I have one product, let's say a book. Now I want to retrieve k products, that are similar to this product. How can I do this with Mahout?
The products are stored in a MySQL database so I'd use the JDBCDataModel. For computing the similarities I'd prefer the LogLikelihoodTest.
But which recommender should I choose? It seems that all recommenders are designed
I'm going to guess at the question here. You have user-item data, where users are real people and items are books. You are using LogLikelihoodSimilarity
as the basis for some recommender, either user-based or item-based.
You don't need a recommender if you just want most similar items. Just use LogLikelihoodSimilarity
, which is an ItemSimilarity
, to compute similarity with all other items and take the most similar ones. In fact look at the TopItems
class which even does that logic for you.
来源:https://stackoverflow.com/questions/8787468/how-to-get-k-similar-products-using-mahout