Bandwidth selection for local linear regression smoothers |
| |
Authors: | Nicolas W. Hengartner, Marten H. Wegkamp, Eric Matzner-Lø ber |
| |
Affiliation: | Yale University, New Haven, USA; UniversitéRennes II and Centre de Recherche en Economie et Statistique–Ecole Nationale de la Statistique et de l'Analyse de l'Information, Rennes, France |
| |
Abstract: | ![]() Summary. The paper presents a general strategy for selecting the bandwidth of nonparametric regression estimators and specializes it to local linear regression smoothers. The procedure requires the sample to be divided into a training sample and a testing sample. Using the training sample we first compute a family of regression smoothers indexed by their bandwidths. Next we select the bandwidth by minimizing the empirical quadratic prediction error on the testing sample. The resulting bandwidth satisfies a finite sample oracle inequality which holds for all bounded regression functions. This permits asymptotically optimal estimation for nearly any regression function. The practical performance of the method is illustrated by a simulation study which shows good finite sample behaviour of our method compared with other bandwidth selection procedures. |
| |
Keywords: | Local linear regression smoother Nonparametric regression Oracle inequality Universal bandwidth selection |
|