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Leveraging intensive longitudinal data to better understand health behaviors

机译:利用密集型纵向数据以更好地了解健康行为

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Behavioral scientists have historically relied on static modeling methodologies. The rise in mobile and wearable sensors has made intensive longitudinal data (ILD) — behavioral data measured frequently over time — increasingly available. Consequently, analytical frameworks are emerging that seek to reliably quantify dynamics reflected in these data. Employing an input-output perspective, dynamical systems models from engineering can characterize time-varying behaviors as processes of change. Specifically, ILD and parameter estimation routines from system identification can be leveraged together to offer parsimonious and quantitative descriptions of dynamic behavioral constructs. The utility of this approach for facilitating a better understanding of health behaviors is illustrated with two examples. In the first example, dynamical systems models are developed for Social Cognitive Theory (SCT), a prominent concept in behavioral science that considers interrelationships between personal factors, the environment, and behaviors. Estimated models are then obtained that explore the role of SCT in a physical activity intervention. The second example uses ILD to model day-to-day changes in smoking levels as a craving-mediated process of behavior change.
机译:行为科学家历史依赖于静态建模方法。移动和可穿戴传感器的兴起已经进行了密集的纵向数据(ILD) - 行为数据频繁测量时间 - 越来越可用。因此,正在出现分析框架,该框架寻求可靠地量化这些数据中反映的动态。采用输入输出透视图,工程的动态系统模型可以将时变行为作为变化的过程。具体地,可以利用来自系统识别的ILD和参数估计例程以提供动态行为结构的定义和定量描述。这种方法为了更好地理解健康行为的效用是用两个例子说明的。在第一个例子中,为社会认知理论(SCT)开发了动态系统模型,这是行为科学中突出的概念,这些概念在个人因素,环境和行为之间考虑相互关系。然后获得估计的模型,探讨SCT在物理活动干预中的作用。第二个例子使用ILD以模拟吸烟水平的日常变化,作为渴望的行为变化过程。

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