一种新的可扩展的监督子空间学习算法

Jun Yan, Ning Liu, Benyu Zhang, Qiang Yang, Shuicheng Yan, Zheng Chen
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引用次数: 11

摘要

子空间学习方法旨在发现高维数据在低维上的重要统计分布。主成分分析(PCA)等方法不能利用类信息,线性判别分析(LDA)不能有效地进行可扩展。在本文中,我们提出了一种新的高度可扩展的监督子空间学习算法,称为监督磅度量(SKM)。它分配的数据点尽可能接近其对应的类均值,同时在变换后的低维子空间中分配的数据点尽可能远离其他类均值。理论推导表明,该算法不受类数的限制,也不受LDA所面临的奇异性问题的限制。此外,我们的算法可以以增量方式执行,在这种方式中,随着数据流的接收,学习以在线方式完成。在多个数据集(包括一个非常大的文本数据集RCV1)上的实验结果表明,与PCA、LDA和一种流行的特征选择方法信息增益(information gain, IG)相比,我们提出的算法在分类问题上表现出色。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Scalable Algorithm for Supervised Subspace Learning
Subspace learning approaches aim to discover important statistical distribution on lower dimensions for high dimensional data. Methods such as principal component analysis (PCA) do not make use of the class information, and linear discriminant analysis (LDA) could not be performed efficiently in a scalable way. In this paper, we propose a novel highly scalable supervised subspace learning algorithm called as supervised Kampong measure (SKM). It assigns data points as close as possible to their corresponding class mean, simultaneously assigns data points to be as far as possible from the other class means in the transformed lower dimensional subspace. Theoretical derivation shows that our algorithm is not limited by the number of classes or the singularity problem faced by LDA. Furthermore, our algorithm can be executed in an incremental manner in which learning is done in an online fashion as data streams are received. Experimental results on several datasets, including a very large text data set RCV1, show the outstanding performance of our proposed algorithm on classification problems as compared to PCA, LDA and a popular feature selection approach, information gain (IG).
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