Network Public Opinion Detection During the Coronavirus Pandemic: A Short-Text Relational Topic Model

Yuanchun Jiang, Ruicheng Liang, Ji Zhang, Jianshan Sun, Yezheng Liu, Yang Qian
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引用次数: 7

Abstract

Online social media provides rich and varied information reflecting the significant concerns of the public during the coronavirus pandemic. Analyzing what the public is concerned with from social media information can support policy-makers to maintain the stability of the social economy and life of the society. In this article, we focus on the detection of the network public opinions during the coronavirus pandemic. We propose a novel Relational Topic Model for Short texts (RTMS) to draw opinion topics from social media data. RTMS exploits the feature of texts in online social media and the opinion propagation patterns among individuals. Moreover, a dynamic version of RTMS (DRTMS) is proposed to capture the evolution of public opinions. Our experiment is conducted on a real-world dataset which includes 67,592 comments from 14,992 users. The results demonstrate that, compared with the benchmark methods, the proposed RTMS and DRTMS models can detect meaningful public opinions by leveraging the feature of social media data. It can also effectively capture the evolution of public concerns during different phases of the coronavirus pandemic.
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冠状病毒大流行期间的网络舆情检测:一个短文本关系主题模型
在线社交媒体提供了丰富多样的信息,反映了公众在冠状病毒大流行期间的重大关切。从社交媒体信息中分析公众关注的问题,可以支持决策者维护社会经济和社会生活的稳定。在这篇文章中,我们重点研究了冠状病毒大流行期间的网络舆情检测。为了从社交媒体数据中提取意见主题,我们提出了一种新的短文本关系主题模型。RTMS利用了网络社交媒体文本的特征和个人之间的意见传播模式。此外,本文还提出了一个动态版本的RTMS (DRTMS)来捕捉民意的演变。我们的实验是在一个真实世界的数据集上进行的,其中包括来自14,992名用户的67,592条评论。结果表明,与基准方法相比,本文提出的RTMS和DRTMS模型可以利用社交媒体数据的特征来检测有意义的民意。它还可以有效地捕捉到在冠状病毒大流行的不同阶段公众关注的演变。
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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