逻辑与具体
合法的
虚假关系
计算机科学
机器学习
人工智能
相关性(法律)
估计
噪音(视频)
数据挖掘
数据科学
芯(光纤)
认知心理学
实证研究
心理学
光学(聚焦)
迭代求精
纵向数据
计量经济学
可解释性
迭代和增量开发
管理科学
迭代法
群(周期表)
构造(python库)
作者
Chaewon Lee,Kathleen Gates
标识
DOI:10.1146/annurev-clinpsy-061724-080138
摘要
Psychological processes are highly heterogeneous, even among individuals with the same diagnosis. This variability poses challenges for nomothetic approaches that assume everyone is guided by the same broad psychological principles. In contrast, idiographic approaches focus on within-person variability but are often prone to noise and spurious relations and may not translate easily to clinical use due to limited generalizability. These constraints have motivated integrative approaches designed to model person-specific dynamics while still drawing on patterns that generalize across people. In this article, we review group iterative multiple model estimation (GIMME), one of the most widely used integrative approaches for modeling intensive longitudinal data (ILD) in clinical research. GIMME estimates person-specific dynamics using majority-shared paths as the backbone of individual models. We begin by introducing GIMME's core algorithm and its major extensions. We then review simulation studies evaluating its performance, survey empirical applications in clinical psychology, and outline alternative ILD methods. Finally, we discuss current limitations of GIMME and propose directions for its continued refinement.
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