Due to the data sparsity problem, social network information is often additionally used to improve the performance of recommender systems. While most existing works exploit social information to reduce the rating prediction error, e.g., RMSE, a few had aimed to improve the top-k ranking prediction accuracy. This paper proposes a novel top-k ranking oriented recommendation method, TRecSo, which incorporates social information into recommendation by modeling two different roles of users as trusters and trustees while considering the structural information of the network. Empirical studies on real-world datasets demonstrate that TRecSo leads to a remarkable improvement compared with previous methods in top-k recommendation. (C) 2016 Elsevier I...
Part 2: Full PapersInternational audienceIn this work, we explore the benefits of combining clusteri...
Similarity-based recommender systems suffer from significant limitations, such as data sparseness an...
With the advent of online social networks, recommender systems have became crucial for the success o...
Top-N item recommendation is one of the important tasks of rec-ommenders. Collaborative filtering is...
In order to alleviate the pressure of information overload and enhance consumer satisfaction, person...
The growing popularity of Social Networks raises the important issue of trust. Among many systems wh...
Many trust-aware recommendation systems have emerged to overcome the problem of data sparsity, which...
In web-based social networks social trust relationships between users indicate the similarity of the...
Social Networks have dominated growth and popularity of the Web to an extent which has never been wi...
Recommender systems help Internet users quickly find information they may be interested in from an e...
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...
Recommendation systems or recommender system (RSs) is one of the hottest topics nowadays, which is w...
To improve recommendation quality, the existing trust-based recommendation methods often directly us...
Recommender systems have become de facto tools for suggesting items that are of potential interest t...
Part 2: Full PapersInternational audienceIn this work, we explore the benefits of combining clusteri...
Similarity-based recommender systems suffer from significant limitations, such as data sparseness an...
With the advent of online social networks, recommender systems have became crucial for the success o...
Top-N item recommendation is one of the important tasks of rec-ommenders. Collaborative filtering is...
In order to alleviate the pressure of information overload and enhance consumer satisfaction, person...
The growing popularity of Social Networks raises the important issue of trust. Among many systems wh...
Many trust-aware recommendation systems have emerged to overcome the problem of data sparsity, which...
In web-based social networks social trust relationships between users indicate the similarity of the...
Social Networks have dominated growth and popularity of the Web to an extent which has never been wi...
Recommender systems help Internet users quickly find information they may be interested in from an e...
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...
Recommendation systems or recommender system (RSs) is one of the hottest topics nowadays, which is w...
To improve recommendation quality, the existing trust-based recommendation methods often directly us...
Recommender systems have become de facto tools for suggesting items that are of potential interest t...
Part 2: Full PapersInternational audienceIn this work, we explore the benefits of combining clusteri...
Similarity-based recommender systems suffer from significant limitations, such as data sparseness an...
With the advent of online social networks, recommender systems have became crucial for the success o...