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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Complete large margin linear discriminant analysis using mathematical programming approach
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Complete large margin linear discriminant analysis using mathematical programming approach

机译:使用数学编程方法完成大幅度线性判别分析

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摘要

In this paper, we develop a novel dimensionality reduction (DR) framework coined complete large margin linear discriminant analysis (CLMLDA). Inspired by several recently proposed DR methods, CLMLDA constructs two mathematical programming models by maximizing the minimum distance between each class center and the total class center respectively in the null space of within-class scatter matrix and its orthogonal complementary space. In this way, CLMLDA not only makes full use of the discriminative information contained in the whole feature space but also overcome the weakness of linear discriminant analysis (LDA) in dealing with the class separation problem. The solutions of CLMLDA follow from solving two nonconvex optimization problems, each of which is transformed to a series of convex quadratic programming problems by using the constrained concave-convex procedure first, and then solved by off-the-shelf optimization toolbox. Experiments on both toy and several publicly available databases demonstrate its feasibility and effectiveness.
机译:在本文中,我们开发了一种新颖的降维(DR)框架,该框架包含了完整的大余量线性判别分析(CLMLDA)。受最近提出的几种DR方法的启发,CLMLDA通过最大化类内散布矩阵的零空间及其正交互补空间中每个类中心与总类中心之间的最小距离,构造了两个数学编程模型。这样,CLMLDA不仅充分利用了整个特征空间中包含的判别信息,而且克服了线性判别分析(LDA)在处理类分离问题方面的弱点。 CLMLDA的解决方案源于解决两个非凸优化问题,首先通过使用约束凸-凸过程将每个非凸优化问题转换为一系列凸二次规划问题,然后再通过现成的优化工具箱进行求解。在玩具和几个公共数据库上进行的实验证明了其可行性和有效性。

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