A Survey of Computational Methods for Online Mental State Assessment on Social Media

E. A. Ríssola, D. Losada, F. Crestani
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引用次数: 32

Abstract

Mental state assessment by analysing user-generated content is a field that has recently attracted considerable attention. Today, many people are increasingly utilising online social media platforms to share their feelings and moods. This provides a unique opportunity for researchers and health practitioners to proactively identify linguistic markers or patterns that correlate with mental disorders such as depression, schizophrenia or suicide behaviour. This survey describes and reviews the approaches that have been proposed for mental state assessment and identification of disorders using online digital records. The presented studies are organised according to the assessment technology and the feature extraction process conducted. We also present a series of studies which explore different aspects of the language and behaviour of individuals suffering from mental disorders, and discuss various aspects related to the development of experimental frameworks. Furthermore, ethical considerations regarding the treatment of individuals’ data are outlined. The main contributions of this survey are a comprehensive analysis of the proposed approaches for online mental state assessment on social media, a structured categorisation of the methods according to their design principles, lessons learnt over the years and a discussion on possible avenues for future research.
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社交媒体在线心理状态评估计算方法研究
通过分析用户生成的内容来评估心理状态是最近引起相当关注的一个领域。如今,许多人越来越多地利用在线社交媒体平台来分享他们的感受和情绪。这为研究人员和卫生从业人员提供了一个独特的机会,可以主动识别与抑郁症、精神分裂症或自杀行为等精神障碍相关的语言标记或模式。本调查描述和回顾了已经提出的使用在线数字记录进行精神状态评估和疾病识别的方法。本文的研究是根据评估技术和特征提取过程进行的。我们还提出了一系列研究,这些研究探讨了精神障碍患者的语言和行为的不同方面,并讨论了与实验框架发展相关的各个方面。此外,还概述了有关个人数据处理的道德考虑。本调查的主要贡献是对社交媒体在线心理状态评估的拟议方法进行全面分析,根据其设计原则对方法进行结构化分类,多年来吸取的经验教训以及对未来研究可能途径的讨论。
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