We study the problem of identifying Web communities around some seed vertex. In this work, we propose a fast graph algorithm to expand Web communities in a scalable style. Given a seed vertex, our algorithm computes approximate personalized PageRank vectors with better and better approximations, and finds the smallest conductance sets on these vectors as candidate communities in nearly-linear time. At the end, it returns the candidate community with the smallest conductance as the result community. We also define local community profile (LCP) to investigate structural and statistical properties of Web communities in a local range. Theoretical analysis and primary experiments both show the efficiency of the proposed algorithm and the quality...
The modern science of networks has made significant contributions to our understanding of complex re...
We summarize and analyze the graph-based approaches to inferring emergent web communities in this pa...
The centrality plays an important role in many community-detection algorithms, which depend on vario...
One of the widely studied structural properties of social and information networks is their communit...
Analyzing massive social networks challenges both high-performance computers and human under- stand...
Analyzing massive graphs poses challenges due to the vast amount of data available. Extracting small...
Community detection aims to find dense subgraphs in a network. We consider the problem of finding a ...
In many applications we have a social network of people and would like to identify the members of an...
A community in a network is a group of nodes that are densely and closely connected to each other, g...
Personalized PageRank is a useful technique for identifying a community with respect to a given node...
Personalized PageRank is a useful technique for identifying a community with respect to a given node...
Abstract—The detection of communities (internally dense sub-graphs) is a network analysis task with ...
Community detection aims to find dense subgraphs in a network. We consider the problem of finding a ...
One common problem in viral marketing, counter-terrorism and epidemic modeling is the efficient dete...
The investigation of community structure in networks has aroused great interest in multiple discipli...
The modern science of networks has made significant contributions to our understanding of complex re...
We summarize and analyze the graph-based approaches to inferring emergent web communities in this pa...
The centrality plays an important role in many community-detection algorithms, which depend on vario...
One of the widely studied structural properties of social and information networks is their communit...
Analyzing massive social networks challenges both high-performance computers and human under- stand...
Analyzing massive graphs poses challenges due to the vast amount of data available. Extracting small...
Community detection aims to find dense subgraphs in a network. We consider the problem of finding a ...
In many applications we have a social network of people and would like to identify the members of an...
A community in a network is a group of nodes that are densely and closely connected to each other, g...
Personalized PageRank is a useful technique for identifying a community with respect to a given node...
Personalized PageRank is a useful technique for identifying a community with respect to a given node...
Abstract—The detection of communities (internally dense sub-graphs) is a network analysis task with ...
Community detection aims to find dense subgraphs in a network. We consider the problem of finding a ...
One common problem in viral marketing, counter-terrorism and epidemic modeling is the efficient dete...
The investigation of community structure in networks has aroused great interest in multiple discipli...
The modern science of networks has made significant contributions to our understanding of complex re...
We summarize and analyze the graph-based approaches to inferring emergent web communities in this pa...
The centrality plays an important role in many community-detection algorithms, which depend on vario...