We consider the problem of bandwidth selection by cross-validation from a sequential point of view in a nonparametric regression model. Having in mind that in applications one often aims at estimation, prediction and change detection simultaneously, we investigate that approach for sequential kernel smoothers in order to base these tasks on a single statistic. We provide uniform weak laws of large numbers and weak consistency results for the cross-validated bandwidth. Extensions to weakly dependent error terms are discussed as well. The errors may be α-mixing or L2-near epoch dependent, which guarantees that the uniform convergence of the cross validation sum and the consistency of the cross-validated bandwidth hold true for a large class o...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
AbstractFor nonparametric regression model with fixed design, it is well known that obtaining a corr...
The performance of multivariate kernel density estimates depends crucially on the choice of bandwidt...
We investigate an automatic method of determining a local bandwidth for non-parametric kernel spectr...
We propose two novel bandwidth selection procedures for the nonparametric regression model with clas...
International audienceIn this paper, we are interested in the problem of smoothing parameter select...
Suppose one observes a random sample of n continuous time Gaussian processes on the interval [0, 1];...
We investigate an automatic method of determining a local bandwidth for nonparametric kernel spectra...
We propose an automated bandwidth selection procedure for the nonparametric estimation of conditiona...
Nonparametric estimation of abrupt changes in a regression function involves choosing smoothing (ban...
In the present paper we combine the issues of bandwidth choice and construction of confidence interv...
AbstractCross-validation methodologies have been widely used as a means of selecting tuning paramete...
Least squares cross-validation (CV) methods are often used for automated bandwidth selection. We sho...
AbstractSuppose one observes a random sample of n continuous time Gaussian processes on the interval...
http://demonstrations.wolfram.com/NonparametricDensityEstimationRobustCrossValidationBandwidth/. Thi...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
AbstractFor nonparametric regression model with fixed design, it is well known that obtaining a corr...
The performance of multivariate kernel density estimates depends crucially on the choice of bandwidt...
We investigate an automatic method of determining a local bandwidth for non-parametric kernel spectr...
We propose two novel bandwidth selection procedures for the nonparametric regression model with clas...
International audienceIn this paper, we are interested in the problem of smoothing parameter select...
Suppose one observes a random sample of n continuous time Gaussian processes on the interval [0, 1];...
We investigate an automatic method of determining a local bandwidth for nonparametric kernel spectra...
We propose an automated bandwidth selection procedure for the nonparametric estimation of conditiona...
Nonparametric estimation of abrupt changes in a regression function involves choosing smoothing (ban...
In the present paper we combine the issues of bandwidth choice and construction of confidence interv...
AbstractCross-validation methodologies have been widely used as a means of selecting tuning paramete...
Least squares cross-validation (CV) methods are often used for automated bandwidth selection. We sho...
AbstractSuppose one observes a random sample of n continuous time Gaussian processes on the interval...
http://demonstrations.wolfram.com/NonparametricDensityEstimationRobustCrossValidationBandwidth/. Thi...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
AbstractFor nonparametric regression model with fixed design, it is well known that obtaining a corr...
The performance of multivariate kernel density estimates depends crucially on the choice of bandwidt...