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Sparse Kernel Fisher Discriminant Analysis

机译:稀疏的内核Fisher判别分析

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This paper presents a method of Sparse Kernel Fisher Discriminant Analysis (SKFDA) through approximating the implicit within-class scatter matrix in feature space. Traditional Kernel Fisher Discriminant Analysis (KFDA) has to use all the training samples to construct the implicit within-class scatter matrix while SKFDA needs only small part of them. Based on this idea, the aim of sparseness can be obtained. Experiments show that SKFDA can dramatically reduce the number of training samples used for constructing the implicit within-class scatter matrix. Numerical simulations on "Banana Shaped" and "Ripley and Ionosphere" data sets confirm that SKFDA has the merit of decreasing the training complexity of KFDA.
机译:本文通过在特征空间中近似隐式的级别散射矩阵,提出了一种稀疏的内核捕获判别分析(SKFDA)的方法。传统的内核Fisher判别分析(KFDA)必须使用所有训练样本来构造隐式级联散射矩阵,而SKFDA只需要其中的一小部分。基于这个想法,可以获得稀疏性的目的。实验表明,SKFDA可以显着减少用于构建级别散射矩阵的隐式散射矩阵的训练样本的数量。 “香蕉形”和“Riplemy和ImoLyse”数据集的数值模拟证实,SKFDA具有降低克富达培训复杂性的优点。

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