| Literature DB >> 36246864 |
Amadou Barry1,2, Karim Oualkacha3, Arthur Charpentier3.
Abstract
Generalized estimating equations ( G E E ) are widely used to analyze longitudinal data; however, they are not appropriate for heteroscedastic data, because they only estimate regressor effects on the mean response - and therefore do not account for data heterogeneity. Here, we combine the G E E with the asymmetric least squares (expectile) regression to derive a new class of estimators, which we call generalized expectile estimating equations ( G E E E ) . The G E E E model estimates regressor effects on the expectiles of the response distribution, which provides a detailed view of regressor effects on the entire response distribution. In addition to capturing data heteroscedasticity, the GEEE extends the various working correlation structures to account for within-subject dependence. We derive the asymptotic properties of the G E E E estimators and propose a robust estimator of its covariance matrix for inference (see our R package, github.com/AmBarry/expectgee). Our simulations show that the GEEE estimator is non-biased and efficient, and our real data analysis shows it captures heteroscedasticity.Entities:
Keywords: Expectile regression; GEE working correlation; cluster data; longitudinal data; quantile regression
Year: 2021 PMID: 36246864 PMCID: PMC9559327 DOI: 10.1080/02664763.2021.1957789
Source DB: PubMed Journal: J Appl Stat ISSN: 0266-4763 Impact factor: 1.416