Detecting Depressed Users in Online Forums

Anu Shrestha, Francesca Spezzano
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引用次数: 14

Abstract

Depression is the most common mental illness in the U.S., with 6.7% of all adults who have experienced a major depressive episode. Unfortunately, depression extends to teens and young users as well, and researchers observed an increasing rate in the recent years (from 8.7% in 2005 to 11.3% in 2014 in adolescents and from 8.8% to 9.6% in young adults), especially among girls and women. People themselves are a barrier to fight this disease as they tend to hide their symptoms and do not receive treatments. However, protected by anonymity, they share their sentiments on the Web, looking for help. In this paper, we address the problem of detecting depressed users in online forums. We analyze user behavior in the Rea-chOut.com online forum, a platform providing a supportive environment for young people to discuss their everyday issues, including depression. We examine the linguistic style of user posts in combination with network-based features modeling how users connect in the forum. Our results show that network features are strong predictors of depressed users and, by combining them with user post linguistic features, we can achieve an average precision of 0.78 (vs. 0.47 of a random classifier and 0.71 of linguistic features only) and perform better than related work (F1-measure of 0.63 vs. 0.50).
检测在线论坛中的抑郁用户
抑郁症是美国最常见的精神疾病,6.7%的成年人经历过严重的抑郁症发作。不幸的是,青少年和年轻用户也会患上抑郁症,研究人员观察到近年来抑郁症的发病率不断上升(青少年从2005年的8.7%上升到2014年的11.3%,年轻人从8.8%上升到9.6%),尤其是在女孩和女性中。人们本身是对抗这种疾病的障碍,因为他们往往隐藏自己的症状,不接受治疗。然而,在匿名的保护下,他们在网上分享自己的情绪,寻求帮助。在本文中,我们解决了在在线论坛中检测抑郁用户的问题。我们分析了Rea-chOut.com在线论坛的用户行为,这是一个为年轻人提供支持性环境的平台,可以讨论他们的日常问题,包括抑郁症。我们将用户帖子的语言风格与基于网络的特征相结合,对用户在论坛中的连接方式进行建模。我们的研究结果表明,网络特征是抑郁用户的强大预测因子,通过将它们与用户帖子语言特征相结合,我们可以实现0.78的平均精度(相对于随机分类器的0.47和语言特征的0.71),并且表现优于相关工作(f1测量值为0.63 vs 0.50)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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