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A hybrid of binary Particle Swarm Optimization and estimation distribution algorithm for feature selection

机译:特征选择的混合二进制粒子群优化与估计分布算法。

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The risk of common diseases is likely determined by single nucleotide polymorphisms (SNPs). However, due to the tremendous number of candidate SNPs, there is a clear need to genotyping by selecting only a subset of all SNPs that are highly associated with a specific disease. In this paper, a new algorithm which is based on a hybrid of binary Particle Swarm Optimization (BPSO) and estimation distribution algorithms (EDA), named HBPSO, is proposed to search the optimal SNPs subset and Support Vector Machine (SVM) is adopted as the classifier. In addition, the concept of elite strategy is adopted in HBPSO. HBPSO not only eliminates the redundancy of feature, but also solves the problem of SVM's parameters selection simultaneously. The proposed approach is tested on two datasets: Crohn's disease and Lung cancer. The experimental results demonstrate that the performance of HBPSO is better than other methods.
机译:常见疾病的风险可能由单核苷酸多态性(SNP)确定。但是,由于候选SNP的数量众多,显然需要通过仅选择与特定疾病高度相关的所有SNP的子集进行基因分型。本文提出了一种基于二进制粒子群算法(BPSO)和估计分布算法(EDA)混合的新算法,称为HBPSO,用于搜索最优SNP子集,并采用支持向量机(SVM)作为算法。分类器。另外,HBPSO采纳了精英策略的概念。 HBPSO不仅消除了功能的冗余性,而且还解决了SVM参数选择的问题。所提出的方法在两个数据集上进行了测试:克罗恩病和肺癌。实验结果表明,HBPSO的性能优于其他方法。

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