会议专题

A New Collaborative Filtering Algorithm based on Modified Matrix Factorization

  Recommendation algorithm based on matrix factorization has a global presented objective function by optimization technology,in which singular value decomposition is a typical representative,but there are still some bottleneck restricting the further development of problems such as high-dimensional sparse problem.Concerning that problem,we propose an alternating least square based on singular value decomposition algorithm.Firstly,we fill the user-item rating matrix with each items mean score.Secondly we use singular value decomposition to identify the best potential factor dimension and initialize the potential factor matrix of users and items.Thirdly we use alternating least squares to get the final potential factor matrix of users and items.Finally,we use the final potential factor matrix of users and items to recommend.The results on the Movielens datasets show that the proposed algorithm can effectively improve the recommendation accuracy so as to ease the high-dimensional data sparsity.

Alternating least square SVD Sparsity Recommender algorithm Matrix factorization

Hanmin Ye Qiuling Zhang Xue Bai

College of Information Science and Engineering Guilin University of Technology

国际会议

2017 IEEE 2nd Advanced Information Technology,Electronic and Automation Control Conference(IAEAC 2017)(2017 IEEE 第2届先进信息技术、电子与自动化控制国际会议)

重庆

英文

147-151

2017-03-25(万方平台首次上网日期,不代表论文的发表时间)