A scalable two-stage approach for a class of dimensionality reduction techniques

Liang Sun, Betul Ceran, Jieping Ye
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引用次数: 42

Abstract

Dimensionality reduction plays an important role in many data mining applications involving high-dimensional data. Many existing dimensionality reduction techniques can be formulated as a generalized eigenvalue problem, which does not scale to large-size problems. Prior work transforms the generalized eigenvalue problem into an equivalent least squares formulation, which can then be solved efficiently. However, the equivalence relationship only holds under certain assumptions without regularization, which severely limits their applicability in practice. In this paper, an efficient two-stage approach is proposed to solve a class of dimensionality reduction techniques, including Canonical Correlation Analysis, Orthonormal Partial Least Squares, linear Discriminant Analysis, and Hypergraph Spectral Learning. The proposed two-stage approach scales linearly in terms of both the sample size and data dimensionality. The main contributions of this paper include (1) we rigorously establish the equivalence relationship between the proposed two-stage approach and the original formulation without any assumption; and (2) we show that the equivalence relationship still holds in the regularization setting. We have conducted extensive experiments using both synthetic and real-world data sets. Our experimental results confirm the equivalence relationship established in this paper. Results also demonstrate the scalability of the proposed two-stage approach.
一类降维技术的可扩展两阶段方法
降维在许多涉及高维数据的数据挖掘应用中起着重要的作用。现有的许多降维技术都可以归结为一个广义特征值问题,而不适用于大尺度问题。先前的工作将广义特征值问题转化为等效的最小二乘公式,从而可以有效地求解。然而,等价关系仅在一定的假设条件下成立,没有进行正则化,严重限制了其在实际应用中的适用性。本文提出了一种有效的两阶段方法来解决一类降维技术,包括典型相关分析、标准正交偏最小二乘、线性判别分析和超图谱学习。所提出的两阶段方法在样本量和数据维数方面呈线性扩展。本文的主要贡献包括:(1)在没有任何假设的情况下,严格地建立了所提出的两阶段方法与原公式之间的等价关系;(2)我们证明了等价关系在正则化设置下仍然成立。我们使用合成数据集和真实数据集进行了广泛的实验。实验结果证实了本文建立的等效关系。结果还证明了所提出的两阶段方法的可扩展性。
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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