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Stable and orthogonal local discriminant embedding using trace ratio criterion for dimensionality reduction

机译:使用迹线比率准则进行稳定和正交的局部判别嵌入以降低维数

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摘要

Stable orthogonal local discriminant embedding (SOLDE) is a recently proposed dimensionality reduction method, in which the similarity, diversity and interclass separability of the data samples are well utilized to obtain a set of orthogonal projection vectors. By combining multiple features of data, it outperforms many prevalent dimensionality reduction methods. However, the orthogonal projection vectors are obtained by a step-by-step procedure, which makes it computationally expensive. By generalizing the objective function of the SOLDE to a trace ratio problem, we propose a stable and orthogonal local discriminant embedding using trace ratio criterion (SOLDE-TR) for dimensionality reduction. An iterative procedure is provided to solve the trace ratio problem, due to which the SOLDE-TR method is always faster than the SOLDE. The projection vectors of the SOLDE-TR will always converge to a global solution, and the performances are always better than that of the SOLDE. Experimental results on two public image databases demonstrate the effectiveness and advantages of the proposed method.
机译:稳定的正交局部判别嵌入(SOLDE)是最近提出的降维方法,其中很好地利用了数据样本的相似性,多样性和类间可分离性来获得一组正交投影矢量。通过组合数据的多个特征,其性能优于许多流行的降维方法。但是,正交投影矢量是通过逐步过程获得的,这使得计算量大。通过将SOLDE的目标函数推广到痕量比问题,我们提出了使用痕量比标准(SOLDE-TR)进行稳定且正交的局部判别嵌入,以进行降维。提供了一个迭代过程来解决痕量比问题,因此,SOLDE-TR方法始终比SOLDE更快。 SOLDE-TR的投影矢量将始终收敛于全局解决方案,并且性能始终优于SOLDE。在两个公共图像数据库上的实验结果证明了该方法的有效性和优势。

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