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SMILE: A novel dissimilarity-based procedure for detecting sparse-specific profiles in sparse contingency tables

机译:SMILE:一种基于不相似性的新颖过程,用于检测稀疏列联表中的稀疏特定配置文件

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摘要

A novel statistical procedure for clustering individuals characterized by sparse-specific profiles is introduced in the context of data summarized in sparse contingency tables. The proposed procedure relies on a single-linkage clustering based on a new dissimilarity measure designed to give equal influence to sparsity and specificity of profiles. Theoretical properties of the new dissimilarity are derived by characterizing single-linkage clustering using Minimum Spanning Trees. Such characterization allows the description of situations for which the proposed dissimilarity outperforms competing dissimilarities. Simulation examples are performed to demonstrate the strength of the new dissimilarity compared to 11 other methods. The analysis of a genomic dataset dedicated to the study of molecular signatures of selection is used to illustrate the efficiency of the proposed method in a real situation. (C) 2016 Elsevier B.V. All rights reserved.
机译:在稀疏列联表中汇总的数据的背景下,引入了一种新的统计程序,该程序用于对以稀疏特定配置文件为特征的个人进行聚类。所提出的过程依赖于基于一种新的相异性度量的单链接聚类,该度量旨在对轮廓的稀疏性和特异性给予同等影响。通过使用最小生成树表征单链接聚类,可以得出新的相似性的理论特性。这种表征允许描述所提议的相异性胜过竞争相异性的情况。进行了仿真示例,以证明与其他11种方法相比,新差异的强度。对致力于选择分子标记研究的基因组数据集的分析用于说明所提出方法在实际情况下的效率。 (C)2016 Elsevier B.V.保留所有权利。

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