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MBLDA: A novel multiple between-class linear discriminant analysis

机译:MBLDA:一种新颖的多元类间线性判别分析

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Linear discriminant analysis (LDA) with its extensions is a group of classical methods in dimensionality reduction for supervised learning. However, when some classes are far away from the others, it may be difficult to find the optimal direction by LDA because of the average between-class scatter. Moreover, LDAs are always time consuming for high dimensional problem since the involved generalized eigenvalue problem is needed to be solved. In this paper, a multiple between-class linear discriminant analysis (MBLDA) is proposed for dimensionality reduction. MBLDA finds the transformation directions by approximating the solution to a min-max programming problem, leading to well separability in the reduced space with a fast learning speed on the high-dimensional problem. It is proved theoretically that the proposed method can deal with the special generalized eigenvalue problem by solving a underdetermined homogeneous system of linear equations. Experimental results on the artificial and benchmark datasets show that MBLDA can not only reduce the dimension to a powerful linear discriminant level but also have a fast learning speed. (C) 2016 Elsevier Inc. All rights reserved.
机译:线性判别分析(LDA)及其扩展是一组用于监督学习的降维经典方法。但是,当某些类别与其他类别相距较远时,由于平均类别间散布,可能难以通过LDA找到最佳方向。此外,由于需要解决所涉及的广义特征值问题,因此LDA对于高维问题总是很耗时。本文提出了一种多元类间线性判别分析(MBLDA)来降低维数。 MBLDA通过逼近最小-最大编程问题的解决方案来找到变换方向,从而在缩小的空间中实现良好的可分离性,并且对高维问题的学习速度很快。从理论上证明,该方法可以通过求解欠定的线性方程组来解决特殊的广义特征值问题。在人工和基准数据集上的实验结果表明,MBLDA不仅可以将维数减小到强大的线性判别水平,而且具有很快的学习速度。 (C)2016 Elsevier Inc.保留所有权利。

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