典型文献
A Novel Attention-based Global and Local Information Fusion Neural Network for Group Recommendation
文献摘要:
Due to the popularity of group activities in social media,group recommendation becomes increasingly significant.It aims to pursue a list of preferred items for a target group.Most deep learning-based methods on group recommendation have focused on learn-ing group representations from single interaction between groups and users.However,these methods may suffer from data sparsity prob-lem.Except for the interaction between groups and users,there also exist other interactions that may enrich group representation,such as the interaction between groups and items.Such interactions,which take place in the range of a group,form a local view of a certain group.In addition to local information,groups with common interests may also show similar tastes on items.Therefore,group represent-ation can be conducted according to the similarity among groups,which forms a global view of a certain group.In this paper,we propose a novel global and local information fusion neural network(GLIF)model for group recommendation.In GLIF,an attentive neural net-work(ANN)activates rich interactions among groups,users and items with respect to forming a group's local representation.Moreover,our model also leverages ANN to obtain a group's global representation based on the similarity among different groups.Then,it fuses global and local representations based on attention mechanism to form a group's comprehensive representation.Finally,group recom-mendation is conducted under neural collaborative filtering(NCF)framework.Extensive experiments on three public datasets demon-strate its superiority over the state-of-the-art methods for group recommendation.
文献关键词:
中图分类号:
作者姓名:
Song Zhang;Nan Zheng;Dan-Li Wang
作者机构:
State Key Laboratory of Management and Control for Complex Systems,Institute of Automation,Chinese Academy of Sciences,Beijing 100190,China;School of Artificial Intelligence,University of Chinese Academy of Sciences,Beijing 100049,China
文献出处:
引用格式:
[1]Song Zhang;Nan Zheng;Dan-Li Wang-.A Novel Attention-based Global and Local Information Fusion Neural Network for Group Recommendation)[J].机器智能研究(英文),2022(04):331-346
A类:
GLIF
B类:
Novel,Attention,Global,Local,Information,Fusion,Neural,Network,Group,Recommendation,Due,popularity,activities,social,media,recommendation,becomes,increasingly,significant,It,aims,pursue,list,preferred,items,target,Most,deep,learning,methods,have,focused,representations,from,single,between,groups,users,However,these,may,suffer,sparsity,prob,lem,Except,there,also,exist,other,interactions,that,enrich,such,Such,which,take,place,range,local,view,certain,addition,information,common,interests,show,tastes,Therefore,conducted,according,similarity,among,forms,global,this,paper,propose,novel,fusion,neural,network,model,attentive,ANN,activates,respect,forming,Moreover,our,leverages,obtain,different,Then,fuses,attention,mechanism,comprehensive,Finally,under,collaborative,filtering,NCF,framework,Extensive,experiments,three,public,datasets,demon,strate,its,superiority,state,art
AB值:
0.51452
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