Contractive Rectifier Networks for Nonlinear Maximum Margin Classification

S. An, Munawar Hayat, S. H. Khan, Bennamoun, F. Boussaïd, Ferdous Sohel
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引用次数: 11

Abstract

To find the optimal nonlinear separating boundary with maximum margin in the input data space, this paper proposes Contractive Rectifier Networks (CRNs), wherein the hidden-layer transformations are restricted to be contraction mappings. The contractive constraints ensure that the achieved separating margin in the input space is larger than or equal to the separating margin in the output layer. The training of the proposed CRNs is formulated as a linear support vector machine (SVM) in the output layer, combined with two or more contractive hidden layers. Effective algorithms have been proposed to address the optimization challenges arising from contraction constraints. Experimental results on MNIST, CIFAR-10, CIFAR-100 and MIT-67 datasets demonstrate that the proposed contractive rectifier networks consistently outperform their conventional unconstrained rectifier network counterparts.
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非线性最大余量分类的收缩整流网络
为了在输入数据空间中寻找具有最大边界的最优非线性分离边界,本文提出了压缩整流网络(CRNs),其中隐藏层变换被限制为收缩映射。收缩约束确保在输入空间中实现的分离边界大于或等于输出层的分离边界。所提出的crn的训练被表述为输出层中的线性支持向量机(SVM),结合两个或多个收缩隐藏层。已经提出了有效的算法来解决由收缩约束引起的优化挑战。在MNIST、CIFAR-10、CIFAR-100和MIT-67数据集上的实验结果表明,所提出的收缩整流网络始终优于传统的无约束整流网络。
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