信息是如何从世界流向中国的

IF 4.1 1区 社会学 Q1 COMMUNICATION
Yingda Lu, Jack Schaefer, Kunwoo Park, Jungseock Joo, Jennifer Pan
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引用次数: 4

摘要

尽管数字技术具有强大的连接力,但政府审查制度——互联网关闭、封锁、防火墙——对信息的跨国流动设置了重大障碍。在这篇论文中,我们研究了信息是否以及如何在政府审查的情况下跨境流动。我们开发了一个半自动化系统,该系统结合了深度学习和人工注释,可以在不同的社交媒体平台和语言中找到共存的内容。随着新冠肺炎在全球传播,我们使用该系统来检测推特和新浪微博之间的共现内容,并对共现内容进行深入调查,以确定那些构成全球信息生态系统向中国流入信息的内容。我们发现,在推特上获得广泛公众关注的与中国相关的内容中,约有四分之一进入了微博。不出所料,中国国有媒体和商业化的国内媒体在促进这些信息流入方面发挥着主导作用。然而,我们发现,没有传统媒体或政府背景的微博用户也是向中国传递信息的重要机制。这些结果表明,虽然审查制度与媒体控制相结合为政府制定议程提供了很大的回旋余地,但社交媒体为非机构行为者影响信息环境提供了机会。在方法论上,我们开发的系统为跨平台、跨语言交际的定量分析提供了一种新的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How Information Flows from the World to China
Government censorship—internet shutdowns, blockages, firewalls—impose significant barriers to the transnational flow of information despite the connective power of digital technologies. In this paper, we examine whether and how information flows across borders despite government censorship. We develop a semi-automated system that combines deep learning and human annotation to find co-occurring content across different social media platforms and languages. We use this system to detect co-occurring content between Twitter and Sina Weibo as Covid-19 spread globally, and we conduct in-depth investigations of co-occurring content to identify those that constitute an inflow of information from the global information ecosystem into China. We find that approximately one-fourth of content with relevance for China that gains widespread public attention on Twitter makes its way to Weibo. Unsurprisingly, Chinese state-controlled media and commercialized domestic media play a dominant role in facilitating these inflows of information. However, we find that Weibo users without traditional media or government affiliations are also an important mechanism for transmitting information into China. These results imply that while censorship combined with media control provide substantial leeway for the government to set the agenda, social media provides opportunities for non-institutional actors to influence the information environment. Methodologically, the system we develop offers a new approach for the quantitative analysis of cross-platform and cross-lingual communication.
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来源期刊
CiteScore
12.10
自引率
8.30%
发文量
61
期刊介绍: The International Journal of Press/Politics is an interdisciplinary journal for the analysis and discussion of the role of the press and politics in a globalized world. The Journal is interested in theoretical and empirical research on the linkages between the news media and political processes and actors. Special attention is given to the following subjects: the press and political institutions (e.g. the state, government, political parties, social movements, unions, interest groups, business), the politics of media coverage of social and cultural issues (e.g. race, language, health, environment, gender, nationhood, migration, labor), the dynamics and effects of political communication.
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