© 1989-2012 IEEE. Community search is important in graph analysis and can be used in many real applications. In the literature, various community models have been proposed. However, most of them cannot well identify the overlaps between communities which is an essential feature of real graphs. To address this issue, the κ-clique percolation community model was proposed and has been proven effective in many applications. Motivated by this, in this paper, we adopt the κ-clique percolation community model and study the densest clique percolation community search problem which aims to find the κ-clique percolation community with the maximum K value that contains a given set of query nodes. We adopt an index-based approach to solve this problem....
Finding communities in the form of cohesive subgraphs is a fundamental problem in network analysis. ...
As a major kind of query-dependent community detection, community search finds a densely connected s...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...
15 pages, 5 figures, 1 tableInternational audienceAutomatic detection of relevant groups of nodes in...
In many real-world applications, bipartite graphs are naturally used to model relationships between ...
Bipartite graphs are widely used to model relation-ships between two types of entities. Community se...
Abstract Community search problem, which is to find good communities given a set of query nodes in a...
Bipartite graphs are widely used to model relationships between two types of entities. Community sea...
A lot of research in graph mining has been devoted in the dis-covery of communities. Most of the wor...
Community Search, or finding a connected subgraph (known as a community) containing the given query ...
In many real-world applications, bipartite graphs are naturally used to model relationships between ...
University of Technology Sydney. Faculty of Engineering and Information Technology.Community detecti...
k-plexes are a formal yet flexible way of defining communities in networks. They generalize the noti...
© 2019, Springer-Verlag GmbH Germany, part of Springer Nature. With the rapid development of informa...
Given a graph G and a vertex q∈G, the community search (CS) problem aims to efficiently find a subgr...
Finding communities in the form of cohesive subgraphs is a fundamental problem in network analysis. ...
As a major kind of query-dependent community detection, community search finds a densely connected s...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...
15 pages, 5 figures, 1 tableInternational audienceAutomatic detection of relevant groups of nodes in...
In many real-world applications, bipartite graphs are naturally used to model relationships between ...
Bipartite graphs are widely used to model relation-ships between two types of entities. Community se...
Abstract Community search problem, which is to find good communities given a set of query nodes in a...
Bipartite graphs are widely used to model relationships between two types of entities. Community sea...
A lot of research in graph mining has been devoted in the dis-covery of communities. Most of the wor...
Community Search, or finding a connected subgraph (known as a community) containing the given query ...
In many real-world applications, bipartite graphs are naturally used to model relationships between ...
University of Technology Sydney. Faculty of Engineering and Information Technology.Community detecti...
k-plexes are a formal yet flexible way of defining communities in networks. They generalize the noti...
© 2019, Springer-Verlag GmbH Germany, part of Springer Nature. With the rapid development of informa...
Given a graph G and a vertex q∈G, the community search (CS) problem aims to efficiently find a subgr...
Finding communities in the form of cohesive subgraphs is a fundamental problem in network analysis. ...
As a major kind of query-dependent community detection, community search finds a densely connected s...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...