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A Study of Crossover Operators for Gene Selection of Microarray Data

机译:交叉算子在微阵列数据基因选择中的研究

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Classification of microarray data requires the selection of a subset of relevant genes in order to achieve good classification performance. Several genetic algorithms have been devised to perform this search task. In this paper, we carry out a study on the role of crossover operator and in particular investigate the usefulness of a highly specialized crossover operator called GeSeX (GEne SElection crossover) that takes into account gene ranking information provided by a Support Vector Machine classifier. We present experimental evidences about its performance compared with two other conventional crossover operators. Comparisons are also carried out with several recently reported genetic algorithms on four well-known benchmark data sets.
机译:微阵列数据的分类需要选择相关基因的一个子集,以实现良好的分类性能。已经设计出几种遗传算法来执行该搜索任务。在本文中,我们对交叉算子的作用进行了研究,特别是研究了一种高度专业的交叉算子GeSeX(GEne SElection交叉)的作用,该算子考虑了支持向量机分类器提供的基因排名信息。与其他两个常规分频器相比,我们提供了有关其性能的实验证据。在四个著名的基准数据集上,还使用几种最近报道的遗传算法进行了比较。

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