The Framework for Political Communication Text Mining Based on Twitter

Jufri, Aedah Abd Rahman, Suarga
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引用次数: 1

Abstract

In recent years, social media as a medium that is widely used in communication in the community. The phenomenon of communication on social media is increasingly being used in political communication. Social networking site services like Twitter and Facebook are believed to have the potential to increase public participation in politics. Twitter is an ideal platform for voters, politicians, political parties, and political institutions to disseminate not only public information but also political opinions to the public through their networks. This research is related to the effectiveness of social media (Twitter) as a means of political communication used by the public, especially in the election of the Mayor of Makassar and other elections in Indonesia. This paper, using two methods for social media analysis on political communication. Support Vector Machine (SVM) to classify predictable words or sentences, and the K-Means method is used to classify words or sentences related to political communication. The results of this study can be used by voters, candidates, political parties, and political institutions, as information and also as a measurement aid in determining the choice of candidates.
基于Twitter的政治传播文本挖掘框架
近年来,社交媒体作为一种传播媒介,在社会上得到了广泛的应用。社交媒体上的传播现象越来越多地用于政治传播。像推特和脸书这样的社交网站服务被认为有潜力增加公众对政治的参与。对于选民、政治家、政党和政治机构来说,Twitter是一个理想的平台,不仅可以通过他们的网络向公众传播公共信息,还可以传播政治观点。本研究与社交媒体(Twitter)作为公众政治沟通手段的有效性有关,特别是在印度尼西亚的望加锡市市长选举和其他选举中。本文采用两种方法对社交媒体上的政治传播进行分析。支持向量机(SVM)对可预测的词或句子进行分类,K-Means方法对与政治传播相关的词或句子进行分类。本研究的结果可以被选民、候选人、政党和政治机构用作信息,也可以作为决定候选人选择的测量辅助工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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