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Exemplar based Laplacian Discriminant Projection

机译:基于示例的拉普拉斯判别投影

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摘要

A new algorithm, exemplar based Laplacian Discriminant Projection (ELDP), is proposed in this paper for supervised dimensionality reduction. ELDP aims at learning a linear transformation which is an extension of Linear Discriminant Analysis combining with clustering technique. Specifically, we define three scatter matrices using similarities based on representative exemplars which are found by Affinity Propagation Clustering. After the transformation, the considered pair-wise samples within the same exemplar subset and the same class are as close as possible, while those exemplars between-classes are as far as possible. The structural information of classes is contained in the exemplar based Laplacian matrices. Thus the discriminant projection subspace can be derived by controlling the structural evolution of Laplacian matrices. The performance on several data sets demonstrates the competence of the proposed algorithm.
机译:提出了一种新的基于样本的拉普拉斯判别投影(ELDP)算法。 ELDP旨在学习线性变换,它是线性判别分析结合聚类技术的扩展。具体而言,我们基于相似性定义了三个散布矩阵,这些相似度基于通过亲和传播聚类发现的代表性示例。转换后,在同一示例子集和同一类别中考虑的成对样本尽可能接近,而类别之间的那些样本则尽可能地接近。类的结构信息包含在基于示例的拉普拉斯矩阵中。因此,可以通过控制拉普拉斯矩阵的结构演化来导出判别投影子空间。在几个数据集上的性能证明了所提出算法的能力。

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