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Sample size determination for kernel regression estimation using sequential fixed-width confidence bands

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journal contribution
posted on 2008-01-01, 00:00 authored by Lasitha DharmasenaLasitha Dharmasena, P Zeephongsekul, B de Silva
We consider a random design model based on independent and identically distributed pairs of observations (Xi, Yi), where the regression function m(x) is given by m(x) = E(Yi|Xi = x) with one independent variable. In a nonparametric setting the aim is to produce a reasonable approximation to the unknown function m(x) when we have no precise information about the form of the true density, f(x) of X. We describe an estimation procedure of non-parametric regression model at a given point by some appropriately constructed fixed-width (2d) confidence interval with the confidence coefficient of at least 1−. Here, d(> 0) and 2 (0, 1) are two preassigned values. Fixed-width confidence intervals are developed using both Nadaraya-Watson and local linear kernel estimators of nonparametric regression with data-driven bandwidths. The sample size was optimized using the purely and two-stage sequential procedures together with asymptotic properties of the Nadaraya-Watson and local linear estimators. A large scale simulation study was performed to compare their coverage accuracy. The numerical results indicate that the confi dence bands based on the local linear estimator have the better performance than those constructed by using Nadaraya-Watson estimator. However both estimators are shown to have asymptotically correct coverage properties.

History

Journal

IAENG international journal of applied mathematics

Volume

38

Pagination

129-135

Location

Hong Kong, China

Open access

  • Yes

ISSN

1992-9978

Language

eng

Publication classification

C1.1 Refereed article in a scholarly journal

Copyright notice

2009, Newswood Limited / International Association of Engineers

Issue

3

Publisher

Newswood Limited / International Association of Engineers