International audienceThe growing number of multi-relational networks pose new challenges concerning the development of methods for solving classical graph problems in a multi-layer framework, such as link prediction. In this work, we combine an existing bipartite local models method with approaches for link prediction from communities to address the link prediction problem in multi-layer graphs. To this end, we extend existing community detection-based link prediction measures to the bi-partite multi-layer network setting. We obtain a new generic framework for link prediction in bipartite multi-layer graphs, which can integrate any community detection approach, is capable of handling an arbitrary number of networks, rather inexpensive (dep...
The link prediction problem can be used for predicting the link changes that are difficult to unders...
The emergence of complex real-world networks has put forth a plethora of information about different...
Link prediction in complex networks is a topic of high interest for many scientists that studied dif...
International audienceThe growing number of multi-relational networks pose new challenges concerning...
Abstract Many aspects from real life with bi-relational structure can be modeled as bipartite networ...
Traditional link prediction techniques primarily focus on the effect of potential linkages on the lo...
Nowadays, social networks, whose application areas are increasing day by day; Such as data mining, p...
Predicting plausible links that may emerge between pairs of nodes is an important task in social net...
Predicting plausible links that may emerge between pairs of nodes is an important task in social net...
Complex systems are often characterized by distinct types of interactions between the same entities....
International audienceMany real-world complex networks, like client-product or file-provider relatio...
Link prediction based on bipartite networks can not only mine hidden relationships between different...
A Link Prediction (LP) algorithm is given a graph, and has to rank, for each node, other nodes that ...
Networks extracted from social media platforms frequently include multiple types of links that dynam...
Many aspects from real life with bi-relational structure can be modeled as bipartite networks. This ...
The link prediction problem can be used for predicting the link changes that are difficult to unders...
The emergence of complex real-world networks has put forth a plethora of information about different...
Link prediction in complex networks is a topic of high interest for many scientists that studied dif...
International audienceThe growing number of multi-relational networks pose new challenges concerning...
Abstract Many aspects from real life with bi-relational structure can be modeled as bipartite networ...
Traditional link prediction techniques primarily focus on the effect of potential linkages on the lo...
Nowadays, social networks, whose application areas are increasing day by day; Such as data mining, p...
Predicting plausible links that may emerge between pairs of nodes is an important task in social net...
Predicting plausible links that may emerge between pairs of nodes is an important task in social net...
Complex systems are often characterized by distinct types of interactions between the same entities....
International audienceMany real-world complex networks, like client-product or file-provider relatio...
Link prediction based on bipartite networks can not only mine hidden relationships between different...
A Link Prediction (LP) algorithm is given a graph, and has to rank, for each node, other nodes that ...
Networks extracted from social media platforms frequently include multiple types of links that dynam...
Many aspects from real life with bi-relational structure can be modeled as bipartite networks. This ...
The link prediction problem can be used for predicting the link changes that are difficult to unders...
The emergence of complex real-world networks has put forth a plethora of information about different...
Link prediction in complex networks is a topic of high interest for many scientists that studied dif...