I have a model as such (non-Hadoop) :
DataModel data = new FileDataModel(new File("file.csv")); UserSimilarity userSimilarity = new PearsonCorrelationSimilarity(dataModel); userSimilarity.setPreferenceInferrer(new AveragingPreferenceInferrer(data)); UserNeighborhood userNeighborhood = new NearestNUserNeighborhood(1, userSimilarity, data);
userSimilarity is not normalized between [0,100] for instance, so if I want to display it to end users, I use the following solution :
long maxSim = userSimilarity.userSimilarity(userId1, userNeighborhood.getUserNeighborhood(userId1)); long finalSimilarity = Math.min(100, Math.max((int) Math.ceil(100 * userSimilarity.userSimilarity(userId1, userId2) / maxSim), 0))
I observed performance issues with this (various seconds for each user), is there another possibility, or quickest way to have min(similarity) = 0 and max(similarity) = 100 for each given user?