Content-boosted Collaborative Filtering for Improved Recommendations.
In:
Eighteenth National Conference on Artificial Intelligence, pages 187-192.
American Association for Artificial Intelligence, Menlo Park, CA, USA, 2002.
Prem Melville, Raymod J. Mooney and Ramadass Nagarajan.
[doi]
[abstract]
[BibTeX]
Most recommender systems use Collaborative Filtering or Content-based methods to predict new items of interest for a user. While both methods have their own advantages, individually they fail to provide good recommendations in many situations. Incorporating components from both methods, a hybrid recommender system can overcome these shortcomings. In this paper, we present an elegant and effective framework for combining content and collaboration. Our approach uses a content-based predictor tc enhance existing user data, and then provides personalized suggestions through collaborative filtering. We present experimental results that show how this approach, <i>Content-Boosted Collaborative Filtering</i>, performs better than a pure content-based predictor, pure collaborative filter, and a naive hybrid approach.