A Continuous-Time Dynamic Factor Model for Intensive Longitudinal Data Arising from Mobile Health Studies.

IF 2.9 2区 心理学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Madeline R Abbott, Walter H Dempsey, Inbal Nahum-Shani, Cho Y Lam, David W Wetter, Jeremy M G Taylor
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引用次数: 0

Abstract

Intensive longitudinal data (ILD) collected in mobile health (mHealth) studies contain rich information on the dynamics of multiple outcomes measured frequently over time. Motivated by an mHealth study in which participants self-report the intensity of many emotions multiple times per day, we describe a dynamic factor model that summarizes ILD as a low-dimensional, interpretable latent process. This model consists of (i) a measurement submodel-a factor model-that summarizes the multivariate longitudinal outcome as lower-dimensional latent variables and (ii) a structural submodel-an Ornstein-Uhlenbeck (OU) stochastic process-that captures the dynamics of the multivariate latent process in continuous time. We derive a closed-form likelihood for the marginal distribution of the outcome and the computationally-simpler sparse precision matrix for the OU process. We propose a block coordinate descent algorithm for estimation and use simulation studies to show that it has good statistical properties with ILD. Then, we use our method to analyze data from the mHealth study. We summarize the dynamics of 18 emotions using models with one, two, and three time-varying latent factors, which correspond to different behavioral science theories of emotions. We demonstrate how results can be interpreted to help improve behavioral science theories of momentary emotions, latent psychological states, and their dynamics.

流动健康研究中密集纵向数据的连续时间动态因子模型。
在移动健康(mHealth)研究中收集的密集纵向数据(ILD)包含了随时间频繁测量的多种结果动态的丰富信息。在一项移动健康研究的激励下,参与者每天多次自我报告许多情绪的强度,我们描述了一个动态因素模型,将ILD总结为一个低维的、可解释的潜在过程。该模型包括(i)一个测量子模型-一个将多变量纵向结果总结为低维潜在变量的因子模型和(ii)一个结构子模型-一个Ornstein-Uhlenbeck (OU)随机过程-捕捉连续时间内多变量潜在过程的动态。我们导出了结果的边际分布的封闭似然形式和OU过程的计算更简单的稀疏精度矩阵。我们提出了一种块坐标下降算法用于估计,并通过仿真研究表明它具有良好的ILD统计性能。然后,我们使用我们的方法来分析来自移动健康研究的数据。我们使用具有一个、两个和三个时变潜在因素的模型总结了18种情绪的动态,这些模型对应于不同的情绪行为科学理论。我们展示了如何解释结果,以帮助改进瞬间情绪、潜在心理状态及其动态的行为科学理论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Psychometrika
Psychometrika 数学-数学跨学科应用
CiteScore
4.40
自引率
10.00%
发文量
72
审稿时长
>12 weeks
期刊介绍: The journal Psychometrika is devoted to the advancement of theory and methodology for behavioral data in psychology, education and the social and behavioral sciences generally. Its coverage is offered in two sections: Theory and Methods (T& M), and Application Reviews and Case Studies (ARCS). T&M articles present original research and reviews on the development of quantitative models, statistical methods, and mathematical techniques for evaluating data from psychology, the social and behavioral sciences and related fields. Application Reviews can be integrative, drawing together disparate methodologies for applications, or comparative and evaluative, discussing advantages and disadvantages of one or more methodologies in applications. Case Studies highlight methodology that deepens understanding of substantive phenomena through more informative data analysis, or more elegant data description.
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