We develop an algorithm to detect community structure in complex networks. The algorithm is based on spectral methods and takes into account weights and links orientations. Since the method detects efficiently clustered nodes in large networks even when these are not sharply partitioned, it turns to be specially suitable to the analysis of social and information networks. We test the algorithm on a large-scale data-set from a psychological experiment of word association. In this case, it proves to be successful both in clustering words, and in uncovering mental association patterns
In this thesis, we first explore two different approaches to efficient community detection that addr...
Social networks analysis can be used to study the society's structure, its development and the peopl...
The community detection problem in networks consists of determining a clustering of related vertices...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
We analyze the spectral properties of complex networks focusing on their relation to the community s...
Traditional spectral clustering methods cannot naturally learn the number of communities in a networ...
Complex networks are ubiquitous; billions of people are connected through social networks; there is ...
Clustering of social networks, known as community detection is a fundamental partof social network a...
There has been considerable recent interest in algorithms for finding communities in networks—groups...
There has been increasing interest in the study of networked systems such as biological, technologic...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
Vertices in complex networks can be grouped into communities, where vertices inside communities...
Social networks usually display a hierarchy of communities and it is the task of community detection...
The incredible rising of on-line social networks gives a new and very strong interest to the set of ...
In this thesis, we first explore two different approaches to efficient community detection that addr...
Social networks analysis can be used to study the society's structure, its development and the peopl...
The community detection problem in networks consists of determining a clustering of related vertices...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
We analyze the spectral properties of complex networks focusing on their relation to the community s...
Traditional spectral clustering methods cannot naturally learn the number of communities in a networ...
Complex networks are ubiquitous; billions of people are connected through social networks; there is ...
Clustering of social networks, known as community detection is a fundamental partof social network a...
There has been considerable recent interest in algorithms for finding communities in networks—groups...
There has been increasing interest in the study of networked systems such as biological, technologic...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
Vertices in complex networks can be grouped into communities, where vertices inside communities...
Social networks usually display a hierarchy of communities and it is the task of community detection...
The incredible rising of on-line social networks gives a new and very strong interest to the set of ...
In this thesis, we first explore two different approaches to efficient community detection that addr...
Social networks analysis can be used to study the society's structure, its development and the peopl...
The community detection problem in networks consists of determining a clustering of related vertices...