Generating a Mental Health Curve for Monitoring Depression in Real Time by Incorporating Multimodal Feature Analysis Through Social Media Interactions

Pub Date : 2023-06-13 DOI:10.4018/ijiit.324600
Moumita Chatterjee, Piyush Kumar, Dhrubasish Sarkar
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Abstract

The coronavirus pandemic has led to a dramatic increase in depression cases worldwide. Several people are utilizing social media to share their depression or suicidal thoughts. Thus, the major goal of the proposed study is to examine Twitter posts by users and identify features that may indicate depressed symptoms among online users. A numerical metric for each user is proposed based on the sentiment value of their tweets, and it is demonstrated that this feature can detect depression with good accuracy by using several machine learning classifiers. The paper proposes a novel method for measuring the mental health index of an individual by combining the sentiment score with multimodal features extracted from his online activities. A real-time curve is generated using this index that can monitor a person's mental health in real time and offer real-time information about his state. The proposed model shows an accuracy of 89% using SVM, and proper feature selection is very essential for obtaining good performance.
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通过社交媒体互动,结合多模式特征分析,生成实时监测抑郁症的心理健康曲线
冠状病毒大流行导致全球抑郁症病例急剧增加。一些人利用社交媒体来分享他们的抑郁或自杀想法。因此,本研究的主要目的是研究用户发布的Twitter帖子,并确定可能表明在线用户出现抑郁症状的特征。基于每个用户推文的情绪值提出了一个数值度量,并通过使用几个机器学习分类器证明了该特征可以很好地检测抑郁症。本文提出了一种将情绪得分与从个人在线活动中提取的多模态特征相结合的测量个人心理健康指数的新方法。利用该指数生成的实时曲线可以实时监测一个人的心理健康状况,并提供有关他的状态的实时信息。使用支持向量机模型的准确率达到89%,正确的特征选择是获得良好性能的关键。
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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