Using Adaptive Bandit Experiments to Increase and Investigate Engagement in Mental Health.

Harsh Kumar, Tong Li, Jiakai Shi, Ilya Musabirov, Rachel Kornfield, Jonah Meyerhoff, Ananya Bhattacharjee, Chris Karr, Theresa Nguyen, David Mohr, Anna Rafferty, Sofia Villar, Nina Deliu, Joseph Jay Williams
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Abstract

Digital mental health (DMH) interventions, such as text-message-based lessons and activities, offer immense potential for accessible mental health support. While these interventions can be effective, real-world experimental testing can further enhance their design and impact. Adaptive experimentation, utilizing algorithms like Thompson Sampling for (contextual) multi-armed bandit (MAB) problems, can lead to continuous improvement and personalization. However, it remains unclear when these algorithms can simultaneously increase user experience rewards and facilitate appropriate data collection for social-behavioral scientists to analyze with sufficient statistical confidence. Although a growing body of research addresses the practical and statistical aspects of MAB and other adaptive algorithms, further exploration is needed to assess their impact across diverse real-world contexts. This paper presents a software system developed over two years that allows text-messaging intervention components to be adapted using bandit and other algorithms while collecting data for side-by-side comparison with traditional uniform random non-adaptive experiments. We evaluate the system by deploying a text-message-based DMH intervention to 1100 users, recruited through a large mental health non-profit organization, and share the path forward for deploying this system at scale. This system not only enables applications in mental health but could also serve as a model testbed for adaptive experimentation algorithms in other domains.

利用适应性匪徒实验来提高和调查心理健康方面的参与度。
数字心理健康(DMH)干预措施,如基于短信的课程和活动,为提供便捷的心理健康支持提供了巨大的潜力。虽然这些干预措施可能很有效,但真实世界的实验测试可以进一步加强其设计和影响。利用汤普森采样(Thompson Sampling)等算法对(上下文)多臂匪徒(MAB)问题进行自适应实验,可以实现持续改进和个性化。然而,目前仍不清楚这些算法何时能同时提高用户体验奖励,并促进适当的数据收集,使社会行为科学家能够以足够的统计信心进行分析。尽管越来越多的研究涉及到了 MAB 和其他自适应算法的实用性和统计方面,但仍需进一步探索,以评估它们在不同现实环境中的影响。本文介绍了一个历时两年开发的软件系统,该系统允许使用强盗算法和其他算法调整文本信息干预组件,同时收集数据,以便与传统的统一随机非适应性实验进行并排比较。我们通过向 1100 名用户部署基于文本信息的 DMH 干预来评估该系统,这些用户是通过一家大型心理健康非营利组织招募的,我们还分享了大规模部署该系统的前进之路。该系统不仅可以应用于心理健康领域,还可以作为自适应实验算法在其他领域的示范测试平台。
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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