UBIWEAR:一个端到端的数据驱动框架,用于智能身体活动预测,为移动健康干预提供支持

Asterios Bampakis, Sofia Yfantidou, A. Vakali
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引用次数: 1

摘要

体育活动对个人的健康至关重要,这是无可争辩的。然而,缺乏身体活动的全球流行已经引起了重大的个人和社会经济影响。近年来,大量的工作已经展示了自我跟踪技术在创造积极健康行为改变方面的能力。这项工作的动机是个性化和适应性目标设定技术的潜力,通过自我跟踪来鼓励身体活动。为此,我们提出了UBIWEAR,这是一个智能身体活动预测的端到端框架,其最终目标是为数据驱动的目标设定干预提供支持。为了实现这一目标,我们实验了许多机器学习和深度学习范例,作为身体活动预测任务的稳健基准。为了训练我们的模型,我们使用了“我的心脏计数”,这是一个从数千名用户那里收集的开放的大规模数据集。我们还提出了一个自跟踪聚合数据预处理的规定性框架,以促进现实世界中嘈杂数据的数据整理。我们的最佳模型达到了1087步的MAE,在绝对误差方面比目前的技术水平低65%,证明了体育活动预测任务的可行性,并为未来的研究铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
UBIWEAR: An end-to-end, data-driven framework for intelligent physical activity prediction to empower mHealth interventions
It is indisputable that physical activity is vital for an individual’s health and wellness. However, a global prevalence of physical inactivity has induced significant personal and socioeconomic implications. In recent years, a significant amount of work has showcased the capabilities of self-tracking technology to create positive health behavior change. This work is motivated by the potential of personalized and adaptive goal-setting techniques in encouraging physical activity via self-tracking. To this end, we propose UBIWEAR, an end-to-end framework for intelligent physical activity prediction, with the ultimate goal to empower data-driven goal-setting interventions. To achieve this, we experiment with numerous machine learning and deep learning paradigms as a robust benchmark for physical activity prediction tasks. To train our models, we utilize, "MyHeart Counts", an open, large-scale dataset collected in-the-wild from thousands of users. We also propose a prescriptive framework for self-tracking aggregated data preprocessing, to facilitate data wrangling of real-world, noisy data. Our best model achieves a MAE of 1087 steps, 65% lower than the state of the art in terms of absolute error, proving the feasibility of the physical activity prediction task, and paving the way for future research.
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