School of Management, Harbin Institute of Technology, Harbin, China.
School of Humanities, Social Sciences and Law, Harbin Institute of Technology, Harbin, China.
Front Public Health. 2023 Mar 16;11:1097796. doi: 10.3389/fpubh.2023.1097796. eCollection 2023.
Public sentiments arising from public opinion communication pose a serious psychological risk to public and interfere the communication of nonpharmacological intervention information during the COVID-19 pandemic. Problems caused by public sentiments need to be timely addressed and resolved to support public opinion management.
This study aims to investigate the quantified multidimensional public sentiments characteristics for helping solve the public sentiments issues and strengthen public opinion management.
This study collected the user interaction data from the Weibo platform, including 73,604 Weibo posts and 1,811,703 Weibo comments. Deep learning based on pretraining model, topics clustering and correlation analysis were used to conduct quantitative analysis on time series characteristics, content-based characteristics and audience response characteristics of public sentiments in public opinion during the pandemic.
The research findings were as follows: first, public sentiments erupted after priming, and the time series of public sentiments had window periods. Second, public sentiments were related to public discussion topics. The more negative the audience sentiments were, the more deeply the public participated in public discussions. Third, audience sentiments were independent of Weibo posts and user attributes, the steering role of opinion leaders was invalid in changing audience sentiments.
Since the COVID-19 pandemic, there has been an increasing demand for public opinion management on social media. Our study on the quantified multidimensional public sentiments characteristics is one of the methodological contributions to reinforce public opinion management from a practical perspective.
公众舆论传播所产生的公众情绪,对公众心理造成严重风险,干扰新冠疫情期间非药物干预信息的传播。需要及时解决和应对公众情绪问题,以支持舆论管理。
本研究旨在调查量化多维公众情绪特征,以帮助解决公众情绪问题,加强舆论管理。
本研究从微博平台收集用户交互数据,包括 73604 条微博帖子和 1811703 条微博评论。基于预训练模型的深度学习、主题聚类和相关分析,对疫情期间舆论中的公众情绪的时间序列特征、基于内容的特征和受众反应特征进行定量分析。
研究结果如下:首先,公众情绪在预热后爆发,公众情绪的时间序列有窗口期。其次,公众情绪与公众讨论主题相关。观众情绪越负面,公众参与公共讨论的程度就越深。第三,观众情绪独立于微博帖子和用户属性,意见领袖的引导作用在改变观众情绪方面无效。
自新冠疫情以来,社交媒体对舆论管理的需求不断增加。我们对量化多维公众情绪特征的研究,从实践角度加强了舆论管理的方法贡献之一。