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Locality Preserving Discriminating Projections for cancer classification

机译:癌症分类的局部保留区分预测

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Cancer classification of gene expression data helps determine appropriate treatment and prognosis. Its accurate prediction to the type or size of tumors relies on adopting powerful and efficient classification models such that patients can be provided with better treatment. As a graph-based method for linear dimensionality reduction, Locality Preserving Projections(LPP) searches for an embedding space in which the similarity among the local neighborhoods is preserved. However LPP doesn't take the label information into consideration which is crucial for classification tasks. In order to gain better classification, in this study, a feature dimensionality reduction method termed the Locality Preserving Discriminating Projections(LPDP) is proposed. LPDP allows both locality and class label information to be incorporated which improves the performance of classification. Experimental results using public gene expression data show the superior performance of the method.
机译:基因表达数据的癌症分类有助于确定适当的治疗和预后。它对肿瘤的类型或大小的准确预测依赖于采用强大而有效的分类模型,以便可以提供更好的治疗患者。作为基于图形的线性维度减少的方法,位置保留投影(LPP)搜索嵌入空间,其中保留了本地邻域之间的相似性。然而,LPP不会考虑标签信息,这对于分类任务至关重要。为了获得更好的分类,在本研究中,提出了一种称为鉴别鉴别投影(LPDP)的位置维度降低方法。 LPDP允许包含众所周知和类标签信息,从而提高了分类的性能。使用公共基因表达数据的实验结果显示了该方法的优越性。

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