A Joint Model for Longitudinal and Time-to-event Data in Social and Life Course Research: Employment Status and Time to Retirement

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Standard

A Joint Model for Longitudinal and Time-to-event Data in Social and Life Course Research : Employment Status and Time to Retirement. / Cremers, Jolien; Mortensen, Laust Hvas; Ekstrom, Claus Thorn.

I: Sociological Methods & Research, Bind 53, Nr. 2, 2024.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Cremers, J, Mortensen, LH & Ekstrom, CT 2024, 'A Joint Model for Longitudinal and Time-to-event Data in Social and Life Course Research: Employment Status and Time to Retirement', Sociological Methods & Research, bind 53, nr. 2. https://doi.org/10.1177/00491241211055770

APA

Cremers, J., Mortensen, L. H., & Ekstrom, C. T. (2024). A Joint Model for Longitudinal and Time-to-event Data in Social and Life Course Research: Employment Status and Time to Retirement. Sociological Methods & Research, 53(2). https://doi.org/10.1177/00491241211055770

Vancouver

Cremers J, Mortensen LH, Ekstrom CT. A Joint Model for Longitudinal and Time-to-event Data in Social and Life Course Research: Employment Status and Time to Retirement. Sociological Methods & Research. 2024;53(2). https://doi.org/10.1177/00491241211055770

Author

Cremers, Jolien ; Mortensen, Laust Hvas ; Ekstrom, Claus Thorn. / A Joint Model for Longitudinal and Time-to-event Data in Social and Life Course Research : Employment Status and Time to Retirement. I: Sociological Methods & Research. 2024 ; Bind 53, Nr. 2.

Bibtex

@article{ee898d0e4bd5438da5688a8c684602fc,
title = "A Joint Model for Longitudinal and Time-to-event Data in Social and Life Course Research: Employment Status and Time to Retirement",
abstract = "Longitudinal studies including a time-to-event outcome in social research often use a form of event history analysis to analyse the influence of time-varying endogenous covariates on the time-to-event outcome. Many standard event history models however assume the covariates of interest to be exogenous and inclusion of an endogenous covariate may lead to bias. Although such bias can be dealt with by using joint models for longitudinal and time-to-event outcomes, these types of models are underused in social research. In order to fill this gap in the social science modelling toolkit, we introduce a novel Bayesian joint model in which a multinomial longitudinal outcome is modelled simultaneously with a time-to-event outcome. The methodological novelty of this model is that it concerns a correlated random effects association structure that includes a multinomial longitudinal outcome. We show the use of the joint model on Danish labour market data and compare the joint model to a standard event history model. The joint model has three advantages over a standard survival model. It decreases bias, allows us to explore the relation between exogenous covariates and the longitudinal outcome and can be flexibly extended with multiple time-to-event and longitudinal outcomes.",
keywords = "Retirement timing, labour market attachment, joint model, event history analysis, Bayesian methods",
author = "Jolien Cremers and Mortensen, {Laust Hvas} and Ekstrom, {Claus Thorn}",
year = "2024",
doi = "10.1177/00491241211055770",
language = "English",
volume = "53",
journal = "Sociological Methods and Research",
issn = "0049-1241",
publisher = "SAGE Publications",
number = "2",

}

RIS

TY - JOUR

T1 - A Joint Model for Longitudinal and Time-to-event Data in Social and Life Course Research

T2 - Employment Status and Time to Retirement

AU - Cremers, Jolien

AU - Mortensen, Laust Hvas

AU - Ekstrom, Claus Thorn

PY - 2024

Y1 - 2024

N2 - Longitudinal studies including a time-to-event outcome in social research often use a form of event history analysis to analyse the influence of time-varying endogenous covariates on the time-to-event outcome. Many standard event history models however assume the covariates of interest to be exogenous and inclusion of an endogenous covariate may lead to bias. Although such bias can be dealt with by using joint models for longitudinal and time-to-event outcomes, these types of models are underused in social research. In order to fill this gap in the social science modelling toolkit, we introduce a novel Bayesian joint model in which a multinomial longitudinal outcome is modelled simultaneously with a time-to-event outcome. The methodological novelty of this model is that it concerns a correlated random effects association structure that includes a multinomial longitudinal outcome. We show the use of the joint model on Danish labour market data and compare the joint model to a standard event history model. The joint model has three advantages over a standard survival model. It decreases bias, allows us to explore the relation between exogenous covariates and the longitudinal outcome and can be flexibly extended with multiple time-to-event and longitudinal outcomes.

AB - Longitudinal studies including a time-to-event outcome in social research often use a form of event history analysis to analyse the influence of time-varying endogenous covariates on the time-to-event outcome. Many standard event history models however assume the covariates of interest to be exogenous and inclusion of an endogenous covariate may lead to bias. Although such bias can be dealt with by using joint models for longitudinal and time-to-event outcomes, these types of models are underused in social research. In order to fill this gap in the social science modelling toolkit, we introduce a novel Bayesian joint model in which a multinomial longitudinal outcome is modelled simultaneously with a time-to-event outcome. The methodological novelty of this model is that it concerns a correlated random effects association structure that includes a multinomial longitudinal outcome. We show the use of the joint model on Danish labour market data and compare the joint model to a standard event history model. The joint model has three advantages over a standard survival model. It decreases bias, allows us to explore the relation between exogenous covariates and the longitudinal outcome and can be flexibly extended with multiple time-to-event and longitudinal outcomes.

KW - Retirement timing

KW - labour market attachment

KW - joint model

KW - event history analysis

KW - Bayesian methods

U2 - 10.1177/00491241211055770

DO - 10.1177/00491241211055770

M3 - Journal article

VL - 53

JO - Sociological Methods and Research

JF - Sociological Methods and Research

SN - 0049-1241

IS - 2

ER -

ID: 287876741