管理COVID-19信息用于精神疾病分类的三阶段方法

Shahid Hussain
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引用次数: 0

摘要

在新冠肺炎时代,社交媒体平台的使用率大幅增加,导致虚假信息的产生,对于领域专家来说,管理这些虚假信息是非常必要的,例如Reddit社交平台,人们通过相关帖子和评论传播有关健康问题的大量信息。管理关于COVID-19对精神疾病影响的错误信息可能对领域专家非常有益。为此,我们提出了一种两步法,可以帮助领域专家管理和分组关于COVID-19对精神疾病影响的帖子和评论信息。首先,我们从radit平台中提取知名的精神疾病信息(如抑郁症、焦虑症、强迫症和创伤后应激障碍)。其次,我们利用无监督学习算法和文本分类方法来管理信息。并根据专家意见建立了评价模型,对所提方法的有效性进行评价。实验结果表明了该方法的有效性。此外,我们观察到,与K-means([公式:见文])和凝聚([公式:见文])相比,模糊c-means是一种表现更好的学习方法(有[公式:见文])。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Three-Phase Methodology to Manage the COVID-19 Information for Classification of Mental Illness
In the COVID-19 era, the use of social media platforms has significantly increased leading to misinformation being produced whose management is quite necessary for the domain experts, such as the Reddit social platform where people disseminate extensive information about their health issues using relevant posts and comments. The management of misinformation about COVID-19 impact on mental illness could be quite beneficial for the domain experts. In this regard, we proposed a two-step methodology which could aid domain experts to manage and group the posts and comments information with respect to COVID-19 impact on mental illness. First, we extract the information of well-known mental illnesses (such as depression, anxiety, OCD and PTSD) from the Raddit platform. Second, we leverage the capabilities of unsupervised learning algorithms and text categorisation approach to manage the information. We also proposed the evaluation model to assess the efficacy of the proposed method according to expert opinion. The experimental results indicate the efficacy of the proposed method. Moreover, we observed fuzzy c-means as an outperformed learner (with [Formula: see text]) as compared to K-means ([Formula: see text]) and Agglomerative ([Formula: see text]).
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