The role of weight on the weighted networks is investigated by studying the effect of weight on community structures. We use weighted modularity $Q^w$ to evaluate the partitions and Weighted Extremal Optimization algorithm to detect communities. Starting from idealized and empirical weighted networks, the distribution or matching between weights and edges are disturbed. Using dissimilarity function $D$ to distinguish the difference between community structures, it is found that the redistribution of weights does strongly affect the community structure especially in dense networks. This indicates that the community structure in networks is a suitable property to reflect the role of weight
We provide a systematic approach to validate the results of clustering methods on weighted networks,...
Complex networks grow subject to structural constraints which affect their measurable properties. As...
Community detection in weighted networks has been a popular topic in recent years. However, while th...
Based on brief review of approaches for community identification and measurement for sensitivity cha...
We review the main tools which allow for the statistical characterization of weighted networks. We t...
Proceedings of the conference \"Complex networks: structure, function and processes\", Kolkata (Sate...
<p>The large circles denote the communities of the network, and the small circles denote the nodes. ...
Recent years have witnessed the rapid development of community detection and a large collection of a...
In weighted networks, both link weight and topological structure are significant characteristics for...
Abstract Community detection is a fundamental procedure in the analysis of network data. Despite dec...
The purpose of this paper is to assess the statistical characterization of weighted networks in term...
Weight thresholding is a simple technique that aims at reducing the number of edges in weighted netw...
Weights and directionality of the edges carry a large part of the information we can extract from a ...
<p>The degree of the central node in both (a) and (b) is 4 and the strength is 12, but the distribut...
International audienceNetworks are an adequate representation for modeling and analyzing a great var...
We provide a systematic approach to validate the results of clustering methods on weighted networks,...
Complex networks grow subject to structural constraints which affect their measurable properties. As...
Community detection in weighted networks has been a popular topic in recent years. However, while th...
Based on brief review of approaches for community identification and measurement for sensitivity cha...
We review the main tools which allow for the statistical characterization of weighted networks. We t...
Proceedings of the conference \"Complex networks: structure, function and processes\", Kolkata (Sate...
<p>The large circles denote the communities of the network, and the small circles denote the nodes. ...
Recent years have witnessed the rapid development of community detection and a large collection of a...
In weighted networks, both link weight and topological structure are significant characteristics for...
Abstract Community detection is a fundamental procedure in the analysis of network data. Despite dec...
The purpose of this paper is to assess the statistical characterization of weighted networks in term...
Weight thresholding is a simple technique that aims at reducing the number of edges in weighted netw...
Weights and directionality of the edges carry a large part of the information we can extract from a ...
<p>The degree of the central node in both (a) and (b) is 4 and the strength is 12, but the distribut...
International audienceNetworks are an adequate representation for modeling and analyzing a great var...
We provide a systematic approach to validate the results of clustering methods on weighted networks,...
Complex networks grow subject to structural constraints which affect their measurable properties. As...
Community detection in weighted networks has been a popular topic in recent years. However, while th...