The maximum s-plex problem is an important model for social network analysis and other studies. In this study, we present an effective frequency-driven multi-neighborhood tabu search algorithm (FD-TS) to solve the problem on very large networks. The proposed FD-TS algorithm relies on two transformation operators (Add and Swap) to locate high-quality solutions, and a frequency-driven perturbation operator (Press) to escape and search beyond the identified local optimum traps. We report computational results for 47 massive real-life (sparse) graphs from the SNAP Collection and the 10th DIMACS Challenge, as well as 52 (dense) graphs from the 2nd DIMACS Challenge (results for 48 more graphs are also provided in the Appendix). We demonstrate the...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...
The Maximum k-plex Problem is an important combinatorial optimization problem with increasingly wide...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...
Given a simple undirected graph G=(V,E) and real constant (threshold) \u3b3 08(0,1], a subset of ver...
A clique model is one of the most important techniques on the cohesive subgraph detection; however, ...
This paper introduces and studies the maximum k-plex problem, which arises in social network analysi...
Given an undirected graph G=(V,E) with vertex set V={1,…,n} and edge set E⊆V×V. The maximum clique p...
Given an undirected graph G=(V,E) with vertex set V={1,…,n} and edge set E⊆V×V. Let w:V→Z + be a wei...
k-plexes are a formal yet flexible way of defining communities in networks. They generalize the noti...
This paper introduces and studies the maximum k-plex problem, which arises in social network analysi...
The problem of enumerating all maximal cliques in a graph is a key primitive in a variety of real-wo...
K-plexes are a formal yet flexible way of defining communities in networks. They generalize the noti...
Evolutionary computing is a general and powerful framework for solving difficult optimization proble...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...
International audienceGiven an undirected graph G=(V,E) with vertex set V={1,…,n} and edge set E⊆V×V...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...
The Maximum k-plex Problem is an important combinatorial optimization problem with increasingly wide...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...
Given a simple undirected graph G=(V,E) and real constant (threshold) \u3b3 08(0,1], a subset of ver...
A clique model is one of the most important techniques on the cohesive subgraph detection; however, ...
This paper introduces and studies the maximum k-plex problem, which arises in social network analysi...
Given an undirected graph G=(V,E) with vertex set V={1,…,n} and edge set E⊆V×V. The maximum clique p...
Given an undirected graph G=(V,E) with vertex set V={1,…,n} and edge set E⊆V×V. Let w:V→Z + be a wei...
k-plexes are a formal yet flexible way of defining communities in networks. They generalize the noti...
This paper introduces and studies the maximum k-plex problem, which arises in social network analysi...
The problem of enumerating all maximal cliques in a graph is a key primitive in a variety of real-wo...
K-plexes are a formal yet flexible way of defining communities in networks. They generalize the noti...
Evolutionary computing is a general and powerful framework for solving difficult optimization proble...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...
International audienceGiven an undirected graph G=(V,E) with vertex set V={1,…,n} and edge set E⊆V×V...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...
The Maximum k-plex Problem is an important combinatorial optimization problem with increasingly wide...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...