JSM 2011 Online Program

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Abstract Details

Activity Number: 626
Type: Contributed
Date/Time: Thursday, August 4, 2011 : 8:30 AM to 10:20 AM
Sponsor: Biopharmaceutical Section
Abstract - #301625
Title: Weighted Scores Method for Regression Models with Dependent Data
Author(s): Aristidis K. Nikoloulopoulos and Harry Joe and N. Rao Chaganty*+
Companies: University of East Anglia and University of British Columbia and Old Dominion University
Address: , , VA, ,
Keywords: Copulas ; Composite Likelihood ; Estimating Equations ; Negative Binomial ; Clustered ; Longitudinal
Abstract:

There are copula-based statistical models in the literature for regression with dependent data such as clustered and longitudinal overdispersed counts, for which parameter estimation and inference are straightforward. For situations where the main interest is in the regression and other univariate parameters and not the dependence, we propose a "weighted scores method", which is based on weighting score functions of the univariate margins. The weight matrices are obtained initially fitting a discretized multivariate normal distribution, which admits a wide range of dependence. The general methodology is applied to negative binomial regression models. Asymptotic and small sample efficiency calculations show that our method is robust and nearly as efficient as maximum likelihood for fully specified copula models. An illustrative example is given to show the use of our weighted scores method to analyze utilization of health care based on family characteristics.


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