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Convolutional Regression Framework for Human Health Prediction Under Social Influences

机译:社会影响下人类健康预测的卷积回归框架

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Understanding the propagation of human health behavior, such as smoking and obesity, and identification of the factors that control such phenomenon is an important axea of research in recent years mainly because, in industrialized countries a substantial proportion of the mortality and quality of life is due to particular behavior patterns, and that these behavior patterns axe modifiable. Predicting the individuals who are going to be overweight or obese in future, as overweight and obesity propagate over dynamic human interaction network, is an important problem in this area. The problem has received limited attention from the network analysis and machine learning perspective till date, though. In this work, we propose a scalable supervised prediction model based on convolutional regression framework that is particularly suitable for short time series data. We propose various schemes to model social influence for health behavior change. Further we study the contribution of the primary factors of overweight and obesity, like unhealthy diets, recent weight gains and inactivity in the prediction task. A thorough experiment shows the superiority of the proposed method over the state-of-the-art.
机译:近年来,了解吸烟和肥胖等人类健康行为的传播以及识别控制这种现象的因素是重要的研究重点,这主要是因为在工业化国家中,很大一部分死亡率和生活质量是由于特定的行为模式,并且这些行为模式可以修改。在超重和肥胖症通过动态人际互动网络传播时,预测将来会超重或肥胖的个体是该领域的重要问题。到目前为止,从网络分析和机器学习的角度来看,这个问题受到的关注有限。在这项工作中,我们提出了一种基于卷积回归框架的可伸缩监督预测模型,该模型特别适用于短时间序列数据。我们提出了各种方案来模拟健康行为改变的社会影响。进一步,我们研究了超重和肥胖的主要因素的贡献,例如不健康的饮食,近期体重增加和预测任务不活跃。彻底的实验表明,所提出的方法优于最新技术。

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