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Improving deep convolutional neural networks with mixed maxout units

机译:使用混合maxout单元改进深度卷积神经网络

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摘要

Motivated by insights from the maxout-units-based deep Convolutional Neural Network (CNN) that “non-maximal features are unable to deliver” and “feature mapping subspace pooling is insufficient,” we present a novel mixed variant of the recently introduced maxout unit called a mixout unit. Specifically, we do so by calculating the exponential probabilities of feature mappings gained by applying different convolutional transformations over the same input and then calculating the expected values according to their exponential probabilities. Moreover, we introduce the Bernoulli distribution to balance the maximum values with the expected values of the feature mappings subspace. Finally, we design a simple model to verify the pooling ability of mixout units and a Mixout-units-based Network-in-Network (NiN) model to analyze the feature learning ability of the mixout models. We argue that our proposed units improve the pooling ability and that mixout models can achieve better feature learning and classification performance.
机译:基于基于maxout-units的深度卷积神经网络(CNN)的见解,我们发现“非最大特征无法传递”和“特征映射子空间池不足”,我们提出了最近引入的maxout单元的新型混合形式称为混合单元。具体而言,我们通过计算特征映射的指数概率,这些特征映射是通过在相同输入上应用不同的卷积变换而获得的,然后根据它们的指数概率来计算期望值。此外,我们引入了伯努利分布,以使最大值与特征映射子空间的期望值保持平衡。最后,我们设计了一个简单的模型来验证混合单元的合并能力,并设计了一个基于混合单元的网络中网络(NiN)模型来分析混合模型的特征学习能力。我们认为,我们提出的单元可以提高合并能力,并且混合模型可以实现更好的特征学习和分类性能。

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