ContaminatedMixt: An R Package for Fitting Parsimonious Mixtures of Multivariate Contaminated Normal Distributions

A. Punzo, A. Mazza, P. McNicholas
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引用次数: 41

Abstract

We introduce the R package ContaminatedMixt, conceived to disseminate the use of mixtures of multivariate contaminated normal distributions as a tool for robust clustering and classification under the common assumption of elliptically contoured groups. Thirteen variants of the model are also implemented to introduce parsimony. The expectation-conditional maximization algorithm is adopted to obtain maximum likelihood parameter estimates, and likelihood-based model selection criteria are used to select the model and the number of groups. Parallel computation can be used on multicore PCs and computer clusters, when several models have to be fitted. Differently from the more popular mixtures of multivariate normal and t distributions, this approach also allows for automatic detection of mild outliers via the maximum a posteriori probabilities procedure. To exemplify the use of the package, applications to artificial and real data are presented.
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一个R包拟合多元污染正态分布的简约混合
我们介绍了R包污染型混合,旨在传播多元污染正态分布的混合物的使用,作为在椭圆轮廓群的共同假设下稳健聚类和分类的工具。该模型还实现了13种变体,以引入节俭。采用期望-条件最大化算法获得最大似然参数估计,采用基于似然的模型选择准则选择模型和组数。并行计算可以用于多核pc机和计算机集群,当多个模型必须拟合时。与更流行的多元正态分布和t分布的混合不同,这种方法还允许通过最大后验概率过程自动检测轻度异常值。为了举例说明该包的使用,给出了对人工数据和实际数据的应用。
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