Volume 77, Issue 1
Original Article

A joint modelling approach for longitudinal studies

Weiping Zhang

University of Science and Technology of China, Hefei, People's Rebublic of China

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Chenlei Leng

University of Warwick, Coventry, UK

and National University of Singapore, Singapore

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Cheng Yong Tang

Corresponding Author

University of Colorado Denver, USA

Address for correspondence: Cheng Yong Tang, Business School, University of Colorado Denver, 1475 Lawrence Street, Denver, CO 80204, USA. E‐mail: chengyong.tang@ucdenver.eduSearch for more papers by this author
First published: 18 April 2014
Citations: 22

Summary

In longitudinal studies, it is of fundamental importance to understand the dynamics in the mean function, variance function and correlations of the repeated or clustered measurements. For modelling the covariance structure, Cholesky‐type decomposition‐based approaches have been demonstrated to be effective. However, parsimonious approaches for directly revealing the correlation structure between longitudinal measurements remain less well explored, and existing joint modelling approaches may encounter difficulty in interpreting the covariation structure. We propose a novel joint mean–variance correlation modelling approach for longitudinal studies. By applying hyperspherical co‐ordinates, we obtain an unconstrained parameterization for the correlation matrix that automatically guarantees its positive definiteness, and we develop a regression approach to model the correlation matrix of the longitudinal measurements by exploiting the parameterization. The modelling framework proposed is parsimonious, interpretable and flexible for analysing longitudinal data. Extensive data examples and simulations support the effectiveness of the approach proposed.

Number of times cited according to CrossRef: 22

  • GEE analysis in joint mean-covariance model for longitudinal data, Statistics & Probability Letters, 10.1016/j.spl.2020.108705, (108705), (2020).
  • Triangular angles parameterization for the correlation matrix of bivariate longitudinal data, Journal of the Korean Statistical Society, 10.1007/s42952-019-00014-y, 49, 2, (364-388), (2020).
  • Joint decision of pricing and ordering in stochastic demand with Nash bargaining fairness, Computers & Operations Research, 10.1016/j.cor.2020.105037, 123, (105037), (2020).
  • Nonparametric covariance estimation with shrinkage toward stationary models, WIREs Computational Statistics , 10.1002/wics.1507, 12, 6, (2020).
  • Improved empirical likelihood inference and variable selection for generalized linear models with longitudinal nonignorable dropouts, Annals of the Institute of Statistical Mathematics, 10.1007/s10463-020-00761-4, (2020).
  • A robust joint modeling approach for longitudinal data with informative dropouts, Computational Statistics, 10.1007/s00180-020-00972-6, (2020).
  • Estimation of covariance matrix of multivariate longitudinal data using modified Choleksky and hypersphere decompositions, Biometrics, 10.1111/biom.13113, 76, 1, (75-86), (2019).
  • Joint mean–covariance random effect model for longitudinal data, Biometrical Journal, 10.1002/bimj.201800311, 62, 1, (7-23), (2019).
  • Parsimonious Mean-Covariance Modeling for Longitudinal Data with ARMA Errors, Journal of Systems Science and Complexity, 10.1007/s11424-019-7354-6, 32, 6, (1675-1692), (2019).
  • Spatially correlated binary data modelling using generalized estimating equations with alternative hypersphere decomposition, Journal of Physics: Conference Series, 10.1088/1742-6596/1324/1/012094, 1324, (012094), (2019).
  • Estimation of a rank-reduced functional-coefficient panel data model with serial correlation, Journal of Multivariate Analysis, 10.1016/j.jmva.2019.04.005, (2019).
  • A novel robust approach for analysis of longitudinal data, Computational Statistics & Data Analysis, 10.1016/j.csda.2019.04.002, (2019).
  • Robust maximum -likelihood estimation of joint mean-covariance models for longitudinal data , Journal of Multivariate Analysis, 10.1016/j.jmva.2019.01.001, (2019).
  • A Cholesky-based estimation for large-dimensional covariance matrices, Journal of Applied Statistics, 10.1080/02664763.2019.1664424, (1-14), (2019).
  • DYNAMIC ASSET CORRELATIONS BASED ON VINES, Econometric Theory, 10.1017/S026646661800004X, (1-31), (2018).
  • ARMA Cholesky factor models for the covariance matrix of linear models, Computational Statistics & Data Analysis, 10.1016/j.csda.2017.05.001, 115, (267-280), (2017).
  • undefined, 2017 International Conference on Sensing, Diagnostics, Prognostics, and Control (SDPC), 10.1109/SDPC.2017.110, (549-556), (2017).
  • Modelling structured correlation matrices, Biometrika, 10.1093/biomet/asw061, (asw061), (2017).
  • Mixed-effects location and scale Tobit joint models for heterogeneous longitudinal data with skewness, detection limits, and measurement errors, Statistical Methods in Medical Research, 10.1177/0962280217704225, (096228021770422), (2017).
  • Multivariate covariance generalized linear models, Journal of the Royal Statistical Society: Series C (Applied Statistics), 10.1111/rssc.12145, 65, 5, (649-675), (2016).
  • New Semiparametric Estimation Procedure for Functional Coefficient Longitudinal Data Models, SSRN Electronic Journal, 10.2139/ssrn.2638343, (2015).
  • Distribution of random correlation matrices: Hyperspherical parameterization of the Cholesky factor, Statistics & Probability Letters, 10.1016/j.spl.2015.06.015, 106, (5-12), (2015).