利用层次聚类和k均值聚类方法分析社交媒体上对政治问题的反应

Edi Irawan, T. Mantoro, M. A. Ayu, M. A. Catur Bhakti, I. K. Y. T. Permana
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引用次数: 0

摘要

不可否认,社交媒体的使用量越来越大。目前,Twitter是最受欢迎的社交媒体平台之一,它允许用户发布他们对任何事情的想法,通常以有限的单词长度的形式发布。庞大的Twitter用户数量使Twitter成为分析人们对某一政治问题的行为和倾向的宝贵数据来源。不幸的是,文本帖子很难分析,因为数据的维度太高而无法聚类。需要找到最合适的方法,用可接受的聚类结果对Twitter发布进行聚类。这项研究提出了基于用户在对趋势政治问题作出反应时使用的最常用词汇的Twitter用户聚类。本研究提出并讨论了层次聚类和k-means聚类方法的比较研究,以及直方图和词云的词趋势或问题的主要主题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing Reactions on Political Issues in Social Media Using Hierarchical and K-Means Clustering Methods
Social media usage is undeniably getting larger, Currently, Twitter is one of the most popular social media platforms that enables its user to post their thoughts on anything, commonly in the form of limited word length. The massive number of Twitter users has made Twitter a valuable source of data in analyzing people behavior and tendency in reacting to a certain political issue. Unfortunately, the textual postings are difficult to analyze as the dimension of the data is too high to be clustered. One needs to find the most appropriate method to cluster Twitter posting with an acceptable clustering result. This study presents the clustering of Twitter users based on the most common words used by the users in reacting to a trending political issue. A comparative study between hierarchical clustering and k-means clustering methods are presented and discussed in this study, as well as the word trend or main topic of the issue by histogram and wordcloud.
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