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Effective Clusterization of Political Tweets Using Kurtosis and Community Duration

机译:使用峰度和社区持续时间对政治推文进行有效的聚类

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Exploration of voter opinions is important for policy making. While opinion polls have long played an important role in this process, big data analysis of social media, i.e. "social listening", is becoming important. This is because social listening involves the collection of a huge amount of data on opinions that are transmitted spontaneously by people in real time. The amount is so huge that the data needs to be aggregated and summarized. Graph theory is an effective way of aggregating into groups network structured data collected from social media such as Twitter. However, there are two challenges. One is to combine the groups, i.e. "communities", into clusters because the granularity of the community is too fine for understanding the big picture. The other is to distinguish insignificant clusters from those that contain relevant information. In this paper, we describe a method for community clustering that is based on kurtosis and duration in time series of each community.
机译:探索选民的意见对制定政策很重要。尽管民意测验长期以来一直在这一过程中发挥重要作用,但对社交媒体的大数据分析(即“社交倾听”)正变得越来越重要。这是因为社交聆听涉及收集大量数据,这些数据是人们实时自发传播的。数量如此庞大,以至于数据需要汇总和汇总。图论是将从社交媒体(例如Twitter)收集的网络结构化数据分组的有效方法。但是,存在两个挑战。一种是将群体(即“社区”)组合成集群,因为社区的粒度太细微,无法理解全局。另一个是将无关紧要的集群与包含相关信息的集群区分开。在本文中,我们描述了一种基于峰度和每个社区的时间序列的持续时间的社区聚类方法。

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