Evaluating the visualization of what a Deep Neural Network has learned
September 21, 2015 Β· Declared Dead Β· π IEEE Transactions on Neural Networks and Learning Systems
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Authors
Wojciech Samek, Alexander Binder, GrΓ©goire Montavon, Sebastian Bach, Klaus-Robert MΓΌller
arXiv ID
1509.06321
Category
cs.CV: Computer Vision
Citations
1.3K
Venue
IEEE Transactions on Neural Networks and Learning Systems
Last Checked
3 months ago
Abstract
Deep Neural Networks (DNNs) have demonstrated impressive performance in complex machine learning tasks such as image classification or speech recognition. However, due to their multi-layer nonlinear structure, they are not transparent, i.e., it is hard to grasp what makes them arrive at a particular classification or recognition decision given a new unseen data sample. Recently, several approaches have been proposed enabling one to understand and interpret the reasoning embodied in a DNN for a single test image. These methods quantify the ''importance'' of individual pixels wrt the classification decision and allow a visualization in terms of a heatmap in pixel/input space. While the usefulness of heatmaps can be judged subjectively by a human, an objective quality measure is missing. In this paper we present a general methodology based on region perturbation for evaluating ordered collections of pixels such as heatmaps. We compare heatmaps computed by three different methods on the SUN397, ILSVRC2012 and MIT Places data sets. Our main result is that the recently proposed Layer-wise Relevance Propagation (LRP) algorithm qualitatively and quantitatively provides a better explanation of what made a DNN arrive at a particular classification decision than the sensitivity-based approach or the deconvolution method. We provide theoretical arguments to explain this result and discuss its practical implications. Finally, we investigate the use of heatmaps for unsupervised assessment of neural network performance.
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