In most existing recommender systems, implicit or explicit interactions are treated as positive links and all unknown interactions are treated as negative links. The goal is to suggest new links that will be perceived as positive by users. However, as signed social networks and newer content services become common, it is important to distinguish between positive and negative preferences. Even in existing applications, the cost of a negative recommendation could be high when people are looking for new jobs, friends, or places to live. In this work, we develop novel probabilistic latent factor models to recommend positive links and compare them with existing methods on five different openly available datasets. Our models are able to produce...
Research paper recommender systems (RSs) aim to alleviate the information overload of researchers by...
peer reviewedCollaborative filtering (CF) is a widely applied method to perform recommendation tasks...
Abstract. Collaborative filtering and, more generally, recommender systems represent an increasingly...
<p>Collaborative filtering approaches have produced some of the most accurate and personalized recom...
Recommender Systems are widely used to personalize the user experience in a diverse set of online ap...
In this paper, we introduce a modified collaborative filtering (MCF) algorithm, which has remarkably...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
Personalized ranking and filtering algorithms, also known as recommender systems, form the backbone ...
Many trust-aware recommendation systems have emerged to overcome the problem of data sparsity, which...
Recommender systems has become increasingly important in online community for providing personalized...
Collaborative filtering (CF) is a widely used technique for recommender systems. The essential princi...
Recommender systems are becoming an integral part of routine life, as they are extensively used in d...
Contact recommendation has become a common functionality in online social platforms, and an establis...
Diversity and accuracy are frequently considered as two irreconcilable goals in the field of Recomme...
This paper demonstrates that "social network collaborative filtering" (SNCF), wherein user-selected ...
Research paper recommender systems (RSs) aim to alleviate the information overload of researchers by...
peer reviewedCollaborative filtering (CF) is a widely applied method to perform recommendation tasks...
Abstract. Collaborative filtering and, more generally, recommender systems represent an increasingly...
<p>Collaborative filtering approaches have produced some of the most accurate and personalized recom...
Recommender Systems are widely used to personalize the user experience in a diverse set of online ap...
In this paper, we introduce a modified collaborative filtering (MCF) algorithm, which has remarkably...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
Personalized ranking and filtering algorithms, also known as recommender systems, form the backbone ...
Many trust-aware recommendation systems have emerged to overcome the problem of data sparsity, which...
Recommender systems has become increasingly important in online community for providing personalized...
Collaborative filtering (CF) is a widely used technique for recommender systems. The essential princi...
Recommender systems are becoming an integral part of routine life, as they are extensively used in d...
Contact recommendation has become a common functionality in online social platforms, and an establis...
Diversity and accuracy are frequently considered as two irreconcilable goals in the field of Recomme...
This paper demonstrates that "social network collaborative filtering" (SNCF), wherein user-selected ...
Research paper recommender systems (RSs) aim to alleviate the information overload of researchers by...
peer reviewedCollaborative filtering (CF) is a widely applied method to perform recommendation tasks...
Abstract. Collaborative filtering and, more generally, recommender systems represent an increasingly...