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Outlier detection by robust principal components analysis

 

作者: C. Caroni,  

 

期刊: Communications in Statistics - Simulation and Computation  (Taylor Available online 2000)
卷期: Volume 29, issue 1  

页码: 139-151

 

ISSN:0361-0918

 

年代: 2000

 

DOI:10.1080/03610910008813606

 

出版商: Marcel Dekker, Inc.

 

关键词: Outlier tests;multivariate outliers;robust estimation;principal components analysis

 

数据来源: Taylor

 

摘要:

The robust principal components analysis (RPCA) introduced by Campbell (Applied Statistics1980,29,231–237) provides in addition to robust versions of the usual output of a principal components analysis, weights for the contribution of each point to the robust estimation of each component. Low weights may thus be used to indicate outliers. The present simulation study provides critical values for testing the kth smallest weight in the RPCA of a sample of n p-dimensional vectors, under the null hypothesis of a multivariate normal distribution. The cases p=2(2)10, 15, 20 for n=20, 30, 40, 50, 75, 100 subject to n≥p/2, are examined, with k≤√n.

 

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