I'm reading some papers in CF and noticed that most stateoftheart methods are based on different factorization methods on the rating matrix only. I'd like to know if there are some representative works on combining content information (e.g. user features and item features) into factorization. Any ideas?
I am a researcher in the field of recommender systems, and did some work on exactly that. Here are some papers on that topic:
Please note that (4) is a paper by me, so this is also some kind of advertisement ;) Also, the KDD Cup 2011 involved an item taxonomy, and there has been some interesting work on combining such taxonomy information with latent factor models at the workshop: http://kddcup.yahoo.com/workshop.php 


See for example "5. Hybrid Collaborative Filtering Techniques" in


