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The intriguing role of module criticality in the generalization of deep networks

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arxiv 1912.00528 v3 pith:U3G35WIQ submitted 2019-12-02 cs.LG stat.ML

The intriguing role of module criticality in the generalization of deep networks

classification cs.LG stat.ML
keywords modulecriticalitygeneralizationdeepmeasuremodulesnetworksothers
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We study the phenomenon that some modules of deep neural networks (DNNs) are more critical than others. Meaning that rewinding their parameter values back to initialization, while keeping other modules fixed at the trained parameters, results in a large drop in the network's performance. Our analysis reveals interesting properties of the loss landscape which leads us to propose a complexity measure, called module criticality, based on the shape of the valleys that connects the initial and final values of the module parameters. We formulate how generalization relates to the module criticality, and show that this measure is able to explain the superior generalization performance of some architectures over others, whereas earlier measures fail to do so.

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