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arxiv 2006.08679 v5 pith:XYC6SQIJ submitted 2020-06-15 cs.LG cs.CVcs.NEstat.ML

Feature Space Saturation during Training

classification cs.LG cs.CVcs.NEstat.ML
keywords layernetworksaturationeigenspaceperformancedimensionduringinput
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose layer saturation - a simple, online-computable method for analyzing the information processing in neural networks. First, we show that a layer's output can be restricted to the eigenspace of its variance matrix without performance loss. We propose a computationally lightweight method for approximating the variance matrix during training. From the dimension of its lossless eigenspace we derive layer saturation - the ratio between the eigenspace dimension and layer width. We show that saturation seems to indicate which layers contribute to network performance. We demonstrate how to alter layer saturation in a neural network by changing network depth, filter sizes and input resolution. Furthermore, we show that well-chosen input resolution increases network performance by distributing the inference process more evenly across the network.

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