Community discovery is one of the most popular issues in analyzing and understanding a network. Previous research suggests that the discovery can be enhanced by assigning weights to the edges of the network. This paper proposes a novel edge weighting method, which balances both local and global weighting based on the idea of shared neighbor ranging between users and the interpersonal significance of the social network community. We assume that users belonging to the same community have similar relationship network structures. By controlling the measure of "neighborhood", this method can adequately adapt to real-world networks. Therefore, the famous similarity calculation method-SimRank-can be regarded as a special case of our method. Accord...
Online Social Networks (OSNs) have become prevalent in people’s daily life. Facebook, Twitter, and I...
Abstract—This paper proposes a framework for node clus-tering in computerized social networks accord...
Since links on social networks model a mixture of many factors, such as acquaintances and friends, t...
<div><p>Community discovery is one of the most popular issues in analyzing and understanding a netwo...
Community detection is one of the most popular issues in analyzing and understanding the networks. E...
AbstractThis study mainly focuses on the methodology of weighted graph clustering with the purpose o...
AbstractThe methods of community partition in nowadays mainly focus on using the topological links, ...
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...
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 ...
Personalized PageRank is a useful technique for identifying a community with respect to a given node...
Copyright © 2013 Wei Hu. This is an open access article distributed under the Creative Commons Attri...
As Online Social Networks (OSNs) become an intensive sub- ject of research for example in computer s...
Personalized PageRank is a useful technique for identifying a community with respect to a given node...
Online Social Networks (OSNs) have become prevalent in people’s daily life. Facebook, Twitter, and I...
Abstract—This paper proposes a framework for node clus-tering in computerized social networks accord...
Since links on social networks model a mixture of many factors, such as acquaintances and friends, t...
<div><p>Community discovery is one of the most popular issues in analyzing and understanding a netwo...
Community detection is one of the most popular issues in analyzing and understanding the networks. E...
AbstractThis study mainly focuses on the methodology of weighted graph clustering with the purpose o...
AbstractThe methods of community partition in nowadays mainly focus on using the topological links, ...
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...
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 ...
Personalized PageRank is a useful technique for identifying a community with respect to a given node...
Copyright © 2013 Wei Hu. This is an open access article distributed under the Creative Commons Attri...
As Online Social Networks (OSNs) become an intensive sub- ject of research for example in computer s...
Personalized PageRank is a useful technique for identifying a community with respect to a given node...
Online Social Networks (OSNs) have become prevalent in people’s daily life. Facebook, Twitter, and I...
Abstract—This paper proposes a framework for node clus-tering in computerized social networks accord...
Since links on social networks model a mixture of many factors, such as acquaintances and friends, t...