Idiographic Dynamic Modeling for Behavioral Interventions with Mixed Data Partitioning and Discrete Simultaneous Perturbation Stochastic Approximation.

Rachael T Kha, Daniel E Rivera, Predrag Klasnja, Eric Hekler
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Abstract

This paper presents the use of discrete simultaneous perturbation stochastic approximation (DSPSA) as a routine method to efficiently determine features and parameters of idiographic (i.e. single subject) dynamic models for personalized behavioral interventions using various partitions of estimation and validation data. DSPSA is demonstrated as a valuable method to search over model features and regressor orders of AutoRegressive with eXogenous input estimated models using participant data from Just Walk (a behavioral intervention to promote physical activity in sedentary adults); results of DSPSA are compared to those of exhaustive search. In Just Walk, DSPSA efficiently and quickly estimates models of walking behavior, which can then be used to develop control systems to optimize the impacts of behavioral interventions. The use of DSPSA to evaluate models using various partitions of individual data into estimation and validation data sets also highlights data partitioning as an important feature of idiographic modeling that should be carefully considered.

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具有混合数据划分和离散同时扰动随机近似的行为干预的特征动态建模。
本文介绍了使用离散同时扰动随机近似(DSPSA)作为一种常规方法,使用各种估计和验证数据分区,有效地确定个性化行为干预的具体(即单受试者)动态模型的特征和参数。DSPSA被证明是一种有价值的方法,可以使用Just Walk(一种促进久坐成年人体育活动的行为干预)的参与者数据来搜索具有原始输入估计模型的自回归的模型特征和回归阶数;将DSPSA的结果与穷举搜索的结果进行了比较。在Just Walk中,DSPSA高效快速地估计步行行为的模型,然后可以用于开发控制系统,以优化行为干预的影响。使用DSPSA评估模型,将单个数据划分为估计和验证数据集,也突出了数据划分是具体建模的一个重要特征,应仔细考虑。
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2.40
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