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Bagged Ensembles of Support Vector Machines for Gene Expression Data Analysis

机译:用于基因表达数据分析的支持向量机的袋装系列

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Extracting information from gene expression data is a difficult task, as these data are characterized by very high dimensional, small sized, samples and large degree of biological variability. However, a possible way of dealing with the curse of dimensionality is offered by feature selection algorithms, while variance problems arising from small samples and biological variability can be addressed through ensemble methods based on resampling techniques. These two approaches have been combined to improve the accuracy of Support Vector Machines (SVM) in the classification of malignant tissues from DNA microarray data. To assess the accuracy and the confidence of the predictions performed proper measures have been introduced. Presented results show that bagged ensembles of SVM are more reliable and achieve equal or better classification accuracy with respect to single SVM, whereas feature selection methods can further enhance classification accuracy.
机译:从基因表达数据中提取信息是一项艰巨的任务,因为这些数据的特征在于非常高的尺寸,小尺寸,样本以及大程度的生物变异性。然而,特征选择算法提供了处理维度诅咒的可能方法,而来自小样本和生物可变性产生的方差问题可以通过基于重采样技术的集合方法来解决。结合了这两种方法以提高来自DNA微阵列数据的恶性组织分类中的支持载体机(SVM)的准确性。为了评估预测的准确性和置信度,已经介绍了适当的措施。呈现的结果表明,对于单个SVM,SVM的袋装集合更可靠,达到平等或更好的分类准确性,而特征选择方法可以进一步提高分类准确性。

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