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A Fast Feature-based Dimension Reduction Algorithm for Kernel Classifiers

机译:基于快速特征的核分类器降维算法

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摘要

This paper presents a novel dimension reduction algorithm for kernel based classification. In the feature space, the proposed algorithm maximizes the ratio of the squared between-class distance and the sum of the within-class variances of the training samples for a given reduced dimension. This algorithm has lower complexity than the recently reported kernel dimension reduction (KDR) for supervised learning. We conducted several simulations with large training datasets, which demonstrate that the proposed algorithm has similar performance or is marginally better compared with KDR whilst having the advantage of computational efficiency. Further, we applied the proposed dimension reduction algorithm to face recognition in which the number of training samples is very small. This proposed face recognition approach based on the new algorithm outperforms the eigenface approach based on the principal component analysis (PCA), when the training data is complete, that is, representative of the whole dataset.
机译:本文提出了一种新的基于核的降维算法。在特征空间中,对于给定的降维,所提出的算法将类间距离的平方之比与训练样本的类内方差之和最大化。该算法的复杂度比最近报道的用于监督学习的内核维数减少(KDR)低。我们对大型训练数据集进行了多次仿真,结果表明,与KDR相比,该算法具有相似的性能或略胜一筹,同时具有计算效率优势。此外,我们将提出的降维算法应用于训练样本数量很少的人脸识别。当训练数据完整时,即代表整个数据集时,该基于新算法的面部识别方法优于基于主成分分析(PCA)的特征面部方法。

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