2022
DOI: 10.48550/arxiv.2210.03069
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A Better Way to Decay: Proximal Gradient Training Algorithms for Neural Nets

Abstract: Weight decay is one of the most widely used forms of regularization in deep learning, and has been shown to improve generalization and robustness. The optimization objective driving weight decay is a sum of losses plus a term proportional to the sum of squared weights. This paper argues that stochastic gradient descent (SGD) may be an inefficient algorithm for this objective. For neural networks with ReLU activations, solutions to the weight decay objective are equivalent to those of a different objective in w… Show more

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