Paper
Outlier detection for high-dimensional data
Published Sep 1, 2015 · Kwang-Ho Ro, Changliang Zou, Zhaojun Wang
Biometrika
155
Citations
11
Influential Citations
Abstract
Outlier detection is an integral component of statistical modelling and estimation. For high-dimensional data, classical methods based on the Mahalanobis distance are usually not applicable. We propose an outlier detection procedure that replaces the classical minimum covariance determinant estimator with a high-breakdown minimum diagonal product estimator. The cut-off value is obtained from the asymptotic distribution of the distance, which enables us to control the Type I error and deliver robust outlier detection. Simulation studies show that the proposed method behaves well for high-dimensional data.
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