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AutoDropout: Learning Dropout Patterns to Regularize Deep Networks

2021-01-05Unverified0· sign in to hype

Hieu Pham, Quoc V. Le

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Abstract

Neural networks are often over-parameterized and hence benefit from aggressive regularization. Conventional regularization methods, such as Dropout or weight decay, do not leverage the structures of the network's inputs and hidden states. As a result, these conventional methods are less effective than methods that leverage the structures, such as SpatialDropout and DropBlock, which randomly drop the values at certain contiguous areas in the hidden states and setting them to zero. Although the locations of dropout areas random, the patterns of SpatialDropout and DropBlock are manually designed and fixed. Here we propose to learn the dropout patterns. In our method, a controller learns to generate a dropout pattern at every channel and layer of a target network, such as a ConvNet or a Transformer. The target network is then trained with the dropout pattern, and its resulting validation performance is used as a signal for the controller to learn from. We show that this method works well for both image recognition on CIFAR-10 and ImageNet, as well as language modeling on Penn Treebank and WikiText-2. The learned dropout patterns also transfers to different tasks and datasets, such as from language model on Penn Treebank to Engligh-French translation on WMT 2014. Our code will be available.

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
CIFAR-10WRN-28-10+AutoDropout+RandAugmentPercentage correct97.9Unverified
CIFAR-10AutoDropoutPercentage correct96.8Unverified
cifar-10,4000WRN-28-2 + UDA+AutoDropoutPercentage error4.2Unverified
ImageNetResNet-50+AutoDropout+RandAugmentTop 1 Accuracy80.3Unverified
ImageNet-10ResNet-50 + UDA+AutoDropoutTop 1 Accuracy72.9Unverified

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