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Supervised locality pursuit embedding for pattern classification

机译:有监督的局部追踪嵌入模式分类

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摘要

In pattern recognition research, dimensionality reduction techniques are widely used since it may be difficult to recognize multidimensional data especially if the number of samples in a data set is not large comparing with the dimensionality of data space. Locality pursuit embedding (LPE) is a recently proposed method for unsupervised linear dimensionality reduction. LPE seeks to preserve the local structure, which is usually more significant than the global structure preserved by principal component analysis (PCA) and linear discriminant analysis (LDA). In this paper, we investigate its extension, called supervised locality pursuit embedding (SLPE), using class labels of data points to enhance its discriminant power in their mapping into a low dimensional space. We compare the proposed SLPE approach with traditional LPE, PCA and LDA methods on real-world data sets including handwritten digits, character data set and face images. Experimental results demonstrate that SLPE is superior to other three methods in terms of recognition accuracy.
机译:在模式识别研究中,降维技术被广泛使用,因为它可能难以识别多维数据,尤其是如果与数据空间的维数相比,数据集中的样本数不多的情况下。局部追踪嵌入(LPE)是最近提出的一种用于无监督线性降维的方法。 LPE寻求保留局部结构,该结构通常比通过主成分分析(PCA)和线性判别分析(LDA)保留的全局结构更重要。在本文中,我们使用数据点的类标签来增强其判别能力,以扩展其在映射到低维空间中的能力,该扩展称为监督局部寻踪嵌入(SLPE)。我们在现实世界的数据集(包括手写数字,字符数据集和面部图像)上,将建议的SLPE方法与传统的LPE,PCA和LDA方法进行了比较。实验结果表明,SLPE在识别精度方面优于其他三种方法。

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