Link prediction based on bipartite networks can not only mine hidden relationships between different types of nodes, but also reveal the inherent law of network evolution. Existing bipartite network link prediction is mainly based on the global structure that cannot analyze the role of the local structure in link prediction. To tackle this problem, this paper proposes a deep link-prediction (DLP) method by leveraging the local structure of bipartite networks. The method first extracts the local structure between target nodes and observes structural information between nodes from a local perspective. Then, representation learning of the local structure is performed on the basis of the graph neural network to extract latent features between t...
International audienceThe task of inferring the missing links in a graph based on its current struct...
We present an algorithm (LsNet2Vec) that, given a large-scale network (millions of nodes), embeds th...
Link Prediction in Human Complex Networks aims to predict the missing, deleted, or future link forma...
In recent years, endless link prediction algorithms based on network representation learning have em...
Link prediction aims at predicting latent edges according to the existing network structure informat...
Link prediction in complex networks is a topic of high interest for many scientists that studied dif...
The emergence of complex real-world networks has put forth a plethora of information about different...
Deep models can be made scale-invariant when trained with multi-scale information. Images can be eas...
Link prediction, as an important research direction in complicated network analysis, has broad appli...
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...
International audienceThe growing number of multi-relational networks pose new challenges concerning...
The link prediction problem can be used for predicting the link changes that are difficult to unders...
Link prediction is a fundamental problem with a wide range of applications in various domains, which...
Link prediction is one of the most fundamental problems in graph modeling and mining. It has been st...
International audienceThe task of inferring the missing links in a graph based on its current struct...
We present an algorithm (LsNet2Vec) that, given a large-scale network (millions of nodes), embeds th...
Link Prediction in Human Complex Networks aims to predict the missing, deleted, or future link forma...
In recent years, endless link prediction algorithms based on network representation learning have em...
Link prediction aims at predicting latent edges according to the existing network structure informat...
Link prediction in complex networks is a topic of high interest for many scientists that studied dif...
The emergence of complex real-world networks has put forth a plethora of information about different...
Deep models can be made scale-invariant when trained with multi-scale information. Images can be eas...
Link prediction, as an important research direction in complicated network analysis, has broad appli...
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...
International audienceThe growing number of multi-relational networks pose new challenges concerning...
The link prediction problem can be used for predicting the link changes that are difficult to unders...
Link prediction is a fundamental problem with a wide range of applications in various domains, which...
Link prediction is one of the most fundamental problems in graph modeling and mining. It has been st...
International audienceThe task of inferring the missing links in a graph based on its current struct...
We present an algorithm (LsNet2Vec) that, given a large-scale network (millions of nodes), embeds th...
Link Prediction in Human Complex Networks aims to predict the missing, deleted, or future link forma...