Community structure, one of the most popular properties in complex networks, has long been a cornerstone in the advance of various scientific branches. Over the past few years, a number of tools have been used in the development of community detection algorithms. In this paper, by means of fusing unsupervised extreme learning machines and the k-means clustering techniques, we propose a novel community detection method that surpasses traditional k-means approaches in terms of precision and stability while adding very few extra computational costs. Furthermore, results of extensive experiments undertaken on computer-generated networks and real-world datasets illustrate acceptable performances of the introduced algorithm in comparison with oth...
The characterization of network community structure has profound implications in several scientific ...
Community detection is an important topic for social network analysis and is also essential to under...
The community detection problem in networks consists of determining a clustering of related vertices...
International audienceDue to the development and popularization of Internet, there is more and more ...
International audienceReal world complex networks may contain hidden structures called communities o...
We introduce an ensemble learning scheme and a new metric for community detection in complex network...
Abstract. Community detection or graph clustering is an important problem in the analysis of compute...
Detecting communities in real world networks is an important problem for data analysis in science an...
In real world many complex systems can be naturally represented as complex networks of which one dis...
We propose a new method for detecting communities based on the concept of communicability between no...
Detecting the community structure exhibited by real networks is a crucial step toward an understandi...
Graphs or networks are mathematical structures that consist of elements that can be pairwise linked ...
Complex networks are ubiquitous; billions of people are connected through social networks; there is ...
In a network, the problem of community detection refers to finding groups of nodes and edges that fo...
Many complex systems are composed of coupled networks through different layers, where each layer rep...
The characterization of network community structure has profound implications in several scientific ...
Community detection is an important topic for social network analysis and is also essential to under...
The community detection problem in networks consists of determining a clustering of related vertices...
International audienceDue to the development and popularization of Internet, there is more and more ...
International audienceReal world complex networks may contain hidden structures called communities o...
We introduce an ensemble learning scheme and a new metric for community detection in complex network...
Abstract. Community detection or graph clustering is an important problem in the analysis of compute...
Detecting communities in real world networks is an important problem for data analysis in science an...
In real world many complex systems can be naturally represented as complex networks of which one dis...
We propose a new method for detecting communities based on the concept of communicability between no...
Detecting the community structure exhibited by real networks is a crucial step toward an understandi...
Graphs or networks are mathematical structures that consist of elements that can be pairwise linked ...
Complex networks are ubiquitous; billions of people are connected through social networks; there is ...
In a network, the problem of community detection refers to finding groups of nodes and edges that fo...
Many complex systems are composed of coupled networks through different layers, where each layer rep...
The characterization of network community structure has profound implications in several scientific ...
Community detection is an important topic for social network analysis and is also essential to under...
The community detection problem in networks consists of determining a clustering of related vertices...