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Understanding Weight Loss via Online Discussions: Content Analysis of Reddit Posts Using Topic Modeling and Word Clustering Techniques

机译:通过在线讨论了解减肥:使用主题建模和Word聚类技术的Reddit帖子的内容分析

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Background Maintaining a healthy weight can reduce the risk of developing many diseases, including type 2 diabetes, hypertension, and certain types of cancers. Online social media platforms are popular among people seeking social support regarding weight loss and sharing their weight loss experiences, which provides opportunities for learning about weight loss behaviors. Objective This study aimed to investigate the extent to which the content posted by users in the r/loseit subreddit, an online community for discussing weight loss, and online interactions were associated with their weight loss in terms of the number of replies and votes that these users received. Methods All posts that were published before January 2018 in r/loseit were collected. We focused on users who revealed their start weight, current weight, and goal weight and were active in this online community for at least 30 days. A topic modeling technique and a hierarchical clustering algorithm were used to obtain both global topics and local word semantic clusters. Finally, we used a regression model to learn the association between weight loss and topics, word semantic clusters, and online interactions. Results Our data comprised 477,904 posts that were published by 7660 users within a span of 7 years. We identified 25 topics, including food and drinks, calories, exercises, family members and friends, and communication. Our results showed that the start weight (β=.823; P &.001), active days (β=.017; P =.009), and median number of votes (β=.263; P =.02), mentions of exercises (β=.145; P &.001), and nutrition (β=.120; P &.001) were associated with higher weight loss. Users who lost more weight might be motivated by the negative emotions (β=?.098; P &.001) that they experienced before starting the journey of weight loss. In contrast, users who mentioned vacations (β=?.108; P =.005) and payments (β=?.112; P =.001) tended to experience relatively less weight loss. Mentions of family members (β=?.031; P =.03) and employment status (β=?.041; P =.03) were associated with less weight loss as well. Conclusions Our study showed that both online interactions and offline activities were associated with weight loss, suggesting that future interventions based on existing online platforms should focus on both aspects. Our findings suggest that online personal health data can be used to learn about health-related behaviors effectively.
机译:保持健康体重的背景可以降低发展许多疾病的风险,包括2型糖尿病,高血压和某些类型的癌症。在线社交媒体平台在寻求有关减肥和分享体重减轻经验的社会支持的人中很受欢迎,这为减肥行为提供了学习的机会。目的本研究旨在调查R / Lostit Dubreddit中的内容,在线社区讨论减肥和在线互动的程度,以及其在答复和投票数量方面的减肥相关联用户收到。方法收集了2018年1月之前发布的所有帖子。我们专注于透露他们的起始体重,当前体重和目标体重的用户,并且在这个在线社区中活跃至少30天。主题建模技术和分层聚类算法用于获取全局主题和本地字语义集群。最后,我们使用了回归模型来学习权力丢失和主题,词语语义集群和在线交互之间的关联。结果我们的数据包括477,904个帖子,在7年内发布了7660个用户。我们确定了25个主题,包括食物和饮料,卡路里,运动,家庭成员和朋友,以及沟通。我们的研究结果表明,起始重量(β= .823; p& .001),活性天(β= .017; p = .009)和中值的投票数(β= .263; p = .02) ,锻炼提及(β= .145; p& .001),营养(β= .120; p& .001)与更高的体重减轻有关。失去更多体重的用户可能受到负面情绪的动机(β= 098; P& .001),他们在开始减肥之旅之前经历过。相比之下,提到假期的用户(β= 108; p = .005)和付款(β= 32; p = .001)倾向于经历相对较少的体重减轻。家庭成员的提升(β= 031; p = .03)和就业状态(β= 041; p = .03)也与减肥损失较小。结论我们的研究表明,在线互动和离线活动都与减肥相关,这表明基于现有在线平台的未来干预应专注于两个方面。我们的研究结果表明,在线个人健康数据可用于有效了解与健康相关行为。

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