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首页> 外文期刊>Journal of supercomputing >Feature clustering and feature discretization assisting gene selection for molecular classification using fuzzy c-means and expectation-maximization algorithm
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Feature clustering and feature discretization assisting gene selection for molecular classification using fuzzy c-means and expectation-maximization algorithm

机译:特征聚类和特征离散化辅助使用模糊C型方式和期望最大化算法进行分子分类的基因选择

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摘要

In this paper, a novel gene selection benefiting from feature clustering and feature discretization is developed. In large numbers of genes, unsupervised fuzzy clustering algorithm facilitates the analysis of both similarities and dissimilarities. The supervised process, adopting information gain and statistical Chi-square test, is applied to approve the relevant gene clusters. Then, expectation-maximization algorithm discretizes the candidate genes and helps to recognize distinguishability. In our previously proposed selection criterion, we finalized gene selection and generated the gene subsets for molecular classification. For high-dimensional datasets congested with erroneous or ambiguous information, the current scheme is particularly suitable in its own right. The efficiency and effectiveness are verified by our experimental results.
机译:在本文中,开发了一种从特征聚类和特征离散化受益的新型基因选择。 在大量基因中,无监督的模糊聚类算法有助于分析相似之处和异化。 监督过程,采用信息收益和统计Chi-Square测试,用于批准相关的基因集群。 然后,期望 - 最大化算法离散候选基因并有助于识别差异性。 在我们先前提出的选择标准中,我们最终确定基因选择并产生用于分子分类的基因子集。 对于具有错误或模糊信息的拥挤的高维数据集,当前方案在其自己的权利中特别适用。 我们的实验结果验证了效率和有效性。

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