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Exploring Abnormal Behavior Patterns of Online Users With Emotional Eating Behavior: Topic Modeling Study

机译:用情感饮食行为探索在线用户的异常行为模式:主题建模研究

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Background Emotional eating (EE) is one of the most significant symptoms of various eating disorders. It has been difficult to collect a large amount of behavioral data on EE; therefore, only partial studies of this symptom have been conducted. To provide adequate support for online social media users with symptoms of EE, we must understand their behavior patterns to design a sophisticated personalized support system (PSS). Objective This study aimed to analyze the behavior patterns of emotional eaters as the first step to designing a personalized intervention system. Methods The machine learning (ML) framework and Latent Dirichlet Allocation (LDA) topic modeling tool were used to collect and analyze behavioral data on EE. Data from a subcommunity of Reddit, /r/loseit, were analyzed. This dataset included all posts and feedback from July 2014 to May 2018, comprising 185,950 posts and 3,528,107 comments. In addition, deleted and improperly collected data were eliminated. Stochastic gradient descent–based ML classifier with an accuracy of 90.64% was developed to collect refined behavioral data of online users with EE behaviors. The expert group that labeled the dataset to train the ML classifiers included a medical doctor specializing in EE diagnosis and a nutritionist with profound knowledge of EE behavior. The experts labeled 5126 posts as EE (coded as 1) or others (coded as 0). Finally, the topic modeling process was conducted with LDA. Results The following 4 macroperspective topics of online EE behaviors were identified through linguistic evidence regarding each topic: addressing feelings, sharing physical changes, sharing and asking for dietary information, and sharing dietary strategies. The 5 main topics of feedback were dietary information, compliments, consolation, automatic bot feedback, and health information. The feedback topic distribution significantly differed depending on the type of EE behavior (overall P &.001). Conclusions This study introduces a data-driven approach for analyzing behavior patterns of social website users with EE behaviors. We discovered the possibility of the LDA topic model as an exploratory user study method for abnormal behaviors in medical research. We also investigated the possibilities of ML- and topic modeling–based classifiers to automatically categorize text-based behavioral data, which could be applied to personalized medicine in future research.
机译:背景背景情绪饮食(EE)是各种饮食障碍最重要的症状之一。在EE上难以收集大量的行为数据;因此,已经进行了对这种症状的部分研究。为了为具有EE的症状提供对在线社交媒体用户的充分支持,我们必须了解他们的行为模式来设计复杂的个性化支持系统(PSS)。目的本研究旨在分析情绪食用者的行为模式,作为设计个性化干预系统的第一步。方法采用机器学习(ML)框架和潜在Dirichlet分配(LDA)主题建模工具用于收集和分析EE上的行为数据。分析了来自Reddit,/ R / Lostit的子行程的数据。此数据集包括2014年7月至2018年5月的所有帖子和反馈,包括185,950个帖子和3,528,107评论。此外,消除了删除和不正确的数据。基于随机梯度下降的ML分类器,精度为90.64%,以收集具有EE行为的在线用户的精制行为数据。标有培训DataSet的专家组包括一名专门从事EE诊断和营养师的医生,具有深刻的EE行为知识。专家标记为ee(编码为1)或其他帖子(编码为0)。最后,使用LDA进行主题建模过程。结果通过关于每个主题的语言证据确定了在线EE行为的4个大型ee行为的主题:解决感受,分享物理变更,分享和询问饮食信息,并分享饮食策略。反馈的5个主要主题是饮食信息,恭维,安慰,自动机器人反馈和健康信息。反馈主题分布根据EE行为的类型而显着不同(总体P <.001)。结论本研究介绍了一种数据驱动方法,用于分析具有EE行为的社交网站用户的行为模式。我们发现了LDA主题模型作为医学研究中异常行为的探索性用户学习方法。我们还调查了ML-和主题建模的分类器的可能性,以自动对基于文本的行为数据进行分类,这可以在未来的研究中应用于个性化药物。

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