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Publications in Scientific Journals:

P. Filzmoser, S. Höppner, I. Ortner, S. Serneels, T. Verdonck:
"Cellwise robust M regression";
Computational Statistics and Data Analysis, 147 (2020).



English abstract:
The cellwise robust M regression estimator is introduced as the first estimator of its kind that intrinsically yields both a map of cellwise outliers consistent with the linear model, and a vector of regression coefficients that is robust against vertical outliers and leverage points. As a by-product, the method yields a weighted and imputed data set that contains estimates of what the values in cellwise outliers would need to amount to if they had fit the model. The method is illustrated to be equally robust as its casewise counterpart, MM regression. The cellwise regression method discards less information than any casewise robust estimator. Therefore, predictive power can be expected to be at least as good as casewise alternatives. These results are corroborated in a simulation study. Moreover, while the simulations show that predictive performance is at least on par with casewise methods if not better, an application to a data set consisting of compositions of Swiss nutrients, shows that in individual cases, CRM can achieve a much higher predictive accuracy compared to MM regression.

Keywords:
Cellwise robust statistics; Cellwise robust M regression; Cellwise outliers; Detecting deviating cells; Linear regression


"Official" electronic version of the publication (accessed through its Digital Object Identifier - DOI)
http://dx.doi.org/10.1016/j.csda.2020.106944

Electronic version of the publication:
https://doi.org/10.1016/j.csda.2020.106944


Created from the Publication Database of the Vienna University of Technology.