Some small-sample properties of some recently proposed multivariate outlier detection techniques
نویسندگان
چکیده
منابع مشابه
Discussion of "multivariate functional outlier detection" by M. Hubert, P. Rousseeuw and P. Segaert
I would like to congratulate M. Hubert, P. Rousseeuw and P. Segaert for this stimulating and useful work on outlier detection methods for multivariate functional data. They define and classify rigorously different types of functional outliers and propose several techniques for detecting them in multivariate functional data. These authors use the notion of data depth and distances derived from t...
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