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2013/3/27
Transfer learning in
heterogeneous collaborative
filtering domains
Authors/ Weike Pan and Qiang Yang
Affiliation/ Dept. of CSE, Hong Kong University of Science and Technology
Source/ Journal of Artificial Intelligence (2013)
Presenter/ Allen Wu
                                                                              1
Outline
• Introduction
• Heterogeneous collaborative filtering problems




                                                   2013/3/27
• Transfer by collective factorization
• Experimental results
• Conclusion




                                                     2
Introduction
• Data sparsity is a major challenge in collaborative filtering (CF).
   • Overfitting can easily happen for prediction.




                                                                               2013/3/27
• Some auxiliary data of the form “like” or “dislike” may be more
  easily obtained.
   • It’s more convenient for users to express preference.


• How do we take advantage of auxiliary knowledge to alleviate the
  sparsity problem?

• Most existing transfer learning methods in CF consider auxiliary data from
  several perspectives.
   • User-side transfer, item-side transfer, knowledge-transfer.                 3
Probabilistic Matrix Factorization
(NIPS’08)
•




                                     2013/3/27
                                       4
Social Recommendation (CIKM’08)
•




                                  2013/3/27
                                    5
Collective Matrix Factorization (KDD’08)
•




                                           2013/3/27
                                             6
CodeBook Transfer (IJCAI’09)
•




                               2013/3/27
                                 7
Rating-matrix generative model (ICML’09)
• RMGM is derived and extended from FMM generative model,
  which can be formulated as




                                                             2013/3/27
  • The difference:
     • It learns (U, V) and (U3, V3) alternatively.
     • A soft indicator matrix is used. E.g., U [0, 1]n d.




                                                               8
Heterogeneous collaborative filtering
problems
•                   •




                                        2013/3/27
                                          9
Challenges
•




             2013/3/27
             10
Overview of solution
•




                       2013/3/27
                       11
Model formulation
• Assume a user u’s rating on an item i in the target data, rui, is
  generated from




                                                                      2013/3/27
  • user-specific latent feature vector Uu  1 d, where u=1,…,n.

  • item-specific latent feature vector Vi 1 d, where i=1,…,m.

  • some data-dependent effect denoted as B      d d.




                                                                      12
Model formulation (Cont.)
• Likelihood:
• Prior:




                                                    2013/3/27
• Posterior Likelihood Prior (Bayesian inference)
  • Log(Posterior)= Log(Likelihood Prior)




                                                    13
Model formulation
•




                    2013/3/27
                    14
Learning the TCF




                   2013/3/27
                   15
Learning U and V in CMTF
• Theorem 1. Given B and V, we can obtain the user-specific
  latent matrix U in a closed form.




                                                              2013/3/27
                                                              16
Learning U and V in CSVD
•




                           2013/3/27
                           17
Learning U and V in CSVD
(Cont.)




                           2013/3/27
                           18
•




     2013/3/27
19
Algorithm of TCF




                   2013/3/27
                   20
Data sets
•




            2013/3/27
            21
Evaluation metrics
• Summary of Data sets




                         2013/3/27
• Evaluation metrics



                         22
Baselines and parameter settings
•




                                   2013/3/27
                                   23
Performance of Moviepilot data




                                 2013/3/27
                                 24
Performance of Netfliex data




                               2013/3/27
                               25
Performance on Netflix at different
sparsity levels
• SCVD performs
  better than CMTF in




                                      2013/3/27
  all cases.




                                      26
Conclusion
• This paper investigate how to address the sparsity problem in
  CF via a transfer learning solution.




                                                                   2013/3/27
• The TCP framework is proposed to transfer knowledge from
  auxiliary data to target data to alleviates the data sparsity.

• Experimental results show that TCP performs significantly
  better than several state-of-the-art baseline algorithms.

• In the future, the “pure” cold-start problem for users without
  any rating is needed to be addressed via transfer learning.
                                                                   27
2013/3/27
Thank you for
listening.
Q&A



                28

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Transfer learning in heterogeneous collaborative filtering domains