推特用户对英国脱欧公投的立场和影响。

Q1 Mathematics
Computational Social Networks Pub Date : 2017-01-01 Epub Date: 2017-07-24 DOI:10.1186/s40649-017-0042-6
Miha Grčar, Darko Cherepnalkoski, Igor Mozetič, Petra Kralj Novak
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引用次数: 89

摘要

社交媒体是政治问题信息的重要来源,反映并影响着公众情绪。我们对2016年6月英国举行脱欧公投前6周收集的推特数据进行了分析。我们解决了两个问题:推特情绪与公投结果之间的关系是什么?在支持和反对英国退欧的阵营中,谁是最有影响力的推特用户?首先,我们通过机器学习方法构建姿态分类模型,然后能够预测大约100万英国Twitter用户的姿态。然而,推特用户的人口统计数据与选民的人口统计数据截然不同。通过对Twitter的总体立场进行简单的年龄调整映射,结果显示了支持英国退欧的选民的普遍程度,这是大多数民意调查都没有预料到的。其次,我们应用赫希指数来估计影响力,并对两个阵营的Twitter用户进行排名。我们发现,最有生产力的Twitter用户并不是最有影响力的,支持英国退欧的阵营的影响力是反对者的四倍,对竞选的影响也要大得多。第三,我们发现,支持英国脱欧的顶级团体比反对英国脱欧的阵营要两极化得多。这些结果表明,社交媒体提供了丰富的数据资源可供利用,但从民意调查中积累的知识和经验教训必须适应新的数据源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Stance and influence of Twitter users regarding the Brexit referendum.

Stance and influence of Twitter users regarding the Brexit referendum.

Stance and influence of Twitter users regarding the Brexit referendum.

Stance and influence of Twitter users regarding the Brexit referendum.

Social media are an important source of information about the political issues, reflecting, as well as influencing, public mood. We present an analysis of Twitter data, collected over 6 weeks before the Brexit referendum, held in the UK in June 2016. We address two questions: what is the relation between the Twitter mood and the referendum outcome, and who were the most influential Twitter users in the pro- and contra-Brexit camps? First, we construct a stance classification model by machine learning methods, and are then able to predict the stance of about one million UK-based Twitter users. The demography of Twitter users is, however, very different from the demography of the voters. By applying a simple age-adjusted mapping to the overall Twitter stance, the results show the prevalence of the pro-Brexit voters, something unexpected by most of the opinion polls. Second, we apply the Hirsch index to estimate the influence, and rank the Twitter users from both camps. We find that the most productive Twitter users are not the most influential, that the pro-Brexit camp was four times more influential, and had considerably larger impact on the campaign than the opponents. Third, we find that the top pro-Brexit communities are considerably more polarized than the contra-Brexit camp. These results show that social media provide a rich resource of data to be exploited, but accumulated knowledge and lessons learned from the opinion polls have to be adapted to the new data sources.

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来源期刊
Computational Social Networks
Computational Social Networks Mathematics-Modeling and Simulation
自引率
0.00%
发文量
0
审稿时长
13 weeks
期刊介绍: Computational Social Networks showcases refereed papers dealing with all mathematical, computational and applied aspects of social computing. The objective of this journal is to advance and promote the theoretical foundation, mathematical aspects, and applications of social computing. Submissions are welcome which focus on common principles, algorithms and tools that govern network structures/topologies, network functionalities, security and privacy, network behaviors, information diffusions and influence, social recommendation systems which are applicable to all types of social networks and social media. Topics include (but are not limited to) the following: -Social network design and architecture -Mathematical modeling and analysis -Real-world complex networks -Information retrieval in social contexts, political analysts -Network structure analysis -Network dynamics optimization -Complex network robustness and vulnerability -Information diffusion models and analysis -Security and privacy -Searching in complex networks -Efficient algorithms -Network behaviors -Trust and reputation -Social Influence -Social Recommendation -Social media analysis -Big data analysis on online social networks This journal publishes rigorously refereed papers dealing with all mathematical, computational and applied aspects of social computing. The journal also includes reviews of appropriate books as special issues on hot topics.
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