Personalizing Mobile Fitness Apps using Reinforcement Learning.

CEUR workshop proceedings Pub Date : 2018-03-07
Mo Zhou, Yonatan Mintz, Yoshimi Fukuoka, Ken Goldberg, Elena Flowers, Philip Kaminsky, Alejandro Castillejo, Anil Aswani
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Abstract

Despite the vast number of mobile fitness applications (apps) and their potential advantages in promoting physical activity, many existing apps lack behavior-change features and are not able to maintain behavior change motivation. This paper describes a novel fitness app called CalFit, which implements important behavior-change features like dynamic goal setting and self-monitoring. CalFit uses a reinforcement learning algorithm to generate personalized daily step goals that are challenging but attainable. We conducted the Mobile Student Activity Reinforcement (mSTAR) study with 13 college students to evaluate the efficacy of the CalFit app. The control group (receiving goals of 10,000 steps/day) had a decrease in daily step count of 1,520 (SD ± 740) between baseline and 10-weeks, compared to an increase of 700 (SD ± 830) in the intervention group (receiving personalized step goals). The difference in daily steps between the two groups was 2,220, with a statistically significant p = 0.039.

Abstract Image

Abstract Image

Abstract Image

利用强化学习实现移动健身应用程序的个性化。
尽管移动健身应用程序(Apps)数量庞大,而且在促进体育锻炼方面具有潜在优势,但许多现有应用程序缺乏改变行为的功能,无法维持改变行为的动力。本文介绍了一款名为 CalFit 的新型健身应用程序,它实现了动态目标设定和自我监控等重要的行为改变功能。CalFit 使用强化学习算法生成具有挑战性但可实现的个性化每日步数目标。我们对 13 名大学生进行了移动学生活动强化(mSTAR)研究,以评估 CalFit 应用程序的功效。对照组(接受 10,000 步/天的目标)的每日步数在基线和 10 周之间减少了 1,520 步(标准差 ± 740),而干预组(接受个性化步数目标)则增加了 700 步(标准差 ± 830)。两组的每日步数相差 2220 步,P = 0.039,具有显著的统计学意义。
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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