Likelihood-Based Local Polynomial Fitting for Single-Index Models
The parametric generalized linear model assumes that the conditional distribution of a response Y given a d-dimensional covariate X belongs to an exponential family and that a known transformation of the regression function is linear in X. In this paper we relax the latter assumption by considering a nonparametric function of the linear combination [beta]TX, say [eta]0([beta]TX). To estimate the coefficient vector [beta] and the nonparametric component [eta]0 we consider local polynomial fits based on kernel weighted conditional likelihoods. We then obtain an estimator of the regression function by simply replacing [beta] and [eta]0 in [eta]0([beta]TX) by these estimators. We derive the asymptotic distributions of these estimators and give the results of some numerical experiments.
Year of publication: |
2002
|
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Authors: | Huh, J. ; Park, B. U. |
Published in: |
Journal of Multivariate Analysis. - Elsevier, ISSN 0047-259X. - Vol. 80.2002, 2, p. 302-321
|
Publisher: |
Elsevier |
Keywords: | single-index models local polynomial kernel smoothers generalized linear models average derivatives |
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