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首页> 外文期刊>Briefings in bioinformatics >Advances in metaheuristics for gene selection and classification of microarray data
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Advances in metaheuristics for gene selection and classification of microarray data

机译:元启发法在基因选择和微阵列数据分类中的研究进展

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Gene selection aims at identifying a (small) subset of informative genes from the initial data in order to obtain high predictive accuracy for classification. Gene selection can be considered as a combinatorial search problem and thus be conveniently handled with optimization methods. In this article, we summarize some recent developments of using metaheuristic-based methods within an embedded approach for gene selection. In particular, we put forward the importance and usefulness of integrating problem-specific knowledge into the search operators of such a method. To illustrate the point, we explain how ranking coefficients of a linear classifier such as support vector machine (SVM) can be profitably used to reinforce the search efficiency of Local Search and Evolutionary Search metaheuristic algorithms for gene selection and classification.
机译:基因选择的目的是从初始数据中识别信息基因的(小)子集,以获得较高的分类预测精度。基因选择可以被视为组合搜索问题,因此可以通过优化方法方便地进行处理。在本文中,我们总结了在嵌入的基因选择方法中使用基于元启发式方法的一些最新进展。特别是,我们提出了将特定于问题的知识集成到这种方法的搜索运算符中的重要性和实用性。为了说明这一点,我们解释了如何将线性分类器(例如支持向量机,SVM)的排名系数有效地用于增强用于基因选择和分类的局部搜索和进化搜索元启发式算法的搜索效率。

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