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Discriminative Clustering for Content-Based Tag Recommendation in Social Bookmarking Systems

, , , and . ECML PKDD Discovery Challenge 2009 (DC09), 497, page 85--97. Bled, Slovenia, CEUR Workshop Proceedings, (September 2009)

Abstract

We describe and evaluate a discriminative clustering approach for content-based tag recommendation in social bookmarking systems. Our approach uses a novel and efficient discriminative clustering method that groups posts based on the textual contents of the posts. The method also generates a ranked list of discriminating terms for each cluster. We apply the clustering method to build two clustering models – one based on the tags assigned to posts and the other based on the content terms of posts. Given a new posting, a ranked list of tags and content terms is determined from the clustering models. The final tag recommendation is based on these ranked lists. If the poster’s tagging history is available then this is also utilized in the final tag recommendation. The approach is evaluated on data from BibSonomy, a social bookmarking system. Prediction results show that the tag-based clustering model is more accurate than the termbased clustering model. Combining the predictions from both models is better than either model’s predictions. Significant improvement in recommendation is obtained over the baseline method of recommending the most frequent tags for all posts.

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