A note on the estimation and inference with quadratic inference functions for correlated outcomes

Commun Stat Simul Comput. 2022;51(11):6525-6536. doi: 10.1080/03610918.2020.1805463. Epub 2020 Aug 11.

Abstract

The quadratic inference function approach is a popular method in the analysis of correlated data. The quadratic inference function is formulated based on multiple sets of score equations (or extended score equations) that over-identify the regression parameters of interest, and improves efficiency over the generalized estimating equations under correlation misspecification. In this note, we provide an alternative solution to the quadratic inference function by separately solving each set of score equations and combining the solutions. We provide an insight that an optimally weighted combination of estimators obtained separately from the distinct sets of score equations is asymptotically equivalent to the estimator obtained via the quadratic inference function. We further establish results on inference for the optimally weighted estimator and extend these insights to the general setting with over-identified estimating equations. A simulation study is carried out to confirm the analytical insights and connections in finite samples.

Keywords: Asymptotic equivalence; clustered data; generalized estimating equations; generalized least squares; hypothesis testing; quadratic inference function.