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Utilizing Longitudinal Data to Build Decision Trees for Profile Building and Predicting Eating Behavior

机译:利用纵向数据构建决策树以进行个人资料构建和预测饮食行为

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In this paper a framework for warning people when they are at risk of unhealthy eating is presented. Data is collected trough a mo- bile application called “ThinkSlim” which was developed for the purpose of studying eating behavior using Ecological Momentary Assessment (EMA) principles. Data is converted in order to allow early prediction of healthy and unhealthy eating events and a decision tree algorithm taking into account the longitudinal structure of the dataset is utilized to predict healthy versus unhealthy eating events. Rules that are derived from this decision tree are used to cluster users to groups based on the rule triggering frequen- cies. Groups created are used for providing users with semi-tailored feedback and are analyzed providing useful insights regarding the conditions that lead to unhealthy eating among different participants allowing for building different eating profiles.
机译:在本文中,提出了一个警告人们何时有不健康饮食风险的框架。数据是通过名为“ ThinkSlim”的移动应用程序收集的,该应用程序是为了使用生态矩评估(EMA)原理研究饮食行为而开发的。数据被转换以便允许健康和不健康饮食事件的早期预测,并且考虑到数据集的纵向结构的决策树算法被用来预测健康与不健康饮食事件。从该决策树派生的规则用于根据规则触发频率将用户分为几组。创建的组用于为用户提供半量身定制的反馈,并对其进行分析,以提供有关导致不同参与者之间饮食不健康的状况的有用见解,从而建立不同的饮食习惯。

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