Layer-wise Relevance Propagation for Neural Networks with Local Renormalization Layers
April 04, 2016 Β· Declared Dead Β· π International Conference on Artificial Neural Networks
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Authors
Alexander Binder, GrΓ©goire Montavon, Sebastian Bach, Klaus-Robert MΓΌller, Wojciech Samek
arXiv ID
1604.00825
Category
cs.CV: Computer Vision
Citations
524
Venue
International Conference on Artificial Neural Networks
Last Checked
3 months ago
Abstract
Layer-wise relevance propagation is a framework which allows to decompose the prediction of a deep neural network computed over a sample, e.g. an image, down to relevance scores for the single input dimensions of the sample such as subpixels of an image. While this approach can be applied directly to generalized linear mappings, product type non-linearities are not covered. This paper proposes an approach to extend layer-wise relevance propagation to neural networks with local renormalization layers, which is a very common product-type non-linearity in convolutional neural networks. We evaluate the proposed method for local renormalization layers on the CIFAR-10, Imagenet and MIT Places datasets.
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