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清华大学学报(自然科学版)  2023, Vol. 63 Issue (6): 968-979    DOI: 10.16511/j.cnki.qhdxxb.2023.22.007
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基于时序超网络模型的突发事件网络舆情热点话题发现与演化
陈舒婷1,2, 疏学明1,2, 胡俊3,4, 解学才1,2, 张雷1,2, 张伽1,2
1. 清华大学 工程物理系, 北京 100084;
2. 城市综合应急科学北京市重点实验室, 北京 100084;
3. 北京师范大学(珠海校区) 国家安全与应急管理学院, 珠海 519087;
4. 北京师范大学 应急管理部-教育部减灾与应急管理研究院, 北京 100875
Discovery and evolution of hot topics of network public opinion in emergencies based on time-series supernetwork
CHEN Shuting1,2, SHU Xueming1,2, HU Jun3,4, XIE Xuecai1,2, ZHANG Lei1,2, ZHANG Jia1,2
1. Department of Engineering Physics, Tsinghua University, Beijing 100084, China;
2. Beijing Key Laboratory of City Integrated Emergency Response Science, Beijing 100084, China;
3. School of National Safety and Emergency Management, Beijing Normal University at Zhuhai, Zhuhai 519087, China;
4. Academy of Disaster Reduction and Emergency Management of Ministry of Emergency Management and Ministry of Education, Beijing Normal University, Beijing 100875, China
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摘要 网络舆情安全是社会安全的重要组成部分,识别和追踪热点话题是治理突发事件网络舆情的基础。现有研究具有网络舆情事件表征不全面、对于热点话题的识别和追踪局限于语义信息等问题。该研究基于社交、内容、话题、情感4个维度构造超网络模型,并引入时间特征作为网络的连接关系,用于定量表征时序的网络舆情事件;将话题节点在超网络中的中心性及中心性变化率作为话题热度的度量指标,实现热点话题发现及演化跟踪;应用“甘肃白银马拉松”微博舆情案例对模型和指标进行验证分析。研究结果表明:该时序超网络模型能够清晰表征突发网络舆情事件,中心性及中心性变化率指标能够准确识别和跟踪热点话题,并为实时态势研判预警、舆论引导等提供指导。
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陈舒婷
疏学明
胡俊
解学才
张雷
张伽
关键词 超网络网络舆情中心性微博话题    
Abstract:[Objective] Network public opinion security is an important part of social security, and identifying and tracking hot topics is the basis for the governance of online public opinion in emergencies. Existing research on the evolution of hot topics is limited by text semantics, and network public opinion text is severely limited by sparsity. Existing online public opinion event models based on complex network analysis focus on the static and isolated dimension of user characteristics, which provides an incomplete representation of online public opinion events. Meanwhile, existing online public opinion event models based on the supernetwork refer to the life-cycle theory of public opinion, divide time windows according to the development stage of public opinion, and construct them as nodes in the network. Hence, these models are limited to retrospective studies and are difficult to use.[Methods] To address the aforementioned problems, first, a supernetwork model with four levels—social, content, topic, and emotion—was constructed. This model departed from previously isolated interpretations of relevant factors of hot topics in online public opinion and effectively utilized the internal relationship between multiple public opinion elements and hot topics. The model provided a reference for mining hot topic information with complex network characteristics. Second, considering the universality and timeliness of the model, time information was constructed differently from traditional research, which was based on the development stage of public opinion. In this study, time windows were divided equidistantly with a certain granularity, and the order of time windows, rather than the nodes in the network, represented the connectivity characteristics of the network. To discover, migrate, and predict hot topics, a topic popularity index based on the centrality of the supernetwork and a topic popularity change rate index based on the hypernetwork centrality change rate were proposed in this paper. These indices were verified and analyzed for the “Gansu Baiyin Marathon” Microblog public opinion event.[Results] The findings of this study are as follows: (1) The time-series supernetwork model clearly represents network public opinion events and has significant advantages over the traditional methods in model visualization. (2) The topic popularity index accurately identifies the hot topics in each time window and evaluates the changes in topic popularity throughout the development of the event. For example, “accident notification” was the most popular topic in the early stage of the public opinion event, and its heat decreased with fluctuation thereafter. The “event guarantee” topic remained popular throughout the development of the event, and its popularity fluctuated on a daily basis. (3) Based on the topic popularity curve and network structure, topics with similar communities are found to migrate, such as “liability compensation”, “competition guarantee”, and “popular science knowledge”. (4) The topic popularity change rate index effectively predicts hot topics in the next time window.[Conclusions] This paper provides a general time-series model for network public opinion events with high sparsity and complex network characteristics. Topic heat and heat change rate indices can lead to the accurate identification of hot topics as well as the accurate tracking of the evolution, migration, and prediction of hot topics. Further, this study provides intuitive and useful guidance for the governance of online public opinion in real-world situations.
Key wordssupernetwork    network public opinion    centrality    Microblog topic
收稿日期: 2022-11-04      出版日期: 2023-05-12
基金资助:国家重点研发计划项目(2020YFC0833400)
通讯作者: 疏学明,副研究员,E-mail:shuxm@tsinghua.edu.cn     E-mail: shuxm@tsinghua.edu.cn
作者简介: 陈舒婷(1998—),女,硕士研究生。
引用本文:   
陈舒婷, 疏学明, 胡俊, 解学才, 张雷, 张伽. 基于时序超网络模型的突发事件网络舆情热点话题发现与演化[J]. 清华大学学报(自然科学版), 2023, 63(6): 968-979.
CHEN Shuting, SHU Xueming, HU Jun, XIE Xuecai, ZHANG Lei, ZHANG Jia. Discovery and evolution of hot topics of network public opinion in emergencies based on time-series supernetwork. Journal of Tsinghua University(Science and Technology), 2023, 63(6): 968-979.
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http://jst.tsinghuajournals.com/CN/10.16511/j.cnki.qhdxxb.2023.22.007  或          http://jst.tsinghuajournals.com/CN/Y2023/V63/I6/968
  
  
  
  
  
  
  
  
  
  
  
  
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