Trust-aware recommender systems have attracted much attention recently due to the prevalence of social networks. However, most existing trust-based approaches are designed for the recommendation task of rating prediction. Only few trust-aware methods have attempted to recommend users an ordered list of interesting items, i.e., item recommendation. In this article, we propose three factored similarity models with the incorporation of social trust for item recommendation based on implicit user feedback. Specifically, we introduce a matrix factorization technique to recover user preferences between rated items and unrated ones in the light of both user-user and item-item similarities. In addition, we claim that social trust relationships also ...
Matrix factorization (MF) has been proved to be an effective approach to build a successful recommen...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Similarity-based recommender systems suffer from significant limitations, such as data sparseness an...
The success of e-commerce companies is becoming increasingly dependent on product recommender system...
Many trust-aware recommendation systems have emerged to overcome the problem of data sparsity, which...
Traditional recommender systems assume that all users are independent and identically distributed, a...
Similarity-based recommender systems suffer from significant limitations, such as data sparseness an...
Collaborative filtering suffers from the problems of data sparsity and cold start, which dramaticall...
In this paper we examine an advanced collaborative filtering method that uses similarity transitivit...
Recommender systems have become de facto tools for suggesting items that are of potential interest t...
As an indispensable technique in the field of Information Filtering, Recommender System has been wel...
Traditional collaborative filtering (CF) based recommender systems on the basis of user similarity o...
To alleviate the issue of data sparsity in collaborative filtering (CF), a number of trust-aware rec...
With the increasing popularity of social network services, social network platforms provide rich and...
Recommender systems are one of the recent inventions to deal with ever growing information overload ...
Matrix factorization (MF) has been proved to be an effective approach to build a successful recommen...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Similarity-based recommender systems suffer from significant limitations, such as data sparseness an...
The success of e-commerce companies is becoming increasingly dependent on product recommender system...
Many trust-aware recommendation systems have emerged to overcome the problem of data sparsity, which...
Traditional recommender systems assume that all users are independent and identically distributed, a...
Similarity-based recommender systems suffer from significant limitations, such as data sparseness an...
Collaborative filtering suffers from the problems of data sparsity and cold start, which dramaticall...
In this paper we examine an advanced collaborative filtering method that uses similarity transitivit...
Recommender systems have become de facto tools for suggesting items that are of potential interest t...
As an indispensable technique in the field of Information Filtering, Recommender System has been wel...
Traditional collaborative filtering (CF) based recommender systems on the basis of user similarity o...
To alleviate the issue of data sparsity in collaborative filtering (CF), a number of trust-aware rec...
With the increasing popularity of social network services, social network platforms provide rich and...
Recommender systems are one of the recent inventions to deal with ever growing information overload ...
Matrix factorization (MF) has been proved to be an effective approach to build a successful recommen...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Similarity-based recommender systems suffer from significant limitations, such as data sparseness an...