诱骗支持:计算机宣传说服策略研究

Q3 Social Sciences
Valentina Nerino
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引用次数: 1

摘要

本文报道的这项研究旨在从理论和实证上探索计算宣传(CP),这是一个由自动化代理在社交网络平台上实施的政治错误信息的系统过程,目的是增加对特定政治立场的支持,特别关注决定其潜在有效性的因素。贯穿本文的主张是,在决定这种有效性的可能因素中,一个关键因素是CP消息本身的设计。事实上,这项调查的假设是,CP内容的创建和呈现方式不是随意的,而是故意设计的,目的是在其中嵌入一套旨在引发特定认知思考的说服策略:将错误信息视为事实。根据认知的双重过程理论,提出了CP信息中包含的信息线索在决定CP有效性的可能性方面起着关键作用的论点。为了验证这一假设,采用了以混合方法策略为特征的两步分析。为了识别和收集CP消息,已经开发了一种能够执行机器人检测的机器学习算法,而为了分析这些消息的内容,已经采用了定性和定量文本分析技术的组合。最后,介绍了初步结果,并对今后的工作进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tricked into Supporting: A Study on Computational Propaganda Persuasion Strategies
The study reported in this paper aims to theoretically and empirically explore computational propaganda (CP) – a systematic process of political misinformation perpetrated on social networking platforms by automated agents with the aim of increasing support for specific political stances – focusing in particular on the factors determining its potential effectiveness. The claim maintained throughout this paper is that, among the possible factors determining this effectiveness, a pivotal one is represented by the design of CP messages themselves. Indeed, the hypothesis underlying this investigation is that the way CP content is created and presented is not casual, but deliberately designed to embed in it a set of persuasion strategies aimed at triggering a specific cognitive deliberation: considering misinformation as factual. Drawing from the Dual Process Theory of Cognition, the argument proposed is that info-cues contained in CP messages play a pivotal role in determining the likelihood of CP effectiveness. To test this hypothesis, a two-step analysis characterized by a mixed-method strategy has been implemented. To identify and collect CP messages, a machine learning algorithm able to perform bot-detection has been developed, while to analyze the content of those messages, a combination of qualitative and quantitative text analysis techniques has been employed. Lastly, preliminary results are presented and future work discussed.
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来源期刊
Italian Sociological Review
Italian Sociological Review Social Sciences-Social Sciences (all)
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
8 weeks
期刊介绍: The Italian Sociological Review is as an academic journal for the dissemination of theoretical reflections and results of empirical research on social science, conducted with scientific methodologies and made available to a wider audience. The research results may have an impact on policy-makers, on the processes of formation of the students and the development and integration of theories and paradigms. It is therefore important that the journal maintains a high level of quality and transparency in the process of publication.
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