潜在增长模型
心理学
弹道
样品(材料)
结构方程建模
应用心理学
发展心理学
计算机科学
机器学习
化学
物理
色谱法
天文
作者
Sheila Frankfurt,Patricia Frazier,Moin Syed,Kyoung Rae Jung
标识
DOI:10.1177/0011000016658097
摘要
Many issues of interest to counseling psychologists involve questions regarding how individuals change over time. Although counseling psychologists often examine average levels of change, statistical methods can also identify patterns of change over time by empirically grouping together individuals with similar patterns of change (e.g., group-based trajectory modeling and latent growth mixture modeling). The purpose of this article is to provide an overview of these methods for counseling psychologists. We discuss the conceptual frameworks and assumptions of average-level and person-centered techniques such as group-based trajectory modeling and latent growth mixture modeling. We provide a nontechnical guide for conducting these analyses using data from a study of psychotherapy outcomes in a sample of mental health center clients ( N = 1,050). We discuss caveats associated with these methods, including the potential for overinterpreting nongeneralizable results. Last, we suggest best practices for reporting and interpreting results.
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