会议专题

Improving Collaborative Filtering with Long-Short Interest Model

  Collaborative filtering(CF)has been widely employed within recommender systems in many real-world situations.The basic assumption of CF is that items liked by the same user would be similar and users like the same items would share a similar interest.But it is not always true since the users interest changes over time.It should be more reasonable to assume that if these items are liked by the same user in the same time period,there is a strong possibility that they are similar,but the possibility will shrink if the user likes them in a different time period.In this paper,we propose a long-short interest model(LSIM)based on the new assumption to improve collaborative filtering.In special,we introduce a neural network based language model to extract the sequential features on users preference over time.Then,we integrate the sequential features to solve the rating prediction task in a feature based collaborative filtering framework.Experimental results on three MovieLens datasets demonstrate that our approach can achieve the state-of-the-art performance.

Recommender System Collaborative Filtering Long-Short Interest Model

Chao Lv Lili Yao Yansong Feng Dongyan Zhao

Institute of Computer Science and Technology Peking University,Beijing 100871,China

国际会议

第五届自然语言处理与中文计算会议(NLPCC-ICCPOL2016)

昆明

英文

1-12

2016-12-02(万方平台首次上网日期,不代表论文的发表时间)