LGNEMLApr 17, 2019

Sparseout: Controlling Sparsity in Deep Networks

arXiv:1904.08050v110 citationsHas Code
AI Analysis

This work provides a tool for investigating sparsity in deep learning models, but it is incremental as it builds on Dropout without major paradigm shifts.

The authors tackled the problem of controlling sparsity in deep neural networks, which is not addressed by Dropout, by proposing Sparseout, a variant that explicitly regulates activation sparsity; they demonstrated that sparsity improves language modeling performance while image classification benefits from denser activations.

Dropout is commonly used to help reduce overfitting in deep neural networks. Sparsity is a potentially important property of neural networks, but is not explicitly controlled by Dropout-based regularization. In this work, we propose Sparseout a simple and efficient variant of Dropout that can be used to control the sparsity of the activations in a neural network. We theoretically prove that Sparseout is equivalent to an $L_q$ penalty on the features of a generalized linear model and that Dropout is a special case of Sparseout for neural networks. We empirically demonstrate that Sparseout is computationally inexpensive and is able to control the desired level of sparsity in the activations. We evaluated Sparseout on image classification and language modelling tasks to see the effect of sparsity on these tasks. We found that sparsity of the activations is favorable for language modelling performance while image classification benefits from denser activations. Sparseout provides a way to investigate sparsity in state-of-the-art deep learning models. Source code for Sparseout could be found at \url{https://github.com/najeebkhan/sparseout}.

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