During the past few years, users’ membership in the online system (i.e. the social groups that online users joined) were widely investigated. Most of these works focus on the detection, formulation and growth of online communities. In this paper, we study users’ membership in a coupled system which contains user-group and user-object bipartite networks. By linking users’ membership information and their object selection, we find that the users who have collected only a few objects are more likely to be “influenced” by the membership when choosing objects. Moreover, we observe that some users may join many online communities though they collected few objects. Based on these findings, we design a social diffusion recommendation algorithm whic...
Abstract: The variety of social networks and virtual communities has created problematic for users o...
While early recommender systems have mostly focused on numeric ratings to model their interests, rec...
The development of recommendation system comes with the research of data sparsity, cold start, scala...
During the past few years, users' membership in the online system (i.e. the social groups that onlin...
In this paper, based on the coupled social networks (CSN), we propose a hybrid algorithm to nonlinea...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Copyright © 2014 Da-Cheng Nie et al. This is an open access article distributed under the Creative C...
The overwhelming amount of information available today makes it difficult for users to find useful i...
The “Cold-Start” problem is a well-known issue in recommendation systems: there is relatively little...
The rapid expansion of Internet brings us overwhelming online information, which is impossible for a...
Social voting is an emerging new feature in online social networks. It poses unique challenges and o...
Recommendation systems are gaining popularity with the proliferation of the Internet of People (IoP)...
Online users nowadays are facing serious information overload problem. In recent years, recommender ...
Recommending items to new or “cold-start ” users is a chal-lenging problem for recommender systems. ...
Collaborative Filtering (CF) has become the most popular approach for developing Recommender Systems...
Abstract: The variety of social networks and virtual communities has created problematic for users o...
While early recommender systems have mostly focused on numeric ratings to model their interests, rec...
The development of recommendation system comes with the research of data sparsity, cold start, scala...
During the past few years, users' membership in the online system (i.e. the social groups that onlin...
In this paper, based on the coupled social networks (CSN), we propose a hybrid algorithm to nonlinea...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Copyright © 2014 Da-Cheng Nie et al. This is an open access article distributed under the Creative C...
The overwhelming amount of information available today makes it difficult for users to find useful i...
The “Cold-Start” problem is a well-known issue in recommendation systems: there is relatively little...
The rapid expansion of Internet brings us overwhelming online information, which is impossible for a...
Social voting is an emerging new feature in online social networks. It poses unique challenges and o...
Recommendation systems are gaining popularity with the proliferation of the Internet of People (IoP)...
Online users nowadays are facing serious information overload problem. In recent years, recommender ...
Recommending items to new or “cold-start ” users is a chal-lenging problem for recommender systems. ...
Collaborative Filtering (CF) has become the most popular approach for developing Recommender Systems...
Abstract: The variety of social networks and virtual communities has created problematic for users o...
While early recommender systems have mostly focused on numeric ratings to model their interests, rec...
The development of recommendation system comes with the research of data sparsity, cold start, scala...