Entity Resolution on Complex Network

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چکیده

Complex networks can be used to describe the Internet, social network, or more broadly describe a binary relation of a set of objects. Structure information of complex network helps the identification of the entity corresponding to nodes in the network. There is much research in this area, and the authors introduce these studies and their results in this chapter. The authors mainly present two practical applications as an example. Through these examples, the authors explore the research ideas in entity resolution on complex network. The applications of entity resolution on complex network include the detection of mirror Websites, name recognition in social network, and information searching on the Internet. This chapter introduces some applications, including the detection of mirror Websites and name recognition, in social network in detail.

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تاریخ انتشار 2015