Abstract. The identification of community structures is essential for characterizing real networks formed by a mesoscopic level of organization where clusters contain nodes with a high internal degree of connectivity. Many methods have been developed to unveil community structures, but only a few studies have probed their suitability in incomplete networks. Here we assess the accuracy of community detection techniques in incomplete networks generated in sampling processes. We show that the walktrap and fast greedy algorithms are highly accurate for detecting the modular structure of incomplete complex networks even if many of their nodes are removed. Furthermore, we implemented an approach that improved the time performance of the walktrap ...
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
We propose an efficient and novel approach for discovering communities in real-world random networks...
The identification of modular structures is essential for characterizing real networks formed by a m...
Complex networks such as social networks and biological networks represent complex systems in the re...
Abstract. Community detection is the process of assigning nodes and links in significant communities...
Abstract—The detection of communities (internally dense sub-graphs) is a network analysis task with ...
The investigation of community structures in networks is an important issue in many domains and disc...
The characterization of network community structure has profound implications in several scientific ...
An important problem in the analysis of network data is the detection of groups of densely interconn...
How to determine the community structure of complex networks is an open question. It is critical to ...
In this thesis, we first explore two different approaches to efficient community detection that addr...
We introduce an ensemble learning scheme and a new metric for community detection in complex network...
Abstract. The investigation of community structures in networks is an important issue in many domain...
Abstract. Community detection is a very active field in complex networks analysis, consisting in ide...
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
We propose an efficient and novel approach for discovering communities in real-world random networks...
The identification of modular structures is essential for characterizing real networks formed by a m...
Complex networks such as social networks and biological networks represent complex systems in the re...
Abstract. Community detection is the process of assigning nodes and links in significant communities...
Abstract—The detection of communities (internally dense sub-graphs) is a network analysis task with ...
The investigation of community structures in networks is an important issue in many domains and disc...
The characterization of network community structure has profound implications in several scientific ...
An important problem in the analysis of network data is the detection of groups of densely interconn...
How to determine the community structure of complex networks is an open question. It is critical to ...
In this thesis, we first explore two different approaches to efficient community detection that addr...
We introduce an ensemble learning scheme and a new metric for community detection in complex network...
Abstract. The investigation of community structures in networks is an important issue in many domain...
Abstract. Community detection is a very active field in complex networks analysis, consisting in ide...
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
In recent years, there has been a surge of interest in community detection algorithms for complex ne...
We propose an efficient and novel approach for discovering communities in real-world random networks...