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Advancing statistical analysis of ambulatory assessment data in the study of addictive behavior: A primer on three person-oriented techniques

机译:促进上瘾行为研究中的动态评估数据统计分析:三种面向三种技术的底漆

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摘要

Ambulatory assessment (AA) methodologies have the potential to increase understanding and treatment of addictive behavior in seemingly unprecedented ways, due in part, to their emphasis on intensive repeated assessments of an individual's addictive behavior in context. But, many analytic techniques traditionally applied to AA data - techniques that average across people and time - do not fully leverage this potential. In an effort to take advantage of the individualized, temporal nature of AA data on addictive behavior, the current paper considers three underutilized person-oriented analytic techniques: multilevel modeling, p-technique, and group iterative multiple model estimation. After reviewing prevailing analytic techniques, each person-oriented technique is presented, AA data specifications are mentioned, an example analysis using generated data is provided, and advantages and limitations are discussed; the paper closes with a brief comparison across techniques. Increasing use of person-oriented techniques will substantially enhance inferences that can be drawn from AA data on addictive behavior and has implications for the development of individualized interventions.
机译:守护评估(AA)方法有可能提高似乎前所未有的方式的理解和治疗令人前言的方式,部分原因是他们强调在上下文中对个人上瘾行为的密集重复评估。但是,许多传统上应用于AA数据的分析技术 - 在人们和时间平均的技术 - 不要完全利用这种潜力。努力利用AA数据的个性化,时间性性质的令人上瘾行为,目前的论文考虑了三种未充分利用的以人为本的分析技术:多级建模,P-Technology和组迭代多模型估计。在审查普遍的分析技术之后,提出了每个以人为本的技术,提到了AA数据规范,提供了使用生成数据的示例分析,并讨论了优点和限制;本文结束了技术简要比较。越来越多的人导向技术将大大提高推论,可以从AA数据中吸取的关于令人上瘾行为,并对个性化干预措施的发展有影响。

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