Application of improved locally linear embedding algorithm in dimensionality reduction of cancer gene expression data

Cancer gene expression data have the characteristics of high dimensionalities and small samples so it is necessary to perform dimensionality reduction of the data. Traditional linear dimensionality reduction approaches can not find the nonlinear relationship between the data points. In addition, the...

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Bibliographic Details
Published in:Sheng wu yi xue gong cheng xue za zhi Vol. 31; no. 1; p. 85
Main Authors: Liu, Wenyuan, Wang, Chunlei, Wang, Baowen, Wang, Changwu
Format: Journal Article
Language:Chinese
Published: China 01.02.2014
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ISSN:1001-5515
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Summary:Cancer gene expression data have the characteristics of high dimensionalities and small samples so it is necessary to perform dimensionality reduction of the data. Traditional linear dimensionality reduction approaches can not find the nonlinear relationship between the data points. In addition, they have bad dimensionality reduction results. Therefore a multiple weights locally linear embedding (LLE) algorithm with improved distance is introduced to perform dimensionality reduction in this study. We adopted an improved distance to calculate the neighbor of each data point in this algorithm, and then we introduced multiple sets of linearly independent local weight vectors for each neighbor, and obtained the embedding results in the low-dimensional space of the high-dimensional data by minimizing the reconstruction error. Experimental result showed that the multiple weights LLE algorithm with improved distance had good dimensionality reduction functions of the cancer gene expression data.
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ISSN:1001-5515