Weighted estimating equation: modified GEE in longitudinal data analysis

Tianqing LIU, Zhidong BAI, Baoxue ZHANG

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PDF(303 KB)
Front. Math. China ›› 2014, Vol. 9 ›› Issue (2) : 329-353. DOI: 10.1007/s11464-014-0359-5
RESEARCH ARTICLE
RESEARCH ARTICLE

Weighted estimating equation: modified GEE in longitudinal data analysis

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Abstract

The method of generalized estimating equations (GEE) introduced by K. Y. Liang and S. L. Zeger has been widely used to analyze longitudinal data. Recently, this method has been criticized for a failure to protect against misspecification of working correlation models, which in some cases leads to loss of efficiency or infeasibility of solutions. In this paper, we present a new method named as ‘weighted estimating equations (WEE)’ for estimating the correlation parameters. The new estimates of correlation parameters are obtained as the solutions of these weighted estimating equations. For some commonly assumed correlation structures, we show that there exists a unique feasible solution to these weighted estimating equations regardless the correlation structure is correctly specified or not. The new feasible estimates of correlation parameters are consistent when the working correlation structure is correctly specified. Simulation results suggest that the new method works well in finite samples.

Keywords

Consistency / correlation / efficiency / generalized estimating equation (GEE) / longitudinal data / positive definite / repeated measures / weighted estimating equation (WEE)

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Tianqing LIU, Zhidong BAI, Baoxue ZHANG. Weighted estimating equation: modified GEE in longitudinal data analysis. Front. Math. China, 2014, 9(2): 329‒353 https://doi.org/10.1007/s11464-014-0359-5

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