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Discovering Political Polarization on Social Media: A Case Study

机译:在社交媒体上发现政治两极分化:一个案例研究

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Social media analysis is a fast growing research area aimed at extracting useful information from social media. This paper presents a methodology aimed at discovering the behavior of social media users during election campaigns characterized by the competition of political parties. The methodology analyzes the posts published by social media users through an automatic incremental procedure based on feed-forward neural networks. Specifically, starting from a minimum amount of classification rules (a small subset of the hashtags that are notoriously in favor of specific factions), the methodology iteratively increases the inferred knowledge by generating new classification rules. These rules are then used to determine the polarization of social media users towards a party. The proposed methodology has been applied on a case study that analyze the polarization of a large number of Twitter users during the 2018 Italian general election. The achieved results are very close to the real ones and are significantly more accurate than the average of the opinion polls, revealing the high accuracy and effectiveness of the proposed approach.
机译:社交媒体分析是一个快速增长的研究领域,旨在从社交媒体中提取有用的信息。本文提出了一种方法,旨在发现以政党竞争为特征的竞选活动中社交媒体用户的行为。该方法通过基于前馈神经网络的自动增量过程来分析社交媒体用户发布的帖子。具体来说,从最少数量的分类规则(众所周知,哈希标签的一小部分子集支持特定派系)开始,该方法通过生成新的分类规则来迭代地增加推断的知识。这些规则然后用于确定社交媒体用户对聚会的两极分化。拟议的方法已应用于案例研究,该案例分析了2018年意大利大选期间大量Twitter用户的两极分化。所获得的结果非常接近真实结果,并且比民意调查的平均值要准确得多,这表明了所提出方法的高度准确性和有效性。

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