Autores
Jafar A Khan, Stefan Van Aelst, Ruben H Zamar
Fecha de publicación
2007/9/15
Revista
Computational Statistics & Data Analysis
Volumen
52
Número
1
Páginas
239-248
Editor
North-Holland
Descripción
Classical step-by-step algorithms, such as forward selection (FS) and stepwise (SW) methods, are computationally suitable, but yield poor results when the data contain outliers and other contaminations. Robust model selection procedures, on the other hand, are not computationally efficient or scalable to large dimensions, because they require the fitting of a large number of submodels. Robust and computationally efficient versions of FS and SW are proposed. Since FS and SW can be expressed in terms of sample correlations, simple robustifications are obtained by replacing these correlations by their robust counterparts. A pairwise approach is used to construct the robust correlation matrix—not only because of its computational advantages over the d-dimensional approach, but also because the pairwise approach is more consistent with the idea of step-by-step algorithms. The proposed robust methods have …
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Artículos de Google Académico
JA Khan, S Van Aelst, RH Zamar - Computational Statistics & Data Analysis, 2007