Introducing Triple Play for Improved Resource Retrieval in Collaborative Tagging Systems

Published in In the proceedings of Proceedings of Exploiting Semantic Annotations in Information Retrieval, workshop at European Conference on Information Retrieval, 2008

Recommended citation: Rabeeh Abbasi, Steffen Staab, "Introducing Triple Play for Improved Resource Retrieval in Collaborative Tagging Systems." In the proceedings of Proceedings of Exploiting Semantic Annotations in Information Retrieval, workshop at European Conference on Information Retrieval, 2008. http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.156.3634

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Collaborative tagging systems (like Flickr, del.icio.us, citeulike, etc.) are becoming more popular with passage of time. Users share their resources on tagging systems, and add keywords (called tags) to these resources. Users can search resources using these tags. But as the user gives more tags for search, he might not get sufficient search results, because the resources might not be tagged with all the related tags. We introduce the method Triple Play, which smoothes the tag space by user space for improved retrieval of resources. As a part of Triple Play, we also propose two new vector space models for collaborative tagging systems, SmoothVSM Dense and SmoothVSM Sparse. These vector space models exploit the user-tag co-occurrence relationship to overcome the problem of missing information in tagging systems. Finally we apply Latent Semantic Analysis to different vector space models and analyze the results. Initial experimentation show that using additional information available in tagging systems helps in improving search in tagging systems.