Recommender systems are essential to overcome the information overload problem in professional learning environments. In this paper, we investigate interest-based recommendation in academic networks using social network analytics (SNA) methods. We implemented 21 different recommendation approaches based on traditional Collaborative Filtering (CF), Singular value Decomposition (SVD)-based RS, Trust-based CF, and SNA-based techniques for recommending new collaborators and research topics to the researchers. The evaluation results show that SNA-based recommendation outperforms traditional CF methods in terms of coverage and thus can provide an effective solution to the sparsity and cold start problems in recommender systems
Recently a recommender system has been applied to solve several different problems that face the use...
Recently a recommender system has been applied to solve several different problems that face the use...
Researchers in almost all scientific disciplines rely heavily on the collaboration of their colleagu...
Recommender systems can provide effective means to support self-organization and networking in profe...
Recommender systems (RS) and their scientific approach have become very important because they help ...
Recommender systems (RS) and their scientific approach have become very important because they help ...
Collaborative Filtering(CF) is a well-known technique in recommender systems. CF exploits relationsh...
With the constant growth of information, data sparsity problems, and cold start have become a comple...
This study aims to develop a recommender system for a social learning platform to be provided by EU ...
Research paper recommender systems (RSs) aim to alleviate the information overload of researchers by...
In Web-based social networks (WBSN), social trust relationships between users indicate the similarit...
In Web-based social networks (WBSN), social trust relationships between users indicate the similarit...
This study aims to develop a recommender system for social learning platforms that combine tradition...
SIGCHI ACM Special Interest Group on Computer-Human Interaction SIGWEB ACM Special Interest Group o...
This paper reports on a preliminary empirical study comparing methods for collaborative filtering (C...
Recently a recommender system has been applied to solve several different problems that face the use...
Recently a recommender system has been applied to solve several different problems that face the use...
Researchers in almost all scientific disciplines rely heavily on the collaboration of their colleagu...
Recommender systems can provide effective means to support self-organization and networking in profe...
Recommender systems (RS) and their scientific approach have become very important because they help ...
Recommender systems (RS) and their scientific approach have become very important because they help ...
Collaborative Filtering(CF) is a well-known technique in recommender systems. CF exploits relationsh...
With the constant growth of information, data sparsity problems, and cold start have become a comple...
This study aims to develop a recommender system for a social learning platform to be provided by EU ...
Research paper recommender systems (RSs) aim to alleviate the information overload of researchers by...
In Web-based social networks (WBSN), social trust relationships between users indicate the similarit...
In Web-based social networks (WBSN), social trust relationships between users indicate the similarit...
This study aims to develop a recommender system for social learning platforms that combine tradition...
SIGCHI ACM Special Interest Group on Computer-Human Interaction SIGWEB ACM Special Interest Group o...
This paper reports on a preliminary empirical study comparing methods for collaborative filtering (C...
Recently a recommender system has been applied to solve several different problems that face the use...
Recently a recommender system has been applied to solve several different problems that face the use...
Researchers in almost all scientific disciplines rely heavily on the collaboration of their colleagu...