Transfer learning in heterogeneous collaborative filtering domains

作者:

摘要

A major challenge for collaborative filtering (CF) techniques in recommender systems is the data sparsity that is caused by missing and noisy ratings. This problem is even more serious for CF domains where the ratings are expressed numerically, e.g. as 5-star grades. We assume the 5-star ratings are unordered bins instead of ordinal relative preferences. We observe that, while we may lack the information in numerical ratings, we sometimes have additional auxiliary data in the form of binary ratings. This is especially true given that users can easily express themselves with their preferences expressed as likes or dislikes for items. In this paper, we explore how to use these binary auxiliary preference data to help reduce the impact of data sparsity for CF domains expressed in numerical ratings. We solve this problem by transferring the rating knowledge from some auxiliary data source in binary form (that is, likes or dislikes), to a target numerical rating matrix.

论文关键词:Transfer learning,Collaborative filtering,Missing ratings

论文评审过程:Received 6 December 2010, Revised 6 December 2012, Accepted 12 January 2013, Available online 11 February 2013.

论文官网地址:https://doi.org/10.1016/j.artint.2013.01.003