Copula-based regression estimation and inference
Citations

WEB OF SCIENCE

71
Citations

SCOPUS

80

초록

We investigate a new approach to estimating a regression function based on copulas. The main idea behind this approach is to write the regression function in terms of a copula and marginal distributions. Once the copula and the marginal distributions are estimated, we use the plug-in method to construct our new estimator. Because various methods are available in the literature for estimating both a copula and a distribution, this idea provides a rich and flexible family of regression estimators. We provide some asymptotic results related to this copula-based regression modeling when the copula is estimated via profile likelihood and the marginals are estimated nonparametrically. We also study the finite sample performance of the estimator and illustrate its usefulness by analyzing data from air pollution studies.

제목
Copula-based regression estimation and inference
저자
Noh, HohsukEl Ghouch, AnouarBouezmarni, Taoufik
DOI
10.1080/01621459.2013.783842
발행일
2013-06
저널명
Journal of the American Statistical Association
108
502
페이지
676 ~ 688