Academic Thesis

Basic information

Name Okumura Hidenori
Belonging department
Occupation name
researchmap researcher code 1000180100
researchmap agency Okayama University of Science

Title

Weighted kernel estimators in nonparametric binomial regression

Bibliography Type

 

Author

Hidenori Okumura
Kanta Naito

Summary

This paper is concerned with nonparametric binomial regression. A kernel-based binomial regression estimator and its bias-adjusted version are proposed, of which kernel is weighted by the inverse of a variance estimator of the observed proportion at each covariate. It is shown that the asymptotic normality of the bias-adjusted estimator holds under some regularity conditions. The proposed estimators and other estimators discussed by several authors are compared through their asymptotic MSEs. From these considerations, together with the simulation results, advantages of our weighting scheme are reported.

Magazine(name)

Journal of Nonparametric Statistics

Publisher

 

Volume

16

Number Of Pages

 

StartingPage

39

EndingPage

62

Date of Issue

2004-02-01

Referee

Exist

Invited

Not exist

Language

 

Thesis Type

 

ISSN

 

DOI

10.1080/10485250310001624828

NAID

 

PMID

 

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arXiv ID

 

ORCID Put Code

 

DBLP ID