I'm not sure that a self-organizing map is actually the best for your application. It may preserve the topological properties of your input space, but it doesn't really fit well with a sparse data set, which is a constant problem in recommendation engines. I'm not going to say that an SVM is any better, in fact it's probably a lot further from what you actually want to do, but a SOM will only be marginally better. That said, if you want to learn how to build a SOM, in order of usefulness, the following resources are worth looking at. Also worth mentioning that a SOM is actually very close in theory to a convolutional neural net, so any resources for those should carry over pretty well.
As far as approaches that would probably make more sense for your particular application, I would probably suggest a Restricted Boltzmann Machine. The idea with an RBM is that you would attempt to create a "recommendation profile" for each user based on various statistics about them, defining a feature vector for the user. This basic prediction would happen in a manner closely resembling a deep neural net.
Once your net is trained in one direction, the real brilliance of an RBM is that you then run it backward. You try to generate user profiles from recommendation profiles, which works exceedingly well for applications like these. For information on RBMs you can visit these links:
Hinton is basically the authority on these and is also a total BAMF of data science. The last link in the RBM list would actually be able to totally build your recommendation engine by itself, but just in case you want to use more pre-built libraries or leverage other parts of data science I would highly suggest using some kind of dimensionality reduction mechanism before you try any collaborative filtering.
The biggest problem with collaborative filtering is that you usually have a very sparse matrix that doesn't quite give you the information you want and ends up holding onto a lot of stuff that's not really useful to you. For that reason there are a series of algorithms in the field of topic modelling that will get you a lower dimensionality for you data that will then make collaborative filtering trivial, or could be leveraged in any of the other approaches above to get more meaningful data with less intensity.
gensim is a python package that has a lot of topic modelling done for you and will also build out tfidf vectors for you utilizing numpy and scipy. It's also very well documented. The examples are, however targeted towards more direct NLP. Just keep in mind that the fact that their individual items happen to be words has no effect on the underlying algorithms and you can use it for less well-constrained systems.
If you want to go for gold in the topic modelling section you should really look into Pachinko Allocation (PA) which is a new algorithm in topic modelling that has more promise than most other topic modellers, but doesn't come bundled in packages.
I wish you luck in your data science exploits! Let me know if you have any more questions and I can try to answer them.