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Finite mixture models for clustering multilevel data with multiple cluster structures

机译:用于将具有多个聚类结构的多级数据聚类的有限混合模型

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摘要

Finite mixture models are useful tools for clustering two-way datasets within a sound statistical framework which can assess some important questions, such as how many clusters are there in the data. Models that can also be used for clustering multilevel data have been proposed, with the intent to produce clusterings of units at every level on the basis of all the available variables, considering the hierarchical structure of the dataset. This paper introduces a new class of mixture models for datasets with two levels that makes it possible to discover a clustering of level 2 units and different clusterings of level 1 units corresponding to different subsets of the variables (multiple cluster structures). This new class is obtained by adapting a mixture model proposed to identify multiple cluster structures in a data matrix to the multilevel situation. The usefulness of the new method is shown using simulated data and a real example.
机译:有限混合模型是在合理的统计框架内对双向数据集进行聚类的有用工具,可以评估一些重要问题,例如数据中有多少个聚类。考虑到数据集的层次结构,已经提出了也可以用于对多级数据进行聚类的模型,旨在基于所有可用变量在每个级别上对单元进行聚类。本文为两级数据集引入了一类新的混合模型,这使得有可能发现2级单位的聚类和1级单位的不同聚类(对应于变量的不同子集)(多个聚类结构)。通过改编提出的混合模型来识别数据矩阵中的多个群集结构以适应多级情况,从而获得了这一新类。通过仿真数据和一个实际例子来说明新方法的有效性。

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