The paper presents an algorithm to approach the problem of Maximum Clique Enumeration, a well known NP-hard problem that have several real world applications. The proposed solution, called LGP-MCE, exploits Geometric Deep Learning, a Machine Learning technique on graphs, to filter out nodes that do not belong to maximum cliques and then applies an exact algorithm to the pruned network. To assess the LGP-MCE, we conducted multiple experiments using a substantial dataset of real-world networks, varying in size, density, and other characteristics. We show that LGP-MCE is able to drastically reduce the running time, while retaining all the maximum cliques
This paper introduces and studies the maximum k-plex problem, which arises in social network analysi...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...
In undirected graphs, a clique is a subset of its vertices which are all pairwise connected. The pro...
Background: The maximum clique enumeration (MCE) problem asks that we identify all maximum cliques i...
We propose a simple, powerful, and flexible machine learning framework for (i) reducing the search s...
In this paper we describe two neural network based algorithms for the Maximum Clique Problem. The de...
A clique model is one of the most important techniques on the cohesive subgraph detection; however, ...
© 2017 VLDB. Cliques refer to subgraphs in an undirected graph such that vertices in each subgraph a...
Background The maximum clique enumeration (MCE) problem asks that we identify all maximum cliques in...
Many graph mining applications rely on detecting subgraphs which are large near-cliques. There exist...
AbstractThe problem of enumerating the maximal cliques of a graph is a computationally expensive pro...
In social networking analysis, there exists a fundamental problem called maximal cliques enumeration...
Abstract: In this paper we propose collecting different maximum clique finding algorithms into a met...
The detection of communities in social networks is a challenging task. A rigorous way to model commu...
Finding a maximum clique is important in research areas such as computational chemistry, social netw...
This paper introduces and studies the maximum k-plex problem, which arises in social network analysi...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...
In undirected graphs, a clique is a subset of its vertices which are all pairwise connected. The pro...
Background: The maximum clique enumeration (MCE) problem asks that we identify all maximum cliques i...
We propose a simple, powerful, and flexible machine learning framework for (i) reducing the search s...
In this paper we describe two neural network based algorithms for the Maximum Clique Problem. The de...
A clique model is one of the most important techniques on the cohesive subgraph detection; however, ...
© 2017 VLDB. Cliques refer to subgraphs in an undirected graph such that vertices in each subgraph a...
Background The maximum clique enumeration (MCE) problem asks that we identify all maximum cliques in...
Many graph mining applications rely on detecting subgraphs which are large near-cliques. There exist...
AbstractThe problem of enumerating the maximal cliques of a graph is a computationally expensive pro...
In social networking analysis, there exists a fundamental problem called maximal cliques enumeration...
Abstract: In this paper we propose collecting different maximum clique finding algorithms into a met...
The detection of communities in social networks is a challenging task. A rigorous way to model commu...
Finding a maximum clique is important in research areas such as computational chemistry, social netw...
This paper introduces and studies the maximum k-plex problem, which arises in social network analysi...
We focus on the automatic detection of communities in large networks, a challenging problem in many ...
In undirected graphs, a clique is a subset of its vertices which are all pairwise connected. The pro...