Error analysis for general multtvariate kernel estimators
- 1 January 1992
- journal article
- research article
- Published by Taylor & Francis in Journal of Nonparametric Statistics
- Vol. 2 (1) , 1-15
- https://doi.org/10.1080/10485259208832538
Abstract
Kernel estimators for d dimensional data are usually parametrized by either a single smoothing parameter, or d smoothing parameters corresponding to each of the coordinate directions. A generalization of each of these parameterizations is to use a d× d matrix which allows smoothing in arbitrary directions. We demonstrate that, at this level of generality, the usual error approximations and their numerical minimization can be done quite simply using matrix algebra. The minimization formulas have the practical importance that they can be applied to data-driven selection of the smoothing parameters using a ”plug-in approach. Particular attention is paid to the special case of kernel estimation of multivariate normal mixture densities where it is shown that the numerical evaluation and minimization of both asymptotic and exact mean integrated squared error can be set up in a matrix algebraic formulation which requires no numerical integration. This provides a flexible family of multivariate smoothing problems for which error analyses can be performed in a computationally simple manner.Keywords
This publication has 21 references indexed in Scilit:
- Exact Mean Integrated Squared ErrorThe Annals of Statistics, 1992
- A Flexible and Fast Method for Automatic SmoothingJournal of the American Statistical Association, 1991
- Using non-stochastic terms to advantage in kernel-based estimation of integrated squared density derivativesStatistics & Probability Letters, 1991
- Comparison of Data-Driven Bandwidth SelectorsJournal of the American Statistical Association, 1990
- Nonparametric Regression Analysis of Longitudinal DataPublished by Springer Nature ,1988
- Estimation of integrated squared density derivativesStatistics & Probability Letters, 1987
- Vec and vech operators for matrices, with some uses in jacobians and multivariate statisticsThe Canadian Journal of Statistics / La Revue Canadienne de Statistique, 1979
- Some Errors Associated with the Non-parametric Estimation of Density FunctionsIMA Journal of Applied Mathematics, 1976
- Non-Parametric Estimation of a Multivariate Probability DensityTheory of Probability and Its Applications, 1969
- Estimation of a multivariate densityAnnals of the Institute of Statistical Mathematics, 1966