Autores
Stefan Van Aelst, Peter J Rousseeuw, Mia Hubert, Anja Struyf
Fecha de publicación
2002/4/1
Revista
Journal of Multivariate Analysis
Volumen
81
Número
1
Páginas
138-166
Editor
Academic Press
Descripción
Deepest regression (DR) is a method for linear regression introduced by P. J. Rousseeuw and M. Hubert (1999, J. Amer. Statis. Assoc.94, 388–402). The DR method is defined as the fit with largest regression depth relative to the data. In this paper we show that DR is a robust method, with breakdown value that converges almost surely to 1/3 in any dimension. We construct an approximate algorithm for fast computation of DR in more than two dimensions. From the distribution of the regression depth we derive tests for the true unknown parameters in the linear regression model. Moreover, we construct simultaneous confidence regions based on bootstrapped estimates. We also use the maximal regression depth to construct a test for linearity versus convexity/concavity. We extend regression depth and deepest regression to more general models. We apply DR to polynomial regression and show that the deepest …
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Artículos de Google Académico
S Van Aelst, PJ Rousseeuw, M Hubert, A Struyf - Journal of Multivariate Analysis, 2002