使用自动编码器,以方便信息保留数据降维

Cheng-Yu Chen, Jenq-Shiou Leu, S. W. Prakosa
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引用次数: 4

摘要

由于互联网的发展,大量不同的数据迅速出现。当收集数据的技术成熟时,特征的数量也会增加。观察不同的数据通常不是一件容易的事情,因为它需要一些与数据预处理相关的背景知识。因此,降维(DR)成为一种常见的减少特征数量并保留关键信息的方法。然而,在降维处理过程中,信息的丢失是不可避免的。当目标尺寸远低于原尺寸时,损耗过高,难以承受。为了解决这个问题,我们使用自编码器的编码器结构与一些常见的降维方法进行比较。我们使用最简单的自编码器结构作为支持向量机(SVM)的预处理来查看结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using autoencoder to facilitate information retention for data dimension reduction
Due to the development of internet, plentiful different data appear rapidly. The amounts of features also increase when the technique for collecting data becomes mature. Observation of different data is usually not an easy task because it needs some background related to data pre-processing. Therefore, dimensionality reduction (DR) becomes a familiar method to reduce the amount of features and keep the critical information. However, the loss of information during the processing of dimensionality reduction is unavoidable. When the targeted dimension is far lower than original dimension, the loss is too high to be endurable. To solve this problem, we use the encoder structure from autoencoder to compare to some common dimensionality reduction methods. We use the simplest autoencoder structure as the preprocessing of Support Vector Machine (SVM) to see the result.
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