Collaborative Ensemble Learning: Combining Collaborative and
Content-Based Information Filtering via Hierarchical Bayes
K. Yu, A. Schwaighofer, V. Tresp, W.-Y. Ma, and H. Zhang
Abstract:
Collaborative filtering (CF) and content-based filtering (CBF) have widely been
used in information filtering applications, both approaches having their
individual strengths and weaknesses. This paper proposes a novel
probabilistic framework to unify CF and CBF, named collaborative ensemble
learning. Based on content based probabilistic models for each user's
preferences (the CBF idea), it combines a society of users' preferences to
predict an active user's preferences (the CF idea). While retaining an
intuitive explanation, the combination scheme can be interpreted as a
hierarchical Bayesian approach in which a common prior distribution is
learned from related experiments. It does not require a global training stage
and thus can incrementally incorporate new data. We report results based on
two data sets, the Reuters-21578 text data set and a data base of user
opionions on art images. For both data sets, collaborative ensemble achieved
excellent performance in terms of recommendation accuracy. In addition to
recommendation engines, collaborative ensemble learning is applicable to
problems typically solved via classical hierarchical Bayes, like multisensor
fusion and multitask learning.
Reference: K. Yu, A. Schwaighofer, V. Tresp, W.-Y. Ma, and H. Zhang.
Collaborative ensemble learning: Combining collaborative and content-based
information filtering via hierarchical Bayes.
In C. Meek and U. Kjærulff, editors, Uncertainty in Artificial
Intelligence: Proceedings of the 19th Conference (UAI-2003), pages 616-623.
Morgan Kaufmann, 2003.