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The Use of Growth Mixture Modeling for Studying Resilience to Major Life Stressors in Adulthood and Old Age: Lessons for Class Size and Identification and Model Selection

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  • Frank J Infurna
  • Kevin J Grimm

Abstract

Objectives: Growth mixture modeling (GMM) combines latent growth curve and mixture modeling approaches and is typically used to identify discrete trajectories following major life stressors (MLS). However, GMM is often applied to data that does not meet the statistical assumptions of the model (e.g., within-class normality) and researchers often do not test additional model constraints (e.g., homogeneity of variance across classes), which can lead to incorrect conclusions regarding the number and nature of the trajectories. We evaluate how these methodological assumptions influence trajectory size and identification in the study of resilience to MLS.MethodWe use data on changes in subjective well-being and depressive symptoms following spousal loss from the HILDA and HRS. Results: Findings drastically differ when constraining the variances to be homogenous versus heterogeneous across trajectories, with overextraction being more common when constraining the variances to be homogeneous across trajectories. In instances, when the data are non-normally distributed, assuming normally distributed data increases the extraction of latent classes. Discussion: Our findings showcase that the assumptions typically underlying GMM are not tenable, influencing trajectory size and identification and most importantly, misinforming conceptual models of resilience. The discussion focuses on how GMM can be leveraged to effectively examine trajectories of adaptation following MLS and avenues for future research.

Suggested Citation

  • Frank J Infurna & Kevin J Grimm, 2018. "The Use of Growth Mixture Modeling for Studying Resilience to Major Life Stressors in Adulthood and Old Age: Lessons for Class Size and Identification and Model Selection," The Journals of Gerontology: Series B, The Gerontological Society of America, vol. 73(1), pages 148-159.
  • Handle: RePEc:oup:geronb:v:73:y:2018:i:1:p:148-159.
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    File URL: http://hdl.handle.net/10.1093/geronb/gbx019
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    1. Galatzer-Levy, Isaac R. & Bonanno, George A., 2012. "Beyond normality in the study of bereavement: Heterogeneity in depression outcomes following loss in older adults," Social Science & Medicine, Elsevier, vol. 74(12), pages 1987-1994.
    2. Anthony D. Mancini & George A. Bonanno & Andrew E. Clark, 2011. "Stepping Off the Hedonic Treadmill: Individual Differences in Response to Marriage, Divorce, and Spousal Bereavement," PSE-Ecole d'économie de Paris (Postprint) halshs-00654610, HAL.
    3. Leisch, Friedrich, 2004. "FlexMix: A General Framework for Finite Mixture Models and Latent Class Regression in R," Journal of Statistical Software, Foundation for Open Access Statistics, vol. 11(i08).
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