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Empirical Comparison between Autoencoders and Traditional Dimensionality Reduction Methods

机译:自动编码器与传统降维方法之间的经验比较

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In order to process efficiently ever-higher dimensional data such as images, sentences, or audio recordings, one needs to find a proper way to reduce the dimensionality of such data. In this regard, SVD-based methods including PCA and Isomap have been extensively used. Recently, a neural network alternative called autoencoder has been proposed and is often preferred for its higher flexibility. This work aims to show that PCA is still a relevant technique for dimensionality reduction in the context of classification. To this purpose, we evaluated the performance of PCA compared to Isomap, a deep autoencoder, and a variational autoencoder. Experiments were conducted on three commonly used image datasets: MNIST, Fashion-MNIST, and CIFAR-10. The four different dimensionality reduction techniques were separately employed on each dataset to project data into a low-dimensional space. Then a k-NN classifier was trained on each projection with a cross-validated random search over the number of neighbours. Interestingly, our experiments revealed that k-NN achieved comparable accuracy on PCA and both autoencoders projections provided a big enough dimension. However, PCA computation time was two orders of magnitude faster than its neural network counterparts.
机译:为了有效地处理越来越高维度的数据,例如图像,句子或音频记录,人们需要找到一种适当的方法来降低此类数据的维度。在这方面,包括PCA和Isomap在内的基于SVD的方法已被广泛使用。近来,已经提出了一种称为自动编码器的神经网络替代方案,并且由于其较高的灵活性而经常被人们首选。这项工作旨在表明PCA仍然是分类中降维的一种相关技术。为此,我们评估了PCA与Isomap,深度自动编码器和可变自动编码器相比的性能。在三个常用的图像数据集上进行了实验:MNIST,Fashion-MNIST和CIFAR-10。在每个数据集上分别采用了四种不同的降维技术,以将数据投影到低维空间中。然后,通过对邻居数量进行交叉验证的随机搜索,在每个投影上训练k-NN分类器。有趣的是,我们的实验表明k-NN在PCA上达到了相当的精度,并且两个自动编码器的投影都提供了足够大的尺寸。但是,PCA的计算时间比其神经网络的计算时间快两个数量级。

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