TY - GEN
T1 - Clique guided community detection
AU - Palsetia, Diana
AU - Patwary, Md Mostofa Ali
AU - Hendrix, William
AU - Agrawal, Ankit
AU - Choudhary, Alok
N1 - Publisher Copyright:
© 2014 IEEE.
PY - 2014
Y1 - 2014
N2 - Discovering communities to understand and model network structures has been a fundamental problem in several fields including social networks, physics, and biology. Many algorithms have been developed for finding the communities. Modularity based technique is fairly new relative to clustering, though it is very popular currently. Although some fast modularity based algorithms exist for detecting communities, the quality of these solutions is limited. At the other extreme, a clique embodies a basic community as it has the greatest possible edge density. However, the requirement that each pair of vertices be connected is too strict. Therefore, techniques to merge partitioned cliques using a hill-climbing greedy algorithm have been studied to form communities. However, the task of finding cliques is computationally expensive. In this paper, we present a new approach for fast and efficient community detection. We propose a clique guided community detection framework that consists of two phases. In the first phase, the framework finds disjoint cliques. In the second phase, the cliques from the first phase are used to guide the merging of individual vertices until a good quality solution is obtained. For the first phase, we develop an algorithm named MaCH (Maximum Clique Heuristic), which is a new approach to compute disjoint cliques using a heuristic-based branch-and-bound technique. We provide experimental results to demonstrate the efficiency of the new algorithm and compare our approach with other previously proposed algorithms.
AB - Discovering communities to understand and model network structures has been a fundamental problem in several fields including social networks, physics, and biology. Many algorithms have been developed for finding the communities. Modularity based technique is fairly new relative to clustering, though it is very popular currently. Although some fast modularity based algorithms exist for detecting communities, the quality of these solutions is limited. At the other extreme, a clique embodies a basic community as it has the greatest possible edge density. However, the requirement that each pair of vertices be connected is too strict. Therefore, techniques to merge partitioned cliques using a hill-climbing greedy algorithm have been studied to form communities. However, the task of finding cliques is computationally expensive. In this paper, we present a new approach for fast and efficient community detection. We propose a clique guided community detection framework that consists of two phases. In the first phase, the framework finds disjoint cliques. In the second phase, the cliques from the first phase are used to guide the merging of individual vertices until a good quality solution is obtained. For the first phase, we develop an algorithm named MaCH (Maximum Clique Heuristic), which is a new approach to compute disjoint cliques using a heuristic-based branch-and-bound technique. We provide experimental results to demonstrate the efficiency of the new algorithm and compare our approach with other previously proposed algorithms.
KW - Community Detection
KW - Graph Clustering
KW - Link and Graph Mining
UR - https://www.scopus.com/pages/publications/84921823109
UR - https://www.scopus.com/inward/citedby.url?scp=84921823109&partnerID=8YFLogxK
U2 - 10.1109/BigData.2014.7004267
DO - 10.1109/BigData.2014.7004267
M3 - Conference contribution
AN - SCOPUS:84921823109
T3 - Proceedings - 2014 IEEE International Conference on Big Data, IEEE Big Data 2014
SP - 500
EP - 509
BT - Proceedings - 2014 IEEE International Conference on Big Data, IEEE Big Data 2014
A2 - Lin, Jimmy
A2 - Pei, Jian
A2 - Hu, Xiaohua Tony
A2 - Chang, Wo
A2 - Nambiar, Raghunath
A2 - Aggarwal, Charu
A2 - Cercone, Nick
A2 - Honavar, Vasant
A2 - Huan, Jun
A2 - Mobasher, Bamshad
A2 - Pyne, Saumyadipta
T2 - 2nd IEEE International Conference on Big Data, IEEE Big Data 2014
Y2 - 27 October 2014 through 30 October 2014
ER -