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Outlier detection for high dimensional data using the Comedian approach
Abstract:The process of detection of outliers is an interesting and important aspect in the analysis of data, as it could impact the inference. There are various methods available in the literature for detection of outliers in multivariate data V. Barnett and T. Lewis, Outliers in Statistical Data, John Wiley & Sons, Chichester, 1994] using the Mahalanobis distance measure. An attempt is made to propose an alternate method of outlier detection based on the comedian introduced by Falk On MAD and Comedians, Ann. Inst. Statist. Math. 49 (1997), pp. 615–644]. The proposed method is computationally efficient with high breakdown value and low computation time. Further, important properties, namely, success rates (SR) and false detection rates (FDR) are studied and compared with some of the well-known outlier detection methods through a simulation study. The Comedian method has high SR and low FDR for all combination of parameters. On removal of the detected outliers or down weighing, the same, highly robust and approximately affine equivariant estimators of multivariate location and scatter can be obtained. Finally, the method is applied to well-known real data sets to evaluate its performance.
Keywords:outlier detection  breakdown value  Mahalanobis distance  robust statistics
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