User Interest Determination Based On Data from Collaborative Tagging Systems
نویسنده
چکیده
Tagging has gained a lot of ground as a lightweight annotation system, proven to work well in large scale deployments. This paper explores the world of collaborative tagging, and highlights some of the issues one is faced with when trying to utilize the tag meaning for knowledge extraction, with a special focus on using the tag meaning to create a user interest profile.
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