@article { , title = {An improved game-theoretic approach to uncover overlapping communities}, abstract = {How can we uncover overlapping communities from complex networks to understand the inherent structures and functions? Chen et al. firstly proposed a community game (Game) to study this problem, and the overlapping communities have been discovered when the game is convergent. It is based on the assumption that each vertex of the underlying network is a rational game player to maximize its utility. In this paper, we investigate how similar vertices affect the formation of community game. The Adamic–Adar Index (AA Index) has been employed to define the new utility function. This novel method has been evaluated on both synthetic and real-world networks. Experimental study shows that it has significant improvement of accuracy (from 4.8\% to 37.6\%) compared with the Game on 10 real networks. It is more efficient on Facebook networks (FN) and Amazon co-purchasing networks than on other networks. This result implicates that “friend circles of friends” of Facebook are valuable to understand the overlapping community division.}, doi = {10.1142/S0129183117501121}, eissn = {1793-6586}, issn = {0129-1831}, issue = {8}, journal = {International Journal of Modern Physics C}, publicationstatus = {Published}, publisher = {World Scientific}, url = {https://nottingham-repository.worktribe.com/output/881267}, volume = {28}, keyword = {Overlapping community detection, game theory, complex networks}, year = {2017}, author = {Sun, Hong-Liang and Ch'ng, Eugene and Yong, Xi and Garibaldi, Jonathan M. and See, Simon and Chen, Duan-Bing} }