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Automatic tagging based on linked data: Unsupervised methods for the extraction of hidden information | IEEE Conference Publication | IEEE Xplore

Automatic tagging based on linked data: Unsupervised methods for the extraction of hidden information


Abstract:

We have created a web agent for collecting Call for Papers (CFP) announcements. Our web agent obtains CFP announcements from websites or from mailbox. The most important ...Show More

Abstract:

We have created a web agent for collecting Call for Papers (CFP) announcements. Our web agent obtains CFP announcements from websites or from mailbox. The most important information is extracted and published on our own special website in a user and machine readable way. One of the most important problems is event classification, categorization and clustering. In this paper we describe unsupervised methods for automatic tagging based on information extraction from Linked data. These methods are usable in situations where we have to tag unknown data and we have no corpus for learning methods. Tagged data can have the form of short messages from RSS, short blog posts or emails. The automatic tags can be used for classifying the conferences. Users can use our web service to search for interesting events and sort them by their own preferences. We obtain tags with their relationship parameters and we can use them for automatic clustering of collected events.
Date of Conference: 13-15 December 2010
Date Added to IEEE Xplore: 04 February 2011
ISBN Information:
Print ISSN: 2163-2871
Conference Location: Perth, WA, Australia

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