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Information Needs Mining of COVID-19 in Chinese Online Health Communities

机译:信息需要挖掘Covid-19在中国在线健康社区

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This study explores the information needs for the novel coronavirus pneumonia (COVID-19) in Chinese online health communities (OHCs). Based on the question and answer data about COVID-19 in six Chinese OHCs, topic mining and data analysis were conducted. We propose a CL-LDA topic model (Latent Dirichlet Allocation Model with co-occurrence of lexical meaning) based on lexical meaning co-occurrence analysis and LDA topic model. Four main information need topics and their proportion are found in this study, including symptom (45.50%), prevention (36.11%), inspection (10.97%), and treatment (7.42%). We also discover that men are most concerned about symptom information while women are most concerned about prevention information; young users have the largest proportion of information needs, and they are most concerned about prevention information. Experiment results show that the CL-LDA model can well adapt to the topic mining task of short text which is semantic sparse and lacking co-occurrence information in OHCs. The research results are helpful for OHCs to provide accurate information assistance and improve service quality. (C) 2021 Elsevier Inc. All rights reserved.
机译:本研究探讨了在中国在线健康社区(OHCS)中新型冠状病毒肺炎(Covid-19)的信息需求。根据关于Covid-19的问题和答案数据,在六个中国OBC中,进行了主题挖掘和数据分析。基于词汇含义共同发生分析和LDA主题模型,我们提出了一个CL-LDA主题模型(具有词汇含义的共同发生的潜在的Dirichlet分配模型)。需要有四个主要信息议题及其比例在本研究中发现,包括症状(45.50%),预防(36.11%),检查(10.97%)和治疗(7.42%)。我们还发现,男性最关心症状信息,而妇女最关心的是预防信息;年轻用户拥有最大的信息需求比例,最关心预防信息。实验结果表明,CL-LDA模型可以很好地适应短文本的挖掘任务,这是语义稀疏和缺乏OHC中的共同发生信息。研究结果有助于OCCS提供准确的信息辅助和提高服务质量。 (c)2021 Elsevier Inc.保留所有权利。

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