Mobile Sensing: Leveraging Machine Learning for Efficient Human Behavior Modeling

Erin K. Barrett, Cameron M. Fard, Hannah N. Katinas, Charles V. Moens, Lauren E. Perry, Blake E. Ruddy, Shalin S Shah, Ian Tucker, Tucker J. Wilson, Mark Rucker, Lihua Cai, Laura E. Barnes, M. Boukhechba
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引用次数: 2

Abstract

Smartphones can collect millions of data points from each of its users daily, contributing to a significant change in how the healthcare community approaches health monitoring. This paper provides a framework for how smartphone sensor data can be collected, cleaned, stored, and modeled to effectively predict human states as a step towards health monitoring. To develop robust contextual models, a three-week study was conducted to collect data through a mobile crowdsensing application named Sensus. In this study, participants used multiple sensing strategies, ranging from infrequent sampling to continuous sampling, to determine the effect each has on data integrity and battery life. For a future study, a dynamic data collection strategy was developed that uses a machine learning model trained on existing data collected from 220 participants to forecast when a smartphone will be active and trigger sensor sampling accordingly. Results of this study include 1) extraction of model features that deliver maximized data quality with minimized battery consumption as compared to pre-existing baseline models, 2) implementation of context-driven modeling of user smartphone data on user's contextual environment, and 3) customization of a time-series database for optimized data queries used in metadata visualizations. The adaptive sensing models produced could be used in future large population studies that efficiently examine patterns of behavior in multiple individuals over extended periods to identify disease indicators present in an average user’s daily life.
移动传感:利用机器学习进行高效的人类行为建模
智能手机每天可以从每个用户那里收集数百万个数据点,这为医疗保健社区的健康监测方式带来了重大变化。本文为智能手机传感器数据的收集、清理、存储和建模提供了一个框架,以有效地预测人类状态,作为迈向健康监测的一步。为了建立稳健的情境模型,我们进行了为期三周的研究,通过名为Sensus的移动众测应用程序收集数据。在本研究中,参与者使用了多种传感策略,从不频繁采样到连续采样,以确定每种策略对数据完整性和电池寿命的影响。在未来的研究中,研究人员开发了一种动态数据收集策略,该策略使用机器学习模型对220名参与者收集的现有数据进行训练,以预测智能手机何时处于活动状态,并相应地触发传感器采样。本研究的结果包括:1)与已有的基线模型相比,提取模型特征,以最小化电池消耗提供最大的数据质量;2)在用户的上下文环境中实现用户智能手机数据的上下文驱动建模;3)定制时间序列数据库,用于优化元数据可视化中使用的数据查询。所产生的自适应传感模型可用于未来的大规模人口研究,有效地检查长时间内多个个体的行为模式,以确定普通用户日常生活中存在的疾病指标。
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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