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Variable selection in model-based clustering: A general variable role modeling

机译:基于模型的聚类中的变量选择:通用变量角色建模

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摘要

The currently available variable selection procedures in model-based clustering assume that the irrelevant clustering variables are all independent or are all linked with the relevant clustering variables. A more versatile variable selection model is proposed, taking into account three possible roles for each variable: The relevant clustering variables, the irrelevant clustering variables dependent on a part of the relevant clustering variables and the irrelevant clustering variables totally independent of all the relevant variables. A model selection criterion and a variable selection algorithm are derived for this new variable role modeling. The model identifiability and the consistency of the variable selection criterion are also established. Numerical experiments highlight the interest of this new modeling.
机译:基于模型的聚类中当前可用的变量选择过程假定无关的聚类变量全部独立或全部与相关的聚类变量链接。提出了一种更通用的变量选择模型,其中考虑了每个变量的三种可能的作用:相关的聚类变量,不相关的聚类变量(依赖于相关聚类变量的一部分)以及不相关的聚类变量完全独立于所有相关变量。为此新的可变角色建模导出了模型选择标准和变量选择算法。还建立了模型的可识别性和变量选择标准的一致性。数值实验突出了这种新模型的兴趣。

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