Content-boosted collaborative filtering for improved recommendations
The University of Texas at Austin
Abstract
Most recommender systems use Collaborative Filtering or Content-based methods to predict new items of interest for auser. 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 to enhance existing user data, and then provides personalized suggestions through collaborative filtering. We present experimental results that show how this approach, Content-Boosted Collaborative Filtering, performs better…
Citation impact
- FWCI
- 43.81
- Percentile
- 100%
- References
- 15
Authors
3Topics & keywords
- Collaborative filtering
- Recommender system
- Computer science
- Filter (signal processing)
- Content (measure theory)
- Information retrieval
- Data mining
- Mathematics