Demystifying sparse rectified auto-encoders

Kien Tran, H. Le
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Abstract

Auto-Encoders can learn features similar to Sparse Coding, but the training can be done efficiently via the back-propagation algorithm as well as the features can be computed quickly for a new input. However, in practice, it is not easy to get Sparse Auto-Encoders working; there are two things that need investigating: sparsity constraint and weight constraint. In this paper, we try to understand the problem of training Sparse Auto-Encoders with L1-norm sparsity penalty, and propose a modified version of Stochastic Gradient Descent algorithm, called Sleep-Wake Stochastic Gradient Descent (SW-SGD), to solve this problem. Here, we focus on Sparse Auto-Encoders with rectified linear units in the hidden layer, called Sparse Rectified Auto-Encoders (SRAEs), because such units compute fast and can produce true sparsity (exact zeros). In addition, we propose a new reasonable way to constrain SRAEs' weights. Experiments on MNIST dataset show that the proposed weight constraint and SW-SGD help SRAEs successfully learn meaningful features that give excellent performance on classification task compared to other Auto-Encoder variants.
揭开稀疏整流自编码器的神秘面纱
自编码器可以学习类似于稀疏编码的特征,但可以通过反向传播算法高效地完成训练,并且可以快速计算新输入的特征。然而,在实践中,稀疏自编码器并不容易工作;有两件事需要研究:稀疏性约束和权重约束。在本文中,我们试图理解具有l1范数稀疏性惩罚的稀疏自编码器的训练问题,并提出了一种改进版本的随机梯度下降算法,称为睡眠-觉醒随机梯度下降(SW-SGD)来解决这个问题。在这里,我们专注于在隐藏层中具有整流线性单元的稀疏自编码器,称为稀疏整流自编码器(SRAEs),因为这种单元计算速度快,并且可以产生真正的稀疏性(精确零)。此外,我们还提出了一种新的合理的约束srae权值的方法。在MNIST数据集上的实验表明,所提出的权重约束和SW-SGD帮助SRAEs成功学习有意义的特征,与其他Auto-Encoder变体相比,SRAEs在分类任务上表现出色。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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