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Maximum Class Boundary Criterion for supervised dimensionality reduction

机译:监督降维的最大类别边界标准

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Participation of class-wise noisy patterns may mislead the selection process of relevant patterns for subspace projection. And modelling between-class scatter for each class using the patterns that are nearer to the corresponding class decision boundary may improve the quality of feature generation. In this manuscript, a novel dimensionality reduction method, named Maximum Class Boundary Criterion (MCBC) is proposed. MCBC increases class separability by realizing the significant class-boundary and class-non-boundary patterns after the elimination of noisy patterns. The objective of MCBC is modeled such that the class-boundary patterns are pushed away from the corresponding class means and class-non-boundary patterns are forced towards their class means. As a result, the classification performance of the extracted MCBC features is improved. Experimental study is performed on UCI machine learning and face recognition data to highlight the performance of MCBC. The results conclude that MCBC can generate better discriminative features compared to the state-of-the-art dimensionality reduction methods.
机译:逐级噪声模式的参与可能会误导子空间投影相关模式的选择过程。并且使用更接近相应类别决策边界的模式为每个类别建模类别间散布可以提高特征生成的质量。在此手稿中,提出了一种新的降维方法,称为最大类边界标准(MCBC)。 MCBC通过消除噪声模式后实现显着的类别边界和类别非边界模式,从而提高了类别可分离性。对MCBC的目标进行建模,以使类别边界模式被推离相应的类别均值,并且将类别非边界模式推向其类别均值。结果,提高了所提取的MCBC特征的分类性能。针对UCI机器学习和面部识别数据进行了实验研究,以突出MCBC的性能。结果得出结论,与最新的降维方法相比,MCBC可以产生更好的判别特征。

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