Collaborative filtering is an efficient way to find best objects to recommend. This technique is particularly useful when there is a lot of users that rated a lot of objects.
In this paper, we propose a method that improve the Collaborative filtering in situations, where the number of ratings or users is small. The pro- posed approach is experimentally evaluated on real datasets with very convincing results.