剖析社交媒体运动和政治影响:巴基斯坦政治的案例

M. Bilal, Nadia Malik, Nauman Bashir, Mohsen Marjani, I. A. Hashem, A. Gani
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引用次数: 4

摘要

社交网站已被广泛用于政治意识和竞选活动。随着政党和支持者越来越依赖社交媒体,通过分析社交媒体资料可以提取出有趣的模式。以前的方法使用社交媒体数据进行政治分析,主要集中在分析两党制的文本数据。然而,政治支持者的社交媒体参与,即帖子反应,可以用来确定最具影响力的政党。因此,为了探索社交媒体政治活动的内容,并在多党制中利用社会参与来识别最具影响力的政党,我们使用Facebook Graph API提取了巴基斯坦三个最受欢迎的政党的Facebook数据,即PTI, PML-N和PPP。结果表明,与PML-N和PTI相比,PTI更依赖于英语语言。然而,视频内容是三方最主要使用的内容。Facebook帖子的反应比例各不相同,PTI收到的“LIKE”和“SHARE”最多,PML-N, PPP收到的“HAHA”和“SAD”最多。与PML-N和PPP相比,PTI似乎是最有影响力的政党。每个政党的影响力得分是根据巴基斯坦2018年大选的结果得出的。因此,研究人员可以使用所提出的不考虑政党制度的影响评分来提高选举预测的准确性。这项研究强调的见解也可以被政党用来改善他们的社交媒体活动,以增加社会影响力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Profiling Social Media Campaigns and Political Influence: The Case of Pakistani Politics
Social networking websites have been widely used for political awareness and campaigns. With the increasing reliance of political parties and supporters on social media, interesting patterns can be extracted by analyzing social media profiles. The previous approaches perform political analysis used social media data mainly focused on analyzing only textual data for the two-party system. However, the social media engagement, i.e. posts reaction, of political supporters can be used to identify the most influential political party. Therefore, to explore the content of social media political campaigns and to identify the most influential political party using social engagement in a multi-party system, we extracted Facebook data using Facebook Graph API for the three most popular political parties in Pakistan, i.e. PTI, PML-N and, PPP. The results reported that PTI relies more on the English language when compared with PML-N and PTI. However, video content is most prominently used by all three parties. The ratio of reactions on Facebook posts varies, PTI has received the highest number of “LIKE” and “SHARE”, PML-N, and PPP has received the major number of “HAHA” and “SAD”. PTI appears as the most influential party in comparison with PML-N and PPP. The influence score for each party appeared in accordance with the results of Pakistan's General Elections 2018. Hence, the proposed influence score irrespective of party-system can be used by researchers to improve the accuracy of electoral prediction. The insights highlighted by this study can also be used by political parties to improve their social media campaigns for increasing social influence.
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