Entity disambiguation in tweets leveraging user social profiles

Information Reuse and Integration(2013)

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摘要
Pervasive web and social networks are becoming part of everyone's life. Users through their activities on these networks are leaving traces of their expertise, interests and personalities. With the advances in Web mining and user modeling techniques it is possible to leverage the user social network activity history to extract the semantics of user-generated content. In this work we explore various techniques for constructing user profiles based on the content they publish on social networks. We further show that one of the advantages of maintaining social network user profiles is to provide the context for better understanding of microposts. We propose and experimentally evaluate different approaches for entity disambiguation in social networks based on syntactic and semantic features on top of two different social networks: a general-interest network (i.e., Twitter) and a domain-specific network (i.e., StackOverflow). We demonstrate how disambiguation accuracy increases when considering enriched user profiles integrating content from both social networks.
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关键词
content management,data mining,information retrieval,natural language processing,programming language semantics,social networking (online),ubiquitous computing,user modelling,Twitter,Web mining,domain-specific network,entity disambiguation,micropost,pervasive Web network,semantic feature,semantics extraction,social network user profile,syntactic feature,user generated content,user modeling technique,user social network activity,user social profile
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