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Efficient huge-scale feature selection with speciated genetic algorithm

机译:使用指定遗传算法的高效大规模特征选择

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摘要

With increasing interest in bioinformatics, sophisticated tools are required to efficiently analyze gene information. The classification of gene expression profiles is crucial in those fields. Since the features of data obtained by microarray technology come to be over thousands, it is essential to extract useful information by selecting proper features. The information without any feature selection might be redundant so that this can deteriorate the performance of classification. The conventional feature selection method with genetic algorithm has difficulty for huge-scale feature selection. In this paper, we modify the representation of chromosome to be suitable for huge-scale feature selection and adopt speciation to enhance the performance of feature selection by obtaining diverse solutions. Experimental results with DNA microarray data from cancer patients show that the selected genes by the proposed method are useful for cancer classification.
机译:随着对生物信息学的兴趣不断增长,需要使用复杂的工具来有效地分析基因信息。基因表达谱的分类在这些领域中至关重要。由于通过微阵列技术获得的数据特征超过了数千种,因此必须通过选择适当的特征来提取有用的信息。没有选择任何特征的信息可能是多余的,因此这可能会降低分类性能。传统的遗传算法特征选择方法难以进行大规模特征选择。在本文中,我们修改了染色体的表示形式以适合大规模特征选择,并采用物种形成以通过获得多种解决方案来增强特征选择的性能。来自癌症患者的DNA微阵列数据的实验结果表明,通过提出的方法选择的基因可用于癌症分类。

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