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A Convolution Estimator for the Density of Nonlinear Regression Observations
Authors:BÅRD STØVE  DAG TJØSTHEIM
Affiliation:Department of Mathematics, University of Bergen
Abstract:Abstract. The problem of estimating an unknown density function has been widely studied. In this article, we present a convolution estimator for the density of the responses in a nonlinear heterogenous regression model. The rate of convergence for the mean square error of the convolution estimator is of order n ?1 under certain regularity conditions. This is faster than the rate for the kernel density method. We derive explicit expressions for the asymptotic variance and the bias of the new estimator, and further a data‐driven bandwidth selector is proposed. We conduct simulation experiments to check the finite sample properties, and the convolution estimator performs substantially better than the kernel density estimator for well‐behaved noise densities.
Keywords:convergence rate  convolution estimator  kernel function  mean squared error  non‐parametric density estimation
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