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Asymptotic properties of maximum quasi-likelihood estimator in quasi-likelihood nonlinear models with misspecified variance function
Authors:Tian Xia  Xue-Ren Wang  Xue-Jun Jiang
Institution:1. School of Mathematics and Statistics, University of Guizhou Finance and Economics, Guiyang 550025, People's Republic of Chinaxiatian718@hotmail.com;3. Department of Statistics, Yunnan University, Yunnan Province, Kunming 650091, People's Republic of China;4. Department of Financial Mathematics and Engineering, South University of Science and Technology, Shenzhen 518055, People's Republic of China
Abstract:The quasi-likelihood function proposed by Wedderburn Quasi-likelihood functions, generalized linear models, and the Gauss–Newton method. Biometrika. 1974;61:439–447] broadened the application scope of generalized linear models (GLM) by specifying the mean and variance function instead of the entire distribution. However, in many situations, complete specification of variance function in the quasi-likelihood approach may not be realistic. Following Fahrmeir's Maximum likelihood estimation in misspecified generalized linear models. Statistics. 1990;21:487–502] treating with misspecified GLM, we define a quasi-likelihood nonlinear models (QLNM) with misspecified variance function by replacing the unknown variance function with a known function. In this paper, we propose some mild regularity conditions, under which the existence and the asymptotic normality of the maximum quasi-likelihood estimator (MQLE) are obtained in QLNM with misspecified variance function. We suggest computing MQLE of unknown parameter in QLNM with misspecified variance function by the Gauss–Newton iteration procedure and show it to work well in a simulation study.
Keywords:asymptotic normality  existence  maximum quasi-likelihood estimator  quasi-likelihood nonlinear models with misspecified variance function  Gauss–Newton iteration method
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