Applying mining fuzzy sequential patterns technique to predict the leadership in social networks

W. Romsaiyud, W. Premchaiswadi
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引用次数: 9

Abstract

Social Network has become a very popular communication tool among Internet users who connect to each other by one or more relations. Millions of users are sharing opinions and experiences on different aspects of life every day via the social network community. Comments from the members of social network can be influential and have an impact on trust among members within the social group. The Discovery of Influential Behavior Pattern of Members in Social Networks brings challenge to workers in this research field. Understanding social networks requires analysis of structural relations between the users and the patterns of interaction among users. This paper thus focuses on 2 folds: First, we defined many factors for leadership in social network and showed that, those at individuals who are central to social networks serve as the opinion leaders. Second, we proposed a fuzzy data-mining algorithm to find association rules for analyzing the posting messages into quantitative values and discovered interesting sequential patterns among them. The sequential patterns are very important for real-world applications since the patterns mined out exhibit the sequential quantitative regularity in databases and can provide useful information to applications.
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应用挖掘模糊序列模式技术预测社会网络中的领导力
社交网络已经成为互联网用户之间非常流行的通信工具,他们通过一个或多个关系相互连接。数以百万计的用户每天通过社交网络社区分享对生活不同方面的看法和经验。社交网络成员的评论具有影响力,对社会群体成员之间的信任产生影响。社会网络成员影响行为模式的发现对这一研究领域的工作者提出了挑战。理解社会网络需要分析用户之间的结构关系和用户之间的交互模式。因此,本文的研究重点在两个方面:首先,我们定义了社会网络中领导力的许多因素,并表明那些在社会网络中处于中心位置的个体是意见领袖。其次,我们提出了一种模糊数据挖掘算法来寻找关联规则,将发布消息分析为定量值,并从中发现有趣的顺序模式。顺序模式对于实际应用程序非常重要,因为挖掘出的模式显示了数据库中的顺序定量规律,可以为应用程序提供有用的信息。
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