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Scaling cut criterion-based discriminant analysis for supervised dimension reduction

机译:基于比例尺切割准则的判别分析

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摘要

Dimension reduction has always been a major problem in many applications of machine learning and pattern recognition. In this paper, the scaling cut criterion-based supervised dimension reduction methods for data analysis are proposed. The scaling cut criterion can eliminate the limit of the hypothesis that data distribution of each class is homoscedastic Gaussian. To obtain a more reasonable mapping matrix and reduce the computational complexity, local scaling cut criterion-based dimension reduction is raised, which utilized the localization strategy of the input data. The localized -nearest neighbor graph is introduced , which relaxes the within-class variance and enlarges the between-class margin. Moreover, by kernelizing the scaling cut criterion and local scaling cut criterion, both methods are extended to efficiently model the nonlinear variability of the data. Furthermore, the optimal dimension scaling cut criterion is proposed, which can automatically select the optimal dimension for the dimension reduction methods. The approaches have been tested on several datasets, and the results have shown a better and efficient performance compared with other linear and nonlinear dimension reduction techniques.
机译:降维一直是机器学习和模式识别的许多应用中的主要问题。本文提出了一种基于尺度削减准则的监督降维方法进行数据分析。比例削减准则可以消除以下假设的局限性:每个类别的数据分布都是同调高斯分布。为了获得更合理的映射矩阵并降低计算复杂度,提出了基于局部比例尺切割准则的降维方法,该方法利用了输入数据的定位策略。引入了局部最近邻图,它放宽了类内方差并扩大了类间余量。此外,通过对缩放比例尺准则和局部缩放比例尺准则进行核化,两种方法都得到了扩展,可以有效地对数据的非线性变化进行建模。此外,提出了最佳尺寸比例尺切割准则,该准则可以为尺寸缩减方法自动选择最佳尺寸。该方法已在多个数据集上进行了测试,与其他线性和非线性降维技术相比,结果显示出更好,更有效的性能。

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