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arxiv: 2106.09526 · v3 · pith:ZUXAG63J · submitted 2021-06-17 · cs.LG · cs.AI

Exploring the Properties and Evolution of Neural Network Eigenspaces during Training

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classification cs.LG cs.AI
keywords neuralsaturationciteduringfeaturespacenetworknetworkspatterns
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In this work we explore the information processing inside neural networks using logistic regression probes \cite{probes} and the saturation metric \cite{featurespace_saturation}. We show that problem difficulty and neural network capacity affect the predictive performance in an antagonistic manner, opening the possibility of detecting over- and under-parameterization of neural networks for a given task. We further show that the observed effects are independent from previously reported pathological patterns like the ``tail pattern'' described in \cite{featurespace_saturation}. Finally we are able to show that saturation patterns converge early during training, allowing for a quicker cycle time during analysis

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