CVLGNEMLNov 28, 2019

Continuous Dropout

arXiv:1911.12675v175 citationsHas Code
Originality Incremental advance
AI Analysis

This work addresses overfitting in deep learning models for researchers and practitioners, offering an incremental improvement over existing dropout methods.

The paper tackles the problem of overfitting in deep networks by proposing continuous dropout, which extends traditional binary dropout to better mimic the continuous firing rates of neurons in the human brain. The result shows that continuous dropout performs better in preventing co-adaptation of feature detectors and improves test performance on datasets like MNIST, CIFAR-10, SVHN, NORB, and ILSVRC-12.

Dropout has been proven to be an effective algorithm for training robust deep networks because of its ability to prevent overfitting by avoiding the co-adaptation of feature detectors. Current explanations of dropout include bagging, naive Bayes, regularization, and sex in evolution. According to the activation patterns of neurons in the human brain, when faced with different situations, the firing rates of neurons are random and continuous, not binary as current dropout does. Inspired by this phenomenon, we extend the traditional binary dropout to continuous dropout. On the one hand, continuous dropout is considerably closer to the activation characteristics of neurons in the human brain than traditional binary dropout. On the other hand, we demonstrate that continuous dropout has the property of avoiding the co-adaptation of feature detectors, which suggests that we can extract more independent feature detectors for model averaging in the test stage. We introduce the proposed continuous dropout to a feedforward neural network and comprehensively compare it with binary dropout, adaptive dropout, and DropConnect on MNIST, CIFAR-10, SVHN, NORB, and ILSVRC-12. Thorough experiments demonstrate that our method performs better in preventing the co-adaptation of feature detectors and improves test performance. The code is available at: https://github.com/jasonustc/caffe-multigpu/tree/dropout.

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