Networks often contain implicit structure. We introduce novel problems and methods that look for structure in networks, by grouping nodes into supernodes and edges to superedges, and then make this structure visible to the user in a smaller generalised network. This task of finding generalisations of nodes and edges is formulated as network Summarisation'. We propose models and algorithms for networks that have weights on edges, on nodes or on both, and study three new variants of the network summarisation problem. In edge-based weighted network summarisation, the summarised network should preserve edge weights as well as possible. A wider class of settings is considered in path-based weighted network summarisation, where the resulting summ...
Graph summarization via node grouping is a popular method to build concise graph representations by ...
Networks-based models have been used to represent and analyse datasets in many fields such as comput...
Current research on network analysis; such as community detection, pattern mining and many other gra...
Networks often contain implicit structure. We introduce novel problems and methods that look for str...
We propose to compress weighted graphs (networks), motivated by the observation that large networks ...
AbstractIn the literature several authors describe methods to construct simplified models of network...
To analyze a structure of natural or social networks, the the-ory of small-world networks[1] is ofte...
This paper provides a framework for vertex classification on weighted networks. We assume that the e...
Which one is better between two representative graph summarization models with and without edge weig...
© 2021 Nazarenko, Whitwell, Blyuss and Zaikin. This is an open-access article distributed under the ...
Ties often have a strength naturally associated with them that differentiate them from each other. T...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
Weighted signed networks (WSNs) are networks in which edges are labeled with positive and negative w...
We review the main tools which allow for the statistical characterization of weighted networks. We t...
Parenclitic networks provide a powerful and relatively new way to coerce multidimensional data into ...
Graph summarization via node grouping is a popular method to build concise graph representations by ...
Networks-based models have been used to represent and analyse datasets in many fields such as comput...
Current research on network analysis; such as community detection, pattern mining and many other gra...
Networks often contain implicit structure. We introduce novel problems and methods that look for str...
We propose to compress weighted graphs (networks), motivated by the observation that large networks ...
AbstractIn the literature several authors describe methods to construct simplified models of network...
To analyze a structure of natural or social networks, the the-ory of small-world networks[1] is ofte...
This paper provides a framework for vertex classification on weighted networks. We assume that the e...
Which one is better between two representative graph summarization models with and without edge weig...
© 2021 Nazarenko, Whitwell, Blyuss and Zaikin. This is an open-access article distributed under the ...
Ties often have a strength naturally associated with them that differentiate them from each other. T...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
Weighted signed networks (WSNs) are networks in which edges are labeled with positive and negative w...
We review the main tools which allow for the statistical characterization of weighted networks. We t...
Parenclitic networks provide a powerful and relatively new way to coerce multidimensional data into ...
Graph summarization via node grouping is a popular method to build concise graph representations by ...
Networks-based models have been used to represent and analyse datasets in many fields such as comput...
Current research on network analysis; such as community detection, pattern mining and many other gra...