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Autores principales: Meng, Xiang, Dempsey, Walter, Liao, Peng, Reid, Nick, Klasnja, Pedja, Murphy, Susan
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2501.02137
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author Meng, Xiang
Dempsey, Walter
Liao, Peng
Reid, Nick
Klasnja, Pedja
Murphy, Susan
author_facet Meng, Xiang
Dempsey, Walter
Liao, Peng
Reid, Nick
Klasnja, Pedja
Murphy, Susan
contents Micro-randomized trials (MRTs), which sequentially randomize participants at multiple decision times, have gained prominence in digital intervention development. These sequential randomizations are often subject to certain constraints. In the MRT called HeartSteps V2V3, where an intervention is designed to interrupt sedentary behavior, two core design constraints need to be managed: an average of 1.5 interventions across days and the uniform delivery of interventions across decision times. Meeting both constraints, especially when the times allowed for randomization are not determined beforehand, is challenging. An online algorithm was implemented to meet these constraints in the HeartSteps V2V3 MRT. We present a case study using data from the HeartSteps V2V3 MRT, where we select appropriate metrics, discuss issues in making an accurate evaluation, and assess the algorithm's performance. Our evaluation shows that the algorithm performed well in meeting the two constraints. Furthermore, we identify areas for improvement and provide recommendations for designers of MRTs that need to satisfy these core design constraints.
format Preprint
id arxiv_https___arxiv_org_abs_2501_02137
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Evaluation of the HeartSteps Online Sampling Algorithm
Meng, Xiang
Dempsey, Walter
Liao, Peng
Reid, Nick
Klasnja, Pedja
Murphy, Susan
Applications
Methodology
Micro-randomized trials (MRTs), which sequentially randomize participants at multiple decision times, have gained prominence in digital intervention development. These sequential randomizations are often subject to certain constraints. In the MRT called HeartSteps V2V3, where an intervention is designed to interrupt sedentary behavior, two core design constraints need to be managed: an average of 1.5 interventions across days and the uniform delivery of interventions across decision times. Meeting both constraints, especially when the times allowed for randomization are not determined beforehand, is challenging. An online algorithm was implemented to meet these constraints in the HeartSteps V2V3 MRT. We present a case study using data from the HeartSteps V2V3 MRT, where we select appropriate metrics, discuss issues in making an accurate evaluation, and assess the algorithm's performance. Our evaluation shows that the algorithm performed well in meeting the two constraints. Furthermore, we identify areas for improvement and provide recommendations for designers of MRTs that need to satisfy these core design constraints.
title Evaluation of the HeartSteps Online Sampling Algorithm
topic Applications
Methodology
url https://arxiv.org/abs/2501.02137