Title of article
Nonparametric density estimation for multivariate bounded data
Author/Authors
Bouezmarni، نويسنده , , Taoufik and Rombouts، نويسنده , , Jeroen V.K.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
14
From page
139
To page
152
Abstract
We propose a new nonparametric estimator for the density function of multivariate bounded data. As frequently observed in practice, the variables may be partially bounded (e.g. nonnegative) or completely bounded (e.g. in the unit interval). In addition, the variables may have a point mass. We reduce the conditions on the underlying density to a minimum by proposing a nonparametric approach. By using a gamma, a beta, or a local linear kernel (also called boundary kernels), in a product kernel, the suggested estimator becomes simple in implementation and robust to the well known boundary bias problem. We investigate the mean integrated squared error properties, including the rate of convergence, uniform strong consistency and asymptotic normality. We establish consistency of the least squares cross-validation method to select optimal bandwidth parameters. A detailed simulation study investigates the performance of the estimators. Applications using lottery and corporate finance data are provided.
Keywords
Asymmetric kernels , Multivariate boundary bias , Asymptotic properties , Bandwidth selection , Least squares cross-validation , Nonparametric multivariate density estimation
Journal title
Journal of Statistical Planning and Inference
Serial Year
2010
Journal title
Journal of Statistical Planning and Inference
Record number
2220433
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