The smoothing parameter selection by the one-sided cross-validation (OSCV) method is completely automatic in that it does not require extra parameters estimation. Also it reduces the variability comparable to that of plug-in rules. In this paper we derive analytically the asymptotic variance of the smoothing parameter selected by OSCV. It shows the dependency of the stability on the one-sided kerenl and tells the possibility of the optimal one-sided kernel which minimizes the asymptotic variability.
机构:
UNIV CALIF, SCH ENGN & APPL SCI, ENERGY & KINETICS DEPT, LOS ANGELES, CA 90024 USAUNIV CALIF, SCH ENGN & APPL SCI, ENERGY & KINETICS DEPT, LOS ANGELES, CA 90024 USA