Title :
Effective Clusterization of Political Tweets Using Kurtosis and Community Duration
Author :
Ituski, Hiroshi ; Matsubara, H. ; Arita, Kazuki ; Omi, Kazunari
Author_Institution :
Future Univ. Hakodate, Hakodate, Japan
Abstract :
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.
Keywords :
graph theory; pattern clustering; social networking (online); Twitter; big data analysis; community clustering; community duration; effective clusterization; graph theory; kurtosis; policy making; political tweets; social listening; social media; time series; Communities; Conferences; Indexes; Media; Nominations and elections; Time series analysis; Twitter; Twitter; election; kurtosis; social media;
Conference_Titel :
Social Computing (SocialCom), 2013 International Conference on
Conference_Location :
Alexandria, VA
DOI :
10.1109/SocialCom.2013.144