The explosive growth of social networks in recent times has presented a powerful source of information to be utilized as an extra source for assisting in the social recommendation problems. The social recommendation methods that are based on probabilistic matrix factorization improved the recommendation accuracy and partly solved the cold-start and data sparsity problems. However, these methods only exploited the explicit social relations and almost completely ignored the implicit social relations. In this article, we firstly propose an algorithm to extract the implicit relation in the undirected graphs of social networks by exploiting the link prediction techniques. Furthermore, we propose a new probabilistic matrix factorization method to...
Data sparsity, scalability and prediction quality have been recognized as the three most crucial cha...
On the social media, lots of people share their experiences through various factors like blogs, onli...
SIGCHI ACM Special Interest Group on Computer-Human Interaction SIGWEB ACM Special Interest Group o...
The explosive growth of social networks in recent times has presented a powerful source of informati...
Recommender systems suffer a set of drawbacks such as sparsity. Social relations provide a useful so...
Recently, Recommender Systems (RSs) have attracted many researchers whose goal is to improve the per...
*Al Sabaawi, Ali M. Ahmed (Aksaray, Yazar ) *Yenice, Yusuf Erkan (Aksaray, Yazar )Recently, Recomme...
Relationships between users in social networks have been widely used to improve recommender systems....
© 2016 IEEE. Social recommendation explores social information to improve the quality of a recommend...
The explicitly observed social relations from online social platforms have been widely incorporated ...
Recommender systems have become de facto tools for suggesting items that are of potential interest t...
The development of Web 2.0 and the rapid growth of available data have led to the development of sys...
Conference paperData sparsity, scalability and prediction quality have been recognized as the three ...
The development of Web 2.0 and the rapid growth of available data have led to the development of sys...
Abstract—Social information between users has been widely used to improve the traditional Recommende...
Data sparsity, scalability and prediction quality have been recognized as the three most crucial cha...
On the social media, lots of people share their experiences through various factors like blogs, onli...
SIGCHI ACM Special Interest Group on Computer-Human Interaction SIGWEB ACM Special Interest Group o...
The explosive growth of social networks in recent times has presented a powerful source of informati...
Recommender systems suffer a set of drawbacks such as sparsity. Social relations provide a useful so...
Recently, Recommender Systems (RSs) have attracted many researchers whose goal is to improve the per...
*Al Sabaawi, Ali M. Ahmed (Aksaray, Yazar ) *Yenice, Yusuf Erkan (Aksaray, Yazar )Recently, Recomme...
Relationships between users in social networks have been widely used to improve recommender systems....
© 2016 IEEE. Social recommendation explores social information to improve the quality of a recommend...
The explicitly observed social relations from online social platforms have been widely incorporated ...
Recommender systems have become de facto tools for suggesting items that are of potential interest t...
The development of Web 2.0 and the rapid growth of available data have led to the development of sys...
Conference paperData sparsity, scalability and prediction quality have been recognized as the three ...
The development of Web 2.0 and the rapid growth of available data have led to the development of sys...
Abstract—Social information between users has been widely used to improve the traditional Recommende...
Data sparsity, scalability and prediction quality have been recognized as the three most crucial cha...
On the social media, lots of people share their experiences through various factors like blogs, onli...
SIGCHI ACM Special Interest Group on Computer-Human Interaction SIGWEB ACM Special Interest Group o...