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A Multilevel Predictive Model for Detecting Social Network Users with Depression

机译:抑郁症社交网络用户的多层次预测模型

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The society is currently witnessing an unprecedented growth in the incidence of mental disorders, with an estimated 300 million people suffering from depression globally. People with high life satisfaction tend to suffer fewer mental health issues. The large volume of data generated on social network platforms enables us to detect hidden patterns in data and obtain new insights. This work aims to (a) explore the relationship between life satisfaction and depression in social network users, using Facebook as an example, and (b) develop a multilevel predictive model to detect users with depression. We trained a set of predictive models on datasets from myPersonality project including 2,085 participants who took the Satisfaction with Life Scale and 614 users who submitted the Centre for Epidemiological Study Depression (CES-D) scale. The resulting multilevel model establishes a negative correlation between life satisfaction and depression, and it can also improve the accuracy of a predictive model using depressive labels alone.
机译:该协会目前目睹精神障碍的发病率空前增长,全球估计有3亿人患有抑郁症。生活满意度高的人往往会遭受较少的心理健康问题。在社交网络平台上生成的大量数据使我们能够检测数据中的隐藏模式并获得新的见解。这项工作旨在(a)以Facebook为例,探讨社交网络用户的生活满意度与抑郁之间的关系,以及(b)建立多层次的预测模型来检测患有抑郁的用户。我们在myPersonality项目的数据集上训练了一组预测模型,其中包括2,085名参加者对生活满意度的量表和614名提交了流行病学研究抑郁症中心(CES-D)量表的用户。由此产生的多层次模型在生活满意度和抑郁之间建立了负相关关系,并且还可以单独使用抑郁标签来提高预测模型的准确性。

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