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Improving the Capacity of Very Deep Networks with Maxout Units

机译:提高具有Maxout单位的非常深网络的容量

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Deep neural networks inherently have large representational power for approximating complex target functions. However, models based on rectified linear units can suffer reduction in representation capacity due to dead units. Moreover, approximating very deep networks trained with dropout at test time can be more inexact due to the several layers of nonlinearities. To address the aforementioned problems, we propose to learn the activation functions of hidden units for very deep networks via maxout. However, maxout units increase the model parameters, and therefore model may suffer from overfitting; we alleviate this problem by employing elastic net regularization. In this paper, we propose very deep networks with maxout units and elastic net regularization and show that the features learned are quite linearly separable. We perform extensive experiments and reach state-of-the-art results on the USPS and MNIST datasets. Particularly, we reach an error rate of 2.19% on the USPS dataset, surpassing the human performance error rate of 2.5% and all previously reported results, including those that employed training data augmentation. On the MNIST dataset, we reach an error rate of 0.36% which is competitive with the state-of-the-art results.
机译:深度神经网络固有地具有大的代表性,用于近似复杂的目标功能。然而,基于整流线性单元的模型可能由于死亡单元而遭受表示容量的降低。此外,由于若干层的非线性,在测试时间越差地逼近的非常深网络近似。为了解决上述问题,我们建议通过Maxout学习隐藏单位的激活功能。但是,Maxout单位增加了模型参数,因此模型可能会受到过度拟合;我们通过采用弹性净正规化来减轻这个问题。在本文中,我们提出了具有颤扬单位的非常深的网络和弹性净正规化,并表明所学到的特征非常线性可分离。我们对USPS和MNIST数据集进行了广泛的实验并达到最先进的结果。特别是,我们在USPS数据集中达到2.19%的错误率,超过人类性能错误率为2.5%,所有先前报告的结果,包括那些雇用培训数据增强的结果。在Mnist DataSet上,我们达到0.36%的错误率,这与最先进的结果具有竞争力。

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