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Bender, A. R., Ganguli, A., Meiring, M., Hampstead, B. M., & Driver, C. C. (2022). Dynamic modeling of practice effects across the healthy aging - Alzheimer’s disease continuum. Frontiers in Aging Neuroscience, 14. https://doi.org/
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Luo, J., Zhang, B., Estabrook, R., Graham, E. K., Driver, C. C., Schalet, B. D., Turiano, N. A., Spiro III, A., & Mroczek, D. K. (2022). Personality and health: Disentangling their between-person and within-person relationship in three longitudinal studies. Journal of Personality and Social Psychology, 122(3), 493–522.
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Marciano, L., Driver, C. C., Schulz, P. J., & Camerini, A.-L. (2022). Dynamics of adolescents’ smartphone use and well-being are positive but ephemeral. Scientific Reports, 12(1316).
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Driver, C. C., & Voelkle, M. C. (2021). Hierarchical continuous time modeling. In J. F. Rauthmann (Ed.), The handbook of personality dynamics and processes (pp. 887–908). Academic Press.
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Driver, C. C. (2021). Computational efficiency in continuous (and discrete!) Time models – comment on Hecht and Zitzmann. Structural Equation Modeling: A Multidisciplinary Journal, 28(5), 791–793.
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Fandakova, Y., Leckey, S., Driver, C. C., Bunge, S. A., & Ghetti, S. (2019). Neural specificity of scene representations is related to memory performance in childhood. NeuroImage, 199, 105–113.
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Hecht, M., Hardt, K., Driver, C. C., & Voelkle, M. C. (2019). Bayesian continuous-time rasch models. Psychological Methods, 24(4), 516–537.
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Redhead, D., Cheng, J. T., Driver, C., Foulsham, T., & O’Gorman, R. (2019). On the dynamics of social hierarchy: A longitudinal investigation of the rise and fall of prestige, dominance, and social rank in naturalistic task groups. Evolution and Human Behavior, 40(2), 222–234.
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Voelkle, M. C., Gische, C., Driver, C. C., & Lindenberger, U. (2019). The role of time in the quest for understanding psychological mechanisms. Multivariate Behavioral Research, 53(6), 782–805.
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Planitz, B., Sanderson, P., Kipps, T., & Driver, C. (2013). Nurses’ self-reported smartphone use during clinical care. Proceedings of the Human Factors and Ergonomics Society Annual Meeting, 57(1), 738–742.
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