Published 2007 | Version v2
Conference paper

Collaborative Filtering via Ensembles of Matrix Factorizations

Creators

Description

Description

We present a Matrix Factorization(MF) based approach for the Netflix Prize competition. Currently MF based algorithms are popular and have proved successful for collaborative filtering tasks. For the Netflix Prize competition, we adopt three different types of MF algorithms: regularized MF, maximum margin MF and non-negative MF. Furthermore, for each MF algorithm, instead of selecting the optimal parameters, we combine the results obtained with several parameters. With this method, we achieve a performance that is more than 6 better than the Netflix's own system.

Details

Title Collaborative Filtering via Ensembles of Matrix Factorizations
Authors
  • Wu, M.
  • Publisher In KDD Cup and Workshop
    Year of publication 2007
    External URL https://pure.mpg.de/pubman/faces/ViewItemOverviewPage.jsp?itemId=item_1790294