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Fusing pattern discovery and visual analytics approaches in tweet propagation

机译:融合模式发现和临时传播中的视觉分析方法

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摘要

Over the past several years, social networks have become a major channel for information delivery. At present, social networks are being used to obtain more followers and exert influence over people during political campaigns. However, the propagation of a social network post is dependent on numerous factors. Some of these are known; for example, the post contents, the time when it was posted, and the person or entity by whom it was posted. However, other factors remain unknown, such as what makes a post more successful than others, and how posts from similar profiles evolve and propagate differently over time. The main subject of this work is addressing these types of questions. Our approach relies on a three-fold methodology for studying the influence and propagation of posts: graph-based, semantic, and contrast pattern recognition analysis. The results obtained are complemented by a dynamic visualization that encompasses all of the variables involved. In order to corroborate our results, we collected all posts from the Twitter accounts of the most prominent Mexican political figures and analyzed the influence and propagation of each post issued.
机译:在过去几年中,社交网络已成为信息交付的主要渠道。目前,社交网络正在习惯于获得更多的追随者并在政治活动期间对人们产生影响。然而,社交网络柱的传播依赖于众多因素。其中一些是已知的;例如,帖子内容,发布的时间,以及所发布的人员或实体。然而,其他因素仍然是未知的,例如使帖子比其他帖子更加成功,以及如何随着时间的推移而从类似的型材中的帖子变化和传播。这项工作的主要主题正在解决这些类型的问题。我们的方法依赖于研究帖子的影响和传播的三倍方法:基于图形,语义和对比模式识别分析。所获得的结果是通过动态可视化补充,包括所涉及的所有变量。为了证实我们的结果,我们从Twitter账户中收集了最杰出的墨西哥政治人物的所有帖子,并分析了发布的每个职位的影响和传播。

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