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Efficient approach for mining top-k strong patterns in Social Network Service

机译:挖掘社交网络服务中前k个强模式的有效方法

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Social Network Service is a one of the service where people may communicate with one another; and may also exchange messages even of any type of audio or video communication. Social Network Service as name suggests a type of network. Such type of web application plays a dominant role in internet technology. In such type of online community, people may share their common interest. Facebook LinkedIn, Orkut and many more are the Social Network Service and it is good medium of making link with people having unique or common interest and goals. But the problem of privacy protection is a big issue in today's world. As social networking sites allows anonymous users to share information of other stuffs. Due to which cyber crime is also increasing to a rapid extent. In this article, we have proposed an algorithm named MSPSN (Mining Strong Pattern from Social Network). In MSPSN, considering three parameters such as User (U), Time (T) and Image (I) from weblog of Social Network Services. This algorithm is very useful to identify user behaviour in social networking service environment. Most frequently used pattern can be identify using these parameters in Social Networking Services.
机译:社交网络服务是人们可以相互交流的一项服务。并且甚至可以交换任何类型的音频或视频通信的消息。社交网络服务顾名思义就是一种网络类型。这种类型的Web应用程序在Internet技术中起着主导作用。在这种类型的在线社区中,人们可能会分享他们的共同兴趣。 Facebook LinkedIn,Orkut等等是社交网络服务,它是与具有独特或共同兴趣和目标的人们建立联系的良好媒介。但是,隐私保护问题在当今世界是一个大问题。由于社交网站允许匿名用户共享其他内容的信息。因此,网络犯罪也在迅速增加。在本文中,我们提出了一种名为MSPSN(社交网络中的挖掘强模式)的算法。在MSPSN中,请考虑来自社交网络服务Weblog的三个参数,例如用户(U),时间(T)和图像(I)。该算法对于识别社交网络服务环境中的用户行为非常有用。可以使用Social Networking Services中的这些参数来识别最常用的模式。

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