Latent growth modeling
{{Short description|Statistical technique}}
Latent growth modeling is a statistical technique used in the structural equation modeling (SEM) framework to estimate growth trajectories. It is a longitudinal analysis technique to estimate growth over a period of time. It is widely used in the field of psychology, behavioral science, education and social science. It is also called latent growth curve analysis. The latent growth model was derived from theories of SEM. General purpose SEM software, such as OpenMx, lavaan (both open source packages based in R), AMOS, Mplus, LISREL, or EQS among others may be used to estimate growth trajectories.
Background
Latent Growth Models{{cite journal |last=Tucker |first=L.R. |year=1958 |title=Determination of parameters of a functional relation by factor analysis |journal=Psychometrika |volume=23 |pages=19-23 |doi=10.1007/BF02288975 |url=https://three-mode.leidenuniv.nl/pdf/t/tucker1958.pdf |url-status=live }}{{cite journal |last=Rao |first=C.R. |year=1958 |title=Some statistical methods for the comparison of growth curves |journal=Biometrics |volume=14 |pages=1-17 |url=http://dspace.isical.ac.in:8080/jspui/bitstream/10263/76/1/B-14-01-1958-P1-17.pdf |archive-url=https://web.archive.org/web/20250119003215/http://dspace.isical.ac.in:8080/jspui/bitstream/10263/76/1/B-14-01-1958-P1-17.pdf |archive-date=19 January 2025 |url-status=live }}{{cite journal |last=Scher |first=A.M. |last2=Young |first2=A.C. |last3=Meredith |first3=W.M. |year=1960 |title=Factor analysis of the electrocardiogram |journal=Circulation Research |volume=8 |pages=519-526 |doi=10.1161/01.RES.8.3.519 |url=https://www.ahajournals.org/doi/pdf/10.1161/01.RES.8.3.519 }}{{cite journal |last=Meredith |first=W. |last2=Tisak |first2=J. |year=1990 |title=Latent curve analysis |journal=Psychometrika |volume=55 |pages=107–122 |doi=10.1007/BF02294746 |url=http://cda.psych.uiuc.edu/CovarianceStructureAnalysis/Readings/Meredith-latent_curve.pdf |archive-url=https://web.archive.org/web/20241214085838/http://cda.psych.uiuc.edu/CovarianceStructureAnalysis/Readings/Meredith-latent_curve.pdf |archive-date=14 December 2024 |url-status=live }} represent repeated measures of dependent variables as a function of time and other measures. Such longitudinal data share the features that the same subjects are observed repeatedly over time, and on the same tests (or parallel versions), and at known times. In latent growth modeling, the relative standing of an individual at each time is modeled as a function of an underlying growth process, with the best parameter values for that growth process being fitted to each individual.
These models have grown in use in social and behavioral research since it was shown that they can be fitted as a restricted common factor model in the structural equation modeling framework.
The methodology can be used to investigate systematic change, or growth, and inter-individual variability in this change. A special topic of interest is the correlation of the growth parameters, the so-called initial status and growth rate, as well as their relation with time varying and time invariant covariates. (See McArdle and Nesselroade (2003){{cite book |last=McArdle |first=J.J. |last2=Nesselroade |first2=J.R. |year=2003 |chapter=Growth curve analysis in contemporary psychological research |editor-first=J. |editor-last=Schinka |editor2-first=W. |editor2-last=Velicer |title=Comprehensive handbook of psychology: Research methods in psychology |volume=2 |pages=447–480 |location=New York |publisher=Wiley |doi=10.1002/0471264385.wei0218 }} for a comprehensive review)
Although many applications of latent growth curve models estimate only initial level and slope components, more complex models can be estimated. Models with higher order components, e.g., quadratic, cubic, do not predict ever-increasing variance, but require more than two occasions of measurement. It is also possible to fit models based on growth curves with functional forms, often versions of the generalised logistic growth such as the logistic, exponential or Gompertz functions. Though straightforward to fit with versatile software such as OpenMx, these more complex models cannot be fitted with SEM packages in which path coefficients are restricted to being simple constants or free parameters, and cannot be functions of free parameters and data. Discontinuous models where the growth pattern changes around a time point (for example, is different before and after an event) can also be fit in SEM software.{{Cite journal |last1=Rioux |first1=Charlie |last2=Stickley |first2=Zachary L. |last3=Little |first3=Todd D. |date=2021 |title=Solutions for latent growth modeling following COVID-19-related discontinuities in change and disruptions in longitudinal data collection |url=http://journals.sagepub.com/doi/10.1177/01650254211031631 |journal=International Journal of Behavioral Development |language=en |volume=45 |issue=5 |pages=463–473 |doi=10.1177/01650254211031631 |issn=0165-0254|hdl=2346/87456 |s2cid=237204627 |hdl-access=free }}
Similar questions can also be answered using a multilevel model approach.{{Cite book |last=Grimm |first=Kevin J. |url=https://www.worldcat.org/oclc/926062148 |title=Growth modeling : structural equation and multilevel modeling approaches |date=2017 |others=Nilam Ram, Ryne Estabrook |isbn=978-1-4625-2606-2 |location=New York, NY |oclc=926062148}}
References
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Further reading
- {{cite conference |last=McArdle |first=J.J. |year=1989 |title=A structural modeling experiment with multiple growth functions |editor-first=R. |editor-last=Kanfer |editor2-first=P. L. |editor2-last=Ackerman |editor3-first=R. |editor3-last=Cudeck |conference=Abilities, motivation, and methodology: The Minnesota Symposium on Learning and Individual Differences |publisher=Lawrence Erlbaum Associates, Inc. |pages=71–117 |isbn=978-0-203-76290-5 |url=https://api-uat.taylorfrancis.com/content/books/mono/download?identifierName=doi&identifierValue=10.4324/9780203762905&type=googlepdf }}
- {{cite journal |last=Willett |first=J.B. |last2=Sayer |first2=A.G. |year=1994 |title=Using covariance structure analysis to detect correlates and predictors of individual change over time |journal=Psychological Bulletin |volume=116 |issue=2 |pages=363–381 |doi=10.1037/0033-2909.116.2.363 |url=https://gseacademic.harvard.edu/~willetjo/pdf%20files/Willett%20&%20Sayer%201994.pdf |archive-url=https://web.archive.org/web/20230705165435/https://gseacademic.harvard.edu/~willetjo/pdf%20files/Willett%20&%20Sayer%201994.pdf |archive-date=5 July 2023 |url-status=live }}
- {{cite journal |last=Curran |first=P.J. |last2=Stice |first2=E. |last3=Chassin |first3=L. |year=1997 |title=The relation between adolescent alcohol use and peer alcohol use: A longitudinal random coefficients model |journal=Journal of Consulting and Clinical Psychology |volume=65 |issue=1 |pages=130–140 |doi=10.1037/0022-006X.65.1.130 |url=https://curran.web.unc.edu/wp-content/uploads/sites/6785/2015/03/CurranSticeChassin1997.pdf |archive-url=https://web.archive.org/web/20240608213854/https://curran.web.unc.edu/wp-content/uploads/sites/6785/2015/03/CurranSticeChassin1997.pdf |archive-date=8 June 2024 |url-status=live }}
- {{cite journal |last=Muthén |first=B.O. |last2=Curran |first2=P.J. |year=1997 |title=General longitudinal modeling of individual differences in experimental designs: A latent variable framework for analysis and power estimation |journal=Psychological Methods |volume=2 |issue=4 |pages=371–402 |doi=10.1037/1082-989X.2.4.371 |url=https://curran.web.unc.edu/wp-content/uploads/sites/6785/2015/03/MuthenCurran1997a.pdf |archive-url=https://web.archive.org/web/20240411174949/https://curran.web.unc.edu/wp-content/uploads/sites/6785/2015/03/MuthenCurran1997a.pdf |archive-date=11 April 2024 |url-status=live }}
- Su & Testa 2005
- {{cite book |last=Bollen |first=K. A. |last2=Curran |first2=P. J. |year=2006 |title=Latent curve models: A structural equation perspective |location=Hoboken, NJ |publisher=Wiley-Interscience |doi=10.1002/0471746096 |isbn=9780471455929 }}
- {{cite book |last=Singer |first=J. D. |last2=Willett |first2=J. B. |year=2003 |title=Applied longitudinal data analysis: Modeling change and event occurrence |location=New York |publisher=Oxford University Press |doi=10.1093/acprof:oso/9780195152968.001.0001 |isbn=9780195152968 }}
- {{cite book |last=Fitzmaurice |first=G. M. |last2=Laird |first2=N. M. |last3=Ware |first3=J. W. |year=2004 |title=Applied longitudinal analysis |location=Hoboken, NJ |publisher=Wiley |doi=10.1002/9781119513469 |isbn=9781119513469 }}