2021
DOI: 10.48550/arxiv.2102.03773
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SeReNe: Sensitivity based Regularization of Neurons for Structured Sparsity in Neural Networks

Abstract: Deep neural networks include millions of learnable parameters, making their deployment over resource-constrained devices problematic. SeReNe (Sensitivity-based Regularization of Neurons) is a method for learning sparse topologies with a structure, exploiting neural sensitivity as a regularizer. We define the sensitivity of a neuron as the variation of the network output with respect to the variation of the activity of the neuron. The lower the sensitivity of a neuron, the less the network output is perturbed i… Show more

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