Link prediction in online social networks is useful in numerous applications, mainly for recommendation. Recently, different approaches have considered friendship groups information for increasing the link prediction accuracy. Nevertheless, these approaches do not consider the different roles that common neighbors may play in the different overlapping groups that they belong to. In this paper, we propose a new approach that uses overlapping groups structural information for building a naïve Bayes model. From this proposal, we show three different measures derived from the common neighbors. We perform experiments for both unsupervised and supervised link prediction strategies considering the link imbalance problem. We compare sixteen measure...
Link prediction is an estimation problem that has drawn a great deal of attention in recent years. I...
Social networks are driven by social interaction and therefore dynamic. When modeled as a graph, nod...
Online Social Networks are growing exponentially due to which a lot of researchers are working on So...
Link prediction in online social networks is useful in numerous applications, mainly for recommendat...
Users of online social networks voluntarily participate in different user groups or communities. Res...
The problem of link prediction has gained a lot of atten-tion recently from the research community. ...
Online social networks play a major role in modern societies, and they have shaped the way social re...
Online social networks have become important for networking, communication, sharing, and discovery. ...
Alongside the continuous development of Internet technologies, traditional social\ud networks are ru...
Link prediction in social networks is to infer the new links likely to be formed next or to reconstr...
Online social networks are highly dynamic and sparse. One of the main problems in analyzing these ne...
On-line social networks (OSNs) often contain many different types of relationships between users. Wh...
ABSTRACT Online social networks have become important for networking, communication, sharing, and di...
The analysis of social networks has attracted a lot of attention during the last two decades. These ...
Online social networks (OSNs) are Web platforms providing different services to facilitate social in...
Link prediction is an estimation problem that has drawn a great deal of attention in recent years. I...
Social networks are driven by social interaction and therefore dynamic. When modeled as a graph, nod...
Online Social Networks are growing exponentially due to which a lot of researchers are working on So...
Link prediction in online social networks is useful in numerous applications, mainly for recommendat...
Users of online social networks voluntarily participate in different user groups or communities. Res...
The problem of link prediction has gained a lot of atten-tion recently from the research community. ...
Online social networks play a major role in modern societies, and they have shaped the way social re...
Online social networks have become important for networking, communication, sharing, and discovery. ...
Alongside the continuous development of Internet technologies, traditional social\ud networks are ru...
Link prediction in social networks is to infer the new links likely to be formed next or to reconstr...
Online social networks are highly dynamic and sparse. One of the main problems in analyzing these ne...
On-line social networks (OSNs) often contain many different types of relationships between users. Wh...
ABSTRACT Online social networks have become important for networking, communication, sharing, and di...
The analysis of social networks has attracted a lot of attention during the last two decades. These ...
Online social networks (OSNs) are Web platforms providing different services to facilitate social in...
Link prediction is an estimation problem that has drawn a great deal of attention in recent years. I...
Social networks are driven by social interaction and therefore dynamic. When modeled as a graph, nod...
Online Social Networks are growing exponentially due to which a lot of researchers are working on So...