- Hacettepe Journal of Mathematics and Statistics
- Volume:53 Issue:4
- Parametric and semiparametric approaches for copula-based regression estimation
Parametric and semiparametric approaches for copula-based regression estimation
Authors : Alam Ali, Ashok Pathak, Mohd Arshad
Pages : 1141-1157
Doi:10.15672/hujms.1359072
View : 139 | Download : 170
Publication Date : 2024-08-27
Article Type : Research Paper
Abstract :Based on the normality assumption on dependent variable, regression analysis is one of the most popular statistical techniques for studying the dependence between response and explanatory variables. However, violation of this assumption in the data makes regression analysis inappropriate in several real life situations. Copula is a powerful tool for modeling multivariate data and have recently been employed in regression analysis. The key concept behind copula-based regression approach is to formulate conditional expectation in terms of copula density and marginal distributions. In this paper, we explore parametric and semiparametric estimations of the copula-based regression function. The maximum likelihood (ML), inference functions for margins (IFM), and pseudo maximum likelihood (PML) techniques are adopted here for estimation purposes. Extensive numerical experiments are performed to illustrate the performance of the proposed copula-based regression estimators under specified and misspecified scenarios of copulas and marginals. Finally, two real data applications are also presented to demonstrate the performance of the considered estimators.Keywords : Copula based regression estimation, dependence modelling, regression function, inference function for margins IFM, semiparametric inference