As Online Social Networks (OSNs) become an intensive sub- ject of research for example in computer science, networking, social sci- ences etc., a growing need for valid and useful datasets is present. The time taken to crawl the network is however introducing a bias which should be minimized. Usual ways of addressing this problem are sampling based on the nodes (users) ids in the network or crawling the network until one \feels" a su_cient amount of data has been obtained. In this paper we introduce a new way of directing the crawling procedure to selectively obtain communities of the network. Thus, a researcher is able to obtain those users belonging to the same community and rapidly begin with the evaluation. As all users involved in the ...
In social network analysis, community detection is an important task that aims at uncovering hidden ...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
As Online Social Networks (OSNs) become an intensive sub- ject of research for example in computer s...
Part 2: Social NetworksInternational audienceAs Online Social Networks (OSNs) become an intensive su...
Online social networks showed an enormous growth in the last decade. With the rise of online social ...
Online community detection is essential for social network analysis. Modularity is a quality functio...
Community detection is an important issue in social network analysis, which aims at finding potentia...
Social networks usually display a hierarchy of communities and it is the task of community detection...
A social network can be defined as a set of people connected by a set of people. Social network anal...
We introduce a new method for detecting communities of arbitrary size in an undirected weighted netw...
Revealing the structural features of social networks is vitally important to both scientific researc...
We introduce a new method for detecting communities of arbitrary size in an undirected weighted netw...
Within the broad area of social network analysis research, the study of communities has become an im...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
In social network analysis, community detection is an important task that aims at uncovering hidden ...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
As Online Social Networks (OSNs) become an intensive sub- ject of research for example in computer s...
Part 2: Social NetworksInternational audienceAs Online Social Networks (OSNs) become an intensive su...
Online social networks showed an enormous growth in the last decade. With the rise of online social ...
Online community detection is essential for social network analysis. Modularity is a quality functio...
Community detection is an important issue in social network analysis, which aims at finding potentia...
Social networks usually display a hierarchy of communities and it is the task of community detection...
A social network can be defined as a set of people connected by a set of people. Social network anal...
We introduce a new method for detecting communities of arbitrary size in an undirected weighted netw...
Revealing the structural features of social networks is vitally important to both scientific researc...
We introduce a new method for detecting communities of arbitrary size in an undirected weighted netw...
Within the broad area of social network analysis research, the study of communities has become an im...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
In social network analysis, community detection is an important task that aims at uncovering hidden ...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
Community structures and relation patterns, and ranking them for social networks provide us with gre...