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A New Gene Selection Method for Microarray Data Based on PSO and Informativeness Metric

机译:基于PSO和信息性度量的微阵列数据新基因选择方法

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In this paper, a new method encoding a priori information of informativeness metric of microarray data into particle swarm optimization (PSO) is proposed to select informative genes. The informativeness metric is an analysis of variance statistic that represents the regulation hide in the microarray data. In the new method, the informativeness metric is combined with the global searching algorithms PSO to perform gene selection. The genes selected by the new method reveal the data structure highly hided in the microarray data and therefore improve the classification accuracy rate. Experiment results on two microarray datasets achieved by the proposed method verify its effectiveness and efficiency.
机译:本文提出了一种新方法,其编码微阵列数据的信息性度量的先验信息分为粒子群优化(PSO),以选择信息性基因。信息性度量是对差异统计的分析,其表示在微阵列数据中的监管。在新方法中,信息性度量与全局搜索算法PSO组合以执行基因选择。通过新方法选择的基因揭示了微阵列数据高度汇率的数据结构,从而提高了分类精度率。实验结果通过所提出的方法实现的两个微阵列数据集验证其有效性和效率。

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