoothTaylor for deep neural network attribution
 
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2021
Conference Paper
Titel

Understanding integrated gradients with SmoothTaylor for deep neural network attribution

Abstract
Integrated Gradients as an attribution method for deep neural network models offers simple implementability. However, it suffers from noisiness of explanations which affects the ease of interpretability. The SmoothGrad technique is proposed to solve the noisiness issue and smoothen the attribution maps of any gradient-based attribution method. In this paper, we present SmoothTaylor as a novel theoretical concept bridging Integrated Gradients and SmoothGrad, from the Taylor's theorem perspective. We apply the methods to the image classification problem, using the ILSVRC2012 ImageNet object recognition dataset, and a couple of pretrained image models to generate attribution maps. These attribution maps are empirically evaluated using quantitative measures for sensitivity and noise level. We further propose adaptive noising to optimize for the noise scale hyperparameter value. From our experiments, we find that the SmoothTaylor approach together with adaptive noising is ab le to generate better quality saliency maps with lesser noise and higher sensitivity to the relevant points in the input space as compared to Integrated Gradients.
Author(s)
Goh, G.S.W.
Lapuschkin, S.
Weber, L.
Samek, W.
Binder, A.
Hauptwerk
ICPR 2020, 25th International Conference on Pattern Recognition. Proceedings
Konferenz
International Conference on Pattern Recognition (ICPR) 2021
Thumbnail Image
DOI
10.1109/ICPR48806.2021.9413242
Language
English
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Fraunhofer-Institut für Nachrichtentechnik, Heinrich-Hertz-Institut HHI
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