info:eu-repo/semantics/article
Robust estimation in single-index models when the errors have a unimodal density with unknown nuisance parameter
Fecha
2020-06Registro en:
Agostinelli, Claudio; Bianco, Ana Maria; Boente Boente, Graciela Lina; Robust estimation in single-index models when the errors have a unimodal density with unknown nuisance parameter; Springer Heidelberg; Annals of the Institute of Statistical Mathematics; 72; 3; 6-2020; 855-893
0020-3157
CONICET Digital
CONICET
Autor
Agostinelli, Claudio
Bianco, Ana Maria
Boente Boente, Graciela Lina
Resumen
This paper develops a robust profile estimation method for the parametric and nonparametric components of a single-index model when the errors have a strongly unimodal density with unknown nuisance parameter. We derive consistency results for the link function estimators as well as consistency and asymptotic distribution results for the single-index parameter estimators. Under a log-Gamma model, the sensitivity to anomalous observations is studied using the empirical influence curve. We also discuss a robust K-fold cross-validation procedure to select the smoothing parameters. A numerical study carried on with errors following a log-Gamma model and for contaminated schemes shows the good robustness properties of the proposed estimators and the advantages of considering a robust approach instead of the classical one. A real data set illustrates the use of our proposal.