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. 2025 Jun 18;57(7):201.
doi: 10.3758/s13428-025-02716-0.

Recovering knot placements in Bayesian piecewise growth models with missing data

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Recovering knot placements in Bayesian piecewise growth models with missing data

Ihnwhi Heo et al. Behav Res Methods. .

Abstract

Bayesian piecewise growth models (PGMs) are useful tools to capture nonlinear trends comprised of distinct developmental phases. An important parameter in Bayesian PGMs is the knot location - the time at which transitions arise between phases. While researchers can specify knot locations when they are known a priori, a more flexible approach is to estimate knot locations based on data. The Bayesian estimation of knot locations is largely affected by prior distributions and missing data; however, little is known about the impact of these two factors in recovering knot placements. In the current article, we conducted a Monte Carlo simulation study to examine the impact of different prior specifications and the presence of missing data on the recovery of knot placements in Bayesian PGMs. Simulation results indicated that in small sample sizes, knot location estimates were dictated by prior distributions. Even with larger sample sizes, the estimates remained sensitive to informative and inaccurate prior specifications. The presence of missing data complicated the recovery linked to certain priors. While negative consequences, such as bias in parameter estimates, were caused by a larger amount of missing data, this could be alleviated by informative and accurate priors. These findings emphasize the critical role and intertwined influence of prior distributions and missing data in reaching conclusions about changepoints. We present an illustrative example using real data with missing values to demonstrate the Bayesian estimation of knot locations under realistic scenarios. Recommendations for applied researchers are discussed.

Keywords: Bayesian estimation; Knot; Missing data; Piecewise growth; Prior distribution.

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Conflict of interest statement

Declarations. Conflicts of Interest/Competing Interests: The authors declare no conflicts of interest. Ethics Approval: Not applicable. Consent to Participate: Not applicable. Consent for Publication: Not applicable.

Figures

Fig. 1
Fig. 1
A path diagram for the population model
Fig. 2
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Prior specifications
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Fig. 3
Missing data patterns
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Boxplots of bias for knot location estimates across simulation conditions
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Fig. 5
Distributions of posterior means for knot location across simulation conditions
Fig. 6
Fig. 6
Attrition pattern for the ECLS-K data

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References

    1. Agresti, A. (2012). Categorical data analysis (3rd ed.). Hoboken: Wiley.
    1. Bollen, K. A., & Curran, P. J. (2006). Latent curve models: A structural equation perspective. Hoboken: John Wiley & Sons.
    1. Can, S., van de Schoot, R., & Hox, J. (2015). Collinear latent variables in multilevel confirmatory factor analysis: A comparison of maximum likelihood and bayesian estimations. Educational and Psychological Measurement,75(3), 406–427. 10.1177/0013164414547959 - PMC - PubMed
    1. Cassiday, K. R., Cho, Y., & Harring, J. R. (2021). A comparison of label switching algorithms in the context of growth mixture models. Educational and Psychological Measurement,81(4), 668–697. 10.1177/0013164420970614 - PMC - PubMed
    1. Chung, J. M., Hutteman, R., van Aken, M. A., & Denissen, J. J. (2017). High, low, and in between: Self-esteem development from middle childhood to young adulthood. Journal of Research in Personality,70, 122–133. 10.1016/j.jrp.2017.07.001

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