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Improving Deep Learning Accuracy with Noisy Autoencoders Embedded Perturbative Layers

机译:带有噪声的自动编码器嵌入式摄动层可提高深度学习的准确性

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Autoencoder has been successfully used as an unsupervised learning framework to learn some useful representations in deep learning tasks. Based on it, a wide variety of regularization techniques have been proposed such as early stopping, weight decay and contraction. This paper presents a new training principle for autoencoder based on denoising autoencoder and dropout training method. We extend denoising autoencoder by both partial corruption of the input pattern and adding noise to its hidden units. This kind of noisy autoencoder can be stacked to initialize deep learning architectures. Moreover, we show that in the full noisy network the activations of hidden units are sparser. Furthermore, the method significantly improves learning accuracy when conducting classification experiments on benchmark data sets.
机译:自动编码器已成功用作无监督学习框架,以学习深度学习任务中的一些有用表示形式。在此基础上,提出了多种正则化技术,例如早期停止,体重减轻和收缩。本文提出了一种基于去噪自动编码器和丢包训练方法的自动编码器训练新原理。我们通过对输入模式的部分破坏以及向其隐藏单元添加噪声来扩展去噪自动编码器。这种嘈杂的自动编码器可以堆叠起来以初始化深度学习架构。此外,我们表明,在全噪声网络中,隐藏单元的激活是稀疏的。此外,当在基准数据集上进行分类实验时,该方法显着提高了学习准确性。

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