Robustness of standard regression models have been studied quite extensively. When repeated measures are available, the methodological framework is generalized to multilevel models, for which little is known in term of robustness, even in the simplest case of ANOVA. We present a sequential forward search algorithm for multilevel models that allows robust and ecient parameters estimation in presence of outliers, and it avoids masking and swamping. The in uence of outliers will be monitored at each step of the sequential procedure, which is the key element of the forward search. There are peculiar features when the forward search is applied to multilevel models. Such features pose new computational challenges, as some restrictions, that make the sub-models identiable at every step, are required. The method is illustrated by an application to real data where exports of coee to European countries are modeled and analyzed to identify outliers that might be linked to potential frauds. Preliminary results on simulated data have highlighted the benet of adopting the forward search algorithm, which can reveal masked outliers, in uential observations and show hidden structures.

Robustness for multilevel models with the forward search

GROSSI, Luigi;
2016-01-01

Abstract

Robustness of standard regression models have been studied quite extensively. When repeated measures are available, the methodological framework is generalized to multilevel models, for which little is known in term of robustness, even in the simplest case of ANOVA. We present a sequential forward search algorithm for multilevel models that allows robust and ecient parameters estimation in presence of outliers, and it avoids masking and swamping. The in uence of outliers will be monitored at each step of the sequential procedure, which is the key element of the forward search. There are peculiar features when the forward search is applied to multilevel models. Such features pose new computational challenges, as some restrictions, that make the sub-models identiable at every step, are required. The method is illustrated by an application to real data where exports of coee to European countries are modeled and analyzed to identify outliers that might be linked to potential frauds. Preliminary results on simulated data have highlighted the benet of adopting the forward search algorithm, which can reveal masked outliers, in uential observations and show hidden structures.
2016
9781510837591
Multilevel Analysis, Outliers, Robust Methods
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11562/948904
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