Least squares cross-validation (CV) methods are often used for automated bandwidth selection. We show that they share a common structure which has an explicit asymptotic solution. Using the framework of density estimation, we consider unbiased, biased, and smoothed CV methods. We show that, with a Student t(nu) kernel which includes the Gaussian as a special case, the CV criterion becomes asymptotically equivalent to a simple polynomial. This leads to optimal-bandwidth solutions that dominate the usual CV methods, definitely in terms of simplicity and speed of calculation, but also often in terms of integrated squared error because of the robustness of our asymptotic solution. We present simulations to illustrate these features and to give ...
Copyright © 2012 Ali Al-Kenani and Keming Yu. This is an open access article distributed under the C...
AbstractCross-validation methodologies have been widely used as a means of selecting tuning paramete...
AbstractSuppose one observes a random sample of n continuous time Gaussian processes on the interval...
Least squares cross-validation (CV) methods are often used for automated bandwidth selection. We sho...
AbstractThis paper studies the risks and bandwidth choices of a kernel estimate of the underlying de...
Likelihood-based cross-validation is a statistical tool for selecting a density estimate based on n ...
AbstractIn this paper, the asymptotic optimality of the cross validation bandwidth selector for the ...
Bandwidth selection in kernel density estimation is one of the fundamental model selection problems ...
AbstractHart and Vieu proposed a modified cross validation (MCV), the “leave-(2l+1)-out” version of ...
In this paper we explore a method for modeling of categorical data derived from the principles of th...
International audienceLet (X,Y) be a IR2—valued random variable and (Jfi,yï),...,(X„ ,Yn) independen...
AbstractIn this paper, kernel function methods are considered for estimating the intensity function ...
Nonparametric kernel density estimation method makes no assumptions on the functional form of the cu...
This paper studies V-fold cross-validation for model selection in least-squares density estimation. ...
This paper establishes asymptotic lower bounds which provide limits, in various contexts, as to how ...
Copyright © 2012 Ali Al-Kenani and Keming Yu. This is an open access article distributed under the C...
AbstractCross-validation methodologies have been widely used as a means of selecting tuning paramete...
AbstractSuppose one observes a random sample of n continuous time Gaussian processes on the interval...
Least squares cross-validation (CV) methods are often used for automated bandwidth selection. We sho...
AbstractThis paper studies the risks and bandwidth choices of a kernel estimate of the underlying de...
Likelihood-based cross-validation is a statistical tool for selecting a density estimate based on n ...
AbstractIn this paper, the asymptotic optimality of the cross validation bandwidth selector for the ...
Bandwidth selection in kernel density estimation is one of the fundamental model selection problems ...
AbstractHart and Vieu proposed a modified cross validation (MCV), the “leave-(2l+1)-out” version of ...
In this paper we explore a method for modeling of categorical data derived from the principles of th...
International audienceLet (X,Y) be a IR2—valued random variable and (Jfi,yï),...,(X„ ,Yn) independen...
AbstractIn this paper, kernel function methods are considered for estimating the intensity function ...
Nonparametric kernel density estimation method makes no assumptions on the functional form of the cu...
This paper studies V-fold cross-validation for model selection in least-squares density estimation. ...
This paper establishes asymptotic lower bounds which provide limits, in various contexts, as to how ...
Copyright © 2012 Ali Al-Kenani and Keming Yu. This is an open access article distributed under the C...
AbstractCross-validation methodologies have been widely used as a means of selecting tuning paramete...
AbstractSuppose one observes a random sample of n continuous time Gaussian processes on the interval...