Title :
Evaluating community structure in the large network with random walks
Author_Institution :
State Key Lab. of Comput. Sci., Inst. of Software, Beijing, China
Abstract :
Community structure is one of the most important properties of networks. Most community algorithms are not suitable for large networks because of their time consuming. In fact there are lots of networks with millions even billions of nodes. In such case, most algorithms running in time O(n2logn) or even larger are not practical. What we need are linear or approximately linear time algorithm. Rising in response to such needs, we propose a quick method to evaluate community structure in networks and then put forward a local community algorithm with nearly linear time based on random walks. Using our community evaluating measure, we could find some difference results from measures used before, i.e., the Newman Modularity. Our algorithm are effective in small benchmark networks with small less accuracy than more complex algorithms but a great of advantage in time consuming for large networks, especially super large networks.
Keywords :
complex networks; computational complexity; network theory (graphs); random processes; Newman modularity; approximately linear time algorithm; benchmark networks; community algorithms; community evaluating measure; community structure; complex algorithms; linear algorithm; random walks; Communities;
Conference_Titel :
Science and Information Conference (SAI), 2013
Conference_Location :
London