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arxiv: 1512.01400 · v1 · pith:JN5ZRI3Ynew · submitted 2015-12-04 · 💻 cs.LG · cs.CV· cs.NE

Max-Pooling Dropout for Regularization of Convolutional Neural Networks

classification 💻 cs.LG cs.CVcs.NE
keywords dropoutpoolingmax-poolingconvolutionaldeeplayersmultinomialnetworks
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Recently, dropout has seen increasing use in deep learning. For deep convolutional neural networks, dropout is known to work well in fully-connected layers. However, its effect in pooling layers is still not clear. This paper demonstrates that max-pooling dropout is equivalent to randomly picking activation based on a multinomial distribution at training time. In light of this insight, we advocate employing our proposed probabilistic weighted pooling, instead of commonly used max-pooling, to act as model averaging at test time. Empirical evidence validates the superiority of probabilistic weighted pooling. We also compare max-pooling dropout and stochastic pooling, both of which introduce stochasticity based on multinomial distributions at pooling stage.

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