Quantified Self Meets Social Media: Sharing of Weight Updates on Twitter

Yafei Wang, Ingmar Weber, P. Mitra
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引用次数: 26

Abstract

An increasing number of people use wearables and other smart devices to quantify various health conditions, ranging from sleep patterns, to body weight, to heart rates. Of these "Quantified Selfs" many choose to openly share their data via online social networks such as Twitter and Facebook. In this study, we use data for users who have chosen to connect their smart scales to Twitter, providing both a reliable time series of their body weight, as well as insights into their social surroundings and general online behavior. Concretely, we look at which social media features are predictive of physical status, such as body weight at the individual level, and activity patterns at the population level. We show that it is possible to predict an individual's weight using their online social behaviors, such as their self-description and tweets. Weekly and monthly patterns of quantified-self behaviors are also discovered. These findings could contribute to building models to monitor public health and to have more customized personal training interventions. While there are many studies using either quantified self or social media data in isolation, this is one of the few that combines the two data sources and, to the best of our knowledge, the only one that uses public data.
量化自我与社交媒体:在推特上分享体重更新
越来越多的人使用可穿戴设备和其他智能设备来量化各种健康状况,从睡眠模式到体重,再到心率。在这些“量化自我”中,许多人选择通过Twitter和Facebook等在线社交网络公开分享他们的数据。在这项研究中,我们使用了选择将智能秤连接到Twitter的用户的数据,提供了他们体重的可靠时间序列,以及对他们的社交环境和一般在线行为的见解。具体来说,我们研究了哪些社交媒体特征可以预测身体状况,比如个人层面的体重,以及群体层面的活动模式。我们的研究表明,通过一个人的在线社交行为,比如他们的自我描述和推文,来预测一个人的体重是可能的。每周和每月的量化自我行为模式也被发现。这些发现可能有助于建立监测公共卫生的模型,并有更多定制的个人培训干预措施。虽然有许多研究单独使用了量化的自我数据或社交媒体数据,但这是为数不多的将这两种数据来源结合起来的研究之一,而且据我们所知,这是唯一使用公共数据的研究。
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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