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Feature Selection and Partial Least Squares Based Dimension Reduction for Tumor Classification

机译:肿瘤分类的基于尺寸减少的特征选择和偏最小二乘

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Partial Least Squares (PLS) is one of the widely used dimension reduction methods for analysis of gene expression microarray data, it represents the data in a low dimensional space through linear transformation, the size of the reduced space by PLS iscritical to generalization performance of classifiers. The previous works always determined the top fixed number of components or the top several components by cross-validation. Here we demonstrate the usage of feature selection for PLS based dimensionreduction. As a case study, PLS is combined with two feature selection methods (Genetic Algorithm and Sequential Backward Floating Selection) to get more robust and efficient dimensional space, and then the constructed data from the selected components is used as input for the Support Vector Machine (SVM) classifier. We use the method for tumor classification on gene microarray data, experimental results illustrate that our proposed framework is effective both to reduce classification error rates and get compact dimensional space.
机译:局部最小二乘(PLS)是用于分析基因表达微阵列数据的广泛使用的尺寸减少方法之一,它通过线性变换表示低尺寸空间中的数据,通过PLS对分类器的泛型性能进行了减少空间的尺寸。以前的作品始终通过交叉验证确定顶部固定数量的组件或顶部多个组件。在这里,我们展示了基于PLS的比例的特征选择的使用。作为案例研究,PLS与两个特征选择方法(遗传算法和顺序向后浮动选择)组合以获得更强大的稳健和高效的尺寸空间,然后从所选组件中构造的数据用作支持向量机的输入( SVM)分类器。我们使用对基因微阵列数据的肿瘤分类方法,实验结果表明,我们所提出的框架有效减少分类误差率并获得紧凑的尺寸空间。

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