A comparative study on repeated measurements data in the presence of missing data

Authors

  • Mohammad Al-Rawwash Department of Statistics, Yarmouk University, Jordan
  • Haneen Alquran Yarmouk University

DOI:

https://doi.org/10.1285/i20705948v16n2p410

Keywords:

Correlation structure, Gaussian estimation, Imputation, Longitudinal data, Missing values

Abstract

The occurrence of missing observations is nearly unavoidable in longitudi- nal studies where repeated measurements are taken over time on the same subject who may miss appointments or drop out during the study period. In this article, we use the Gaussian estimating objective function to esti- mate the regression and correlation parameters and handle missing data using multiple imputation. The estimation of these parameters is carried out simultaneously using the iterative Newton-Raphson algorithm and the expectation-maximization algorithm. These ideas are implemented using two real data sets and both algorithms showed comparable results with respect to the standard errors of the parameters of interest.

Author Biography

Mohammad Al-Rawwash, Department of Statistics, Yarmouk University, Jordan

Professor of Statistics

Department of Statistics

Yarmouk University

Downloads

Published

18-10-2023