A general trimming approach to robust cluster analysis 论文

2007Actas del XXX Congreso Nacional de Estadística e Investigación Operativa y de las IV Jornadas de Estadística Pública, 2007, ISBN 978-84-690-7249-3引用 238
Advanced Statistical Methods and ModelsBayesian Methods and Mixture ModelsSurvey Sampling and Estimation Techniques

摘要

We introduce a new method for performing clustering with the aim of fitting clusters with different scatters and weights. It is designed by allowing to handle a proportion α of contaminating data to guarantee the robustness of the method. As a characteristic feature, restrictions on the ratio between the maximum and the minimum eigenvalues of the groups scatter matrices are introduced. This makes the problem to be well defined and guarantees the consistency of the sample solutions to the population ones. The method covers a wide range of clustering approaches depending on the strength of the chosen restrictions. Our proposal includes an algorithm for approximately solving the sample problem.

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