LGMLAug 5, 2019

How Does Learning Rate Decay Help Modern Neural Networks?

arXiv:1908.01878v230 citations
AI Analysis

This provides an alternative explanation for a widely used technique in deep learning, which could inform better training strategies, though it is incremental as it builds on existing beliefs.

The paper tackles the problem of explaining why learning rate decay helps modern neural networks, finding that an initially large learning rate suppresses memorization of noisy data while decaying improves learning of complex patterns, validated on a constructed dataset and justified in real-world datasets.

Learning rate decay (lrDecay) is a \emph{de facto} technique for training modern neural networks. It starts with a large learning rate and then decays it multiple times. It is empirically observed to help both optimization and generalization. Common beliefs in how lrDecay works come from the optimization analysis of (Stochastic) Gradient Descent: 1) an initially large learning rate accelerates training or helps the network escape spurious local minima; 2) decaying the learning rate helps the network converge to a local minimum and avoid oscillation. Despite the popularity of these common beliefs, experiments suggest that they are insufficient in explaining the general effectiveness of lrDecay in training modern neural networks that are deep, wide, and nonconvex. We provide another novel explanation: an initially large learning rate suppresses the network from memorizing noisy data while decaying the learning rate improves the learning of complex patterns. The proposed explanation is validated on a carefully-constructed dataset with tractable pattern complexity. And its implication, that additional patterns learned in later stages of lrDecay are more complex and thus less transferable, is justified in real-world datasets. We believe that this alternative explanation will shed light into the design of better training strategies for modern neural networks.

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