I am iteratively building a custom recommender system based on a frequently changing probabilistic latent factor model. I have already written some Java code that implements the model. It factorises the user-item rating matrix into two matrices UxK (user feature vectors) and IxK (item feature vectors) to estimate the missing ratings.
I am looking for the simplest way to plug (perhaps by rewriting) my code into a framework to build a recommender system, a baseline, and be able to compare these against each other in a standard way - e.g. cross validation to calculate precision, recall, RMSE... As my system still lacks this, the framework should provide methods to calculate and make recommendations based on the estimated user-item rating matrix.
It looks like Mahout should do the job. However, its documentation says "It does not currently support model-based recommenders.". Can anybody tell me whether what I am trying to achieve is possible with Mahout and whether it is worth spending the time to learn how to use it. If Mahout is not suitable, can you suggest any alternatives?