A collaborative faceted categorization system - user interactions

نویسندگان

  • Kurt Maly
  • Harris Wu
  • Mohammad Zubair
چکیده

We are building a system that improves browsing and searching access to a large, growing collection by supporting users to build a faceted (multiperspective) classification schema collaboratively. The system is targeted in particular to collections of photographs and images that, in general, have few textual metadata. Our system allows users to build and maintain a faceted classification schema collaboratively and have the system help to classify documents into the evolving facet schema automatically. This paper focuses on the evolution of faceted classification schema for a large growing collection.

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تاریخ انتشار 2010