Detecting Mental Distresses Using Social Behavior Analysis in the Context of COVID-19: A Survey

Author:

Dhelim Sahraoui1ORCID,Chen Liming2ORCID,Das Sajal K.3ORCID,Ning Huansheng4ORCID,Nugent Chris2ORCID,Leavey Gerard5ORCID,Pesch Dirk6ORCID,Bantry-White Eleanor7ORCID,Burns Devin8ORCID

Affiliation:

1. School of Computer Science, University College Dublin, Ireland

2. School of Computing, Ulster University, UK

3. Department of Computer Science, Missouri University of Science and Technology, USA

4. School of Computer and Communication Engineering, University of Science and Technology, Beijing, China

5. Bamford Centre for Mental Health and Wellbeing, Ulster University, UK

6. School of Computer Science and IT, University College Cork, Ireland

7. School of Applied Social Studies, University College Cork, Ireland

8. Department of Psychological Science, Missouri University of Science and Technology, USA

Abstract

Online social media provides a channel for monitoring people’s social behaviors from which to infer and detect their mental distresses. During the COVID-19 pandemic, online social networks were increasingly used to express opinions, views, and moods due to the restrictions on physical activities and in-person meetings, leading to a significant amount of diverse user-generated social media content. This offers a unique opportunity to examine how COVID-19 changed global behaviors regarding its ramifications on mental well-being. In this article, we surveyed the literature on social media analysis for the detection of mental distress, with a special emphasis on the studies published since the COVID-19 outbreak. We analyze relevant research and its characteristics and propose new approaches to organizing the large amount of studies arising from this emerging research area, thus drawing new views, insights, and knowledge for interested communities. Specifically, we first classify the studies in terms of feature extraction types, language usage patterns, aesthetic preferences, and online behaviors. We then explored various methods (including machine learning and deep learning techniques) for detecting mental health problems. Building upon the in-depth review, we present our findings and discuss future research directions and niche areas in detecting mental health problems using social media data. We also elaborate on the challenges of this fast-growing research area, such as technical issues in deploying such systems at scale as well as privacy and ethical concerns.

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science,Theoretical Computer Science

Reference173 articles.

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Edge-Enabled Metaverse: The Convergence of Metaverse and Mobile Edge Computing;Tsinghua Science and Technology;2024-06

2. Exploring Federated Learning to Trace Depression in Social Media with Language Models;2023 International Symposium on Computer Architecture and High Performance Computing Workshops (SBAC-PADW);2023-10-17

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