Link prediction is a paradigmatic problem in network science with a variety of applications. In latent space network models this problem boils down to ranking pairs of nodes in the order of increasing latent distances between them. The network model with hyperbolic latent spaces has a number of attractive properties suggesting it must be a powerful tool to predict links, but the past work in this direction reported mixed results. Here we perform a systematic investigation of the utility of latent hyperbolic geometry for link prediction in networks. We first show that some measures of link prediction accuracy are extremely sensitive with respect to inaccuracies in the inference of latent hyperbolic coordinates of nodes. This observation lead...
Networks found in the real-world are numerous and varied. A common type of network is the heterogene...
Multiple network embedding algorithms have been proposed to perform the prediction of missing or fut...
Real networks typically studied in various research fields—ecology and economic complexity, fo...
Link prediction is a paradigmatic problem in network science with a variety of applications. In late...
Recently multilayer networks are introduced to model real systems. In these models the individuals m...
As a natural extension of link prediction on graphs, hyperlink prediction aims for the inference of ...
While links in simple networks describe pairwise interactions between nodes, it is necessary to inco...
Network embedding is a promising field and is important for various network analysis tasks, such as ...
This paper addresses the hyperlink prediction problem in hypernetworks. Different from the tradition...
Recent years have shown a promising progress in understanding geometric underpinnings behind the st...
Link prediction aims at predicting missing or potential links based on the known information of comp...
Link prediction in complex networks has recently attracted a great deal of attraction in diverse sci...
Link Prediction in Human Complex Networks aims to predict the missing, deleted, or future link forma...
Topological properties of networks are widely applied to study the link-prediction problem recently....
Link prediction plays an important role in network reconstruction and network evolution. The network...
Networks found in the real-world are numerous and varied. A common type of network is the heterogene...
Multiple network embedding algorithms have been proposed to perform the prediction of missing or fut...
Real networks typically studied in various research fields—ecology and economic complexity, fo...
Link prediction is a paradigmatic problem in network science with a variety of applications. In late...
Recently multilayer networks are introduced to model real systems. In these models the individuals m...
As a natural extension of link prediction on graphs, hyperlink prediction aims for the inference of ...
While links in simple networks describe pairwise interactions between nodes, it is necessary to inco...
Network embedding is a promising field and is important for various network analysis tasks, such as ...
This paper addresses the hyperlink prediction problem in hypernetworks. Different from the tradition...
Recent years have shown a promising progress in understanding geometric underpinnings behind the st...
Link prediction aims at predicting missing or potential links based on the known information of comp...
Link prediction in complex networks has recently attracted a great deal of attraction in diverse sci...
Link Prediction in Human Complex Networks aims to predict the missing, deleted, or future link forma...
Topological properties of networks are widely applied to study the link-prediction problem recently....
Link prediction plays an important role in network reconstruction and network evolution. The network...
Networks found in the real-world are numerous and varied. A common type of network is the heterogene...
Multiple network embedding algorithms have been proposed to perform the prediction of missing or fut...
Real networks typically studied in various research fields—ecology and economic complexity, fo...