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Comparative Study on Normalization Procedures for Cluster Analysis of Gene Expression Datasets

机译:基因表达数据集聚类分析规范化程序的比较研究

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Normalization before clustering is often needed for proximity indices, such as Euclidian distance, which are sensitive to differences in the magnitude or scales of the attributes. The goal is to equalize the size or magnitude and the variability of these features. This can also be seen as a way to adjust the relative weighting of the attributes. In this context, we present a first large scale data driven comparative study of three normalization procedures applied to cancer gene expression data. The results are presented in terms of the recovering of the true cluster structure as found by five different clustering algorithms.
机译:在群集之前,通常需要对群体指数(例如欧几里多距离)的归一化,这对属性的大小或尺度的差异敏感。目标是均衡这些功能的大小或幅度和可变性。这也可以被视为调整属性的相对加权的方法。在这种情况下,我们介绍了应用于癌症基因表达数据的三个正常化程序的第一个大规模数据驱动的比较研究。结果以五种不同聚类算法发现的真实集群结构的恢复呈现。

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