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Simultaneous classification and feature clustering using discriminant vector quantization with applications to microarray data analysis

机译:使用判别矢量量化的同时分类和特征聚类及其在微阵列数据分析中的应用

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In many applications of supervised learning, automatic feature clustering is often desirable for a better understanding of the interaction among the various features as well as the interplay between the features and the class labels. In addition, for high dimensional data sets, feature clustering has the potential for improvement in classification accuracy and reduction in computational complexity. In this paper, a method is developed for simultaneous classification and feature clustering by extending discriminant vector quantization (DVQ), a prototype classification method derived from the principle of minimum description length using source coding techniques. The method incorporates feature clustering with classification performed by fusing features in the same clusters. To illustrate its effectiveness, the method has been applied to microarray gene expression data for human lymphoma classification. It is demonstrated that incorporating feature clustering improves classification accuracy, and the clusters generated match well with biological meaningful gene expression signature groups.
机译:在监督学习的许多应用中,通常需要自动特征聚类,以更好地理解各种特征之间的相互作用以及特征与类标签之间的相互作用。此外,对于高维数据集,特征聚类具有改善分类精度和降低计算复杂度的潜力。在本文中,通过扩展判别向量量化(DVQ),开发了一种用于同时分类和特征聚类的方法,这是一种使用源编码技术从最小描述长度原理导出的原型分类方法。该方法将特征聚类与通过融合相同聚类中的特征执行的分类结合在一起。为了说明其有效性,该方法已应用于人类淋巴瘤分类的微阵列基因表达数据。结果表明,引入特征聚类可以提高分类的准确性,并且所生成的聚类与生物学上有意义的基因表达签名组具有很好的匹配性。

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