Abstract—Many real-world complex networks, like client-product or file-provider relations, have a bipartite nature and evolve during time. Predicting links that will appear in them is one of the main approach to understand their dynamics. Only few works address the bipartite case, though, despite its high practical interest and the specific challenges it raises. We define in this paper the notion of internal links in bipartite graphs and propose a link prediction method based on them. We describe the method and experimentally compare it to a basic collaborative filtering approach. We present results obtained for two typical practical cases. We reach the conclusion that our method performs very well, and that internal links play an important...
n recent years, link prediction has been applied to a wide range of real-world applications which of...
The question of how to predict which links will form in a graph, given the graph's history, is an op...
Many link prediction methods have been developed to infer unobserved links or predict missing links ...
International audienceMany real-world complex networks, like client-product or file-provider relatio...
Link prediction in complex networks is a topic of high interest for many scientists that studied dif...
The link prediction problem can be used for predicting the link changes that are difficult to unders...
Nowadays, social networks, whose application areas are increasing day by day; Such as data mining, p...
Missing link prediction is a widely studied task of network analysis. It concerns the prediction of ...
Recently, link prediction studies on large-scale and complex networks have particularly become the f...
International audienceThe growing number of multi-relational networks pose new challenges concerning...
Real networks typically studied in various research fields—ecology and economic complexity, fo...
Abstract—In user-item networks, the link prediction problem has received considerable attentions and...
Link prediction based on bipartite networks can not only mine hidden relationships between different...
© 2019 ACM.Link prediction is a prominent issue that involves predicting the occurrence of future re...
Abstract Many aspects from real life with bi-relational structure can be modeled as bipartite networ...
n recent years, link prediction has been applied to a wide range of real-world applications which of...
The question of how to predict which links will form in a graph, given the graph's history, is an op...
Many link prediction methods have been developed to infer unobserved links or predict missing links ...
International audienceMany real-world complex networks, like client-product or file-provider relatio...
Link prediction in complex networks is a topic of high interest for many scientists that studied dif...
The link prediction problem can be used for predicting the link changes that are difficult to unders...
Nowadays, social networks, whose application areas are increasing day by day; Such as data mining, p...
Missing link prediction is a widely studied task of network analysis. It concerns the prediction of ...
Recently, link prediction studies on large-scale and complex networks have particularly become the f...
International audienceThe growing number of multi-relational networks pose new challenges concerning...
Real networks typically studied in various research fields—ecology and economic complexity, fo...
Abstract—In user-item networks, the link prediction problem has received considerable attentions and...
Link prediction based on bipartite networks can not only mine hidden relationships between different...
© 2019 ACM.Link prediction is a prominent issue that involves predicting the occurrence of future re...
Abstract Many aspects from real life with bi-relational structure can be modeled as bipartite networ...
n recent years, link prediction has been applied to a wide range of real-world applications which of...
The question of how to predict which links will form in a graph, given the graph's history, is an op...
Many link prediction methods have been developed to infer unobserved links or predict missing links ...