Incorporating group recommendations to recommender systems: Alternatives and performance
作者:
Highlights:
•
摘要
In collaborative filtering recommender systems recommendations can be made to groups of users. There are four basic stages in the collaborative filtering algorithms where the group’s users’ data can be aggregated to the data of the group of users: similarity metric, establishing the neighborhood, prediction phase, determination of recommended items. In this paper we perform aggregation experiments in each of the four stages and two fundamental conclusions are reached: (1) the system accuracy does not vary significantly according to the stage where the aggregation is performed, (2) the system performance improves notably when the aggregation is performed in an earlier stage of the collaborative filtering process. This paper provides a group recommendation similarity metric and demonstrates the convenience of tackling the aggregation of the group’s users in the actual similarity metric of the collaborative filtering process.
论文关键词:RS,Recommender Systems,CF,Collaborative Filtering,COR,Pearson Correlation,SING,singularities similarity metric,ERRS,extended restricted recommender system,UGSM,users group similarity metric,Recommender system,Collaborative filtering,Group recommendation
论文评审过程:Received 16 May 2012, Revised 6 February 2013, Accepted 7 February 2013, Available online 22 March 2013.
论文官网地址:https://doi.org/10.1016/j.ipm.2013.02.003