Influence Maximization with ε-Almost Submodular Threshold Functions

Influence maximization is the problem of selecting k nodes in a social network to maximize their influence spread. The problem has been extensively studied but most works focus on the submodular influence diffusion models. In this paper, motivated by empirical evidences, we explore influence maximization in the nonsubmodular regime. In particular, we study the general threshold model in which a fraction of nodes have non-submodular threshold functions, but their threshold functions are closely upperand lower-bounded by some submodular functions (we call them ε-almost submodular). We first show a strong hardness result: there is no 1/n approximation for influence maximization (unless P = NP) for all networks with up to n ε-almost submodular nodes, where γ is in (0,1) and c is a parameter depending on ε. This indicates that influence maximization is still hard to approximate even though threshold functions are close to submodular. We then provide (1− ε)(1− 1/e) approximation algorithms when the number of ε-almost submodular nodes is `. Finally, we conduct experiments on a number of real-world datasets, and the results demonstrate that our approximation algorithms outperform other baseline algorithms.

[1]  Xiaokui Xiao,et al.  Influence Maximization in Near-Linear Time: A Martingale Approach , 2015, SIGMOD Conference.

[2]  Laks V. S. Lakshmanan,et al.  SIMPATH: An Efficient Algorithm for Influence Maximization under the Linear Threshold Model , 2011, 2011 IEEE 11th International Conference on Data Mining.

[3]  My T. Thai,et al.  Stop-and-Stare: Optimal Sampling Algorithms for Viral Marketing in Billion-scale Networks , 2016, SIGMOD Conference.

[4]  Wei Chen,et al.  Efficient influence maximization in social networks , 2009, KDD.

[5]  Wei Chen,et al.  The Routing of Complex Contagion in Kleinberg's Small-World Networks , 2015, COCOON.

[6]  Panos M. Pardalos,et al.  Analysis of greedy approximations with nonsubmodular potential functions , 2008, SODA '08.

[7]  Nicola Barbieri,et al.  Topic-aware social influence propagation models , 2012, Knowledge and Information Systems.

[8]  Elchanan Mossel,et al.  Submodularity of Influence in Social Networks: From Local to Global , 2010, SIAM J. Comput..

[9]  Peng Zhang,et al.  Minimizing seed set selection with probabilistic coverage guarantee in a social network , 2014, KDD.

[10]  Balaji Rajagopalan,et al.  Knowledge-sharing and influence in online social networks via viral marketing , 2003, CACM.

[11]  Yaron Singer,et al.  Maximization of Approximately Submodular Functions , 2016, NIPS.

[12]  Laks V. S. Lakshmanan,et al.  From Competition to Complementarity: Comparative Influence Diffusion and Maximization , 2015, Proc. VLDB Endow..

[13]  Xinbing Wang,et al.  DRIMUX: Dynamic Rumor Influence Minimization with User Experience in Social Networks , 2016, IEEE Transactions on Knowledge and Data Engineering.

[14]  Laks V. S. Lakshmanan,et al.  On minimizing budget and time in influence propagation over social networks , 2012, Social Network Analysis and Mining.

[15]  Shishir Bharathi,et al.  Competitive Influence Maximization in Social Networks , 2007, WINE.

[16]  M. L. Fisher,et al.  An analysis of approximations for maximizing submodular set functions—I , 1978, Math. Program..

[17]  Wei Chen,et al.  Scalable influence maximization for prevalent viral marketing in large-scale social networks , 2010, KDD.

[18]  Jie Gao,et al.  Complex contagion and the weakness of long ties in social networks: revisited , 2013, EC '13.

[19]  Ning Chen,et al.  On the approximability of influence in social networks , 2008, SODA '08.

[20]  Andreas Krause,et al.  Cost-effective outbreak detection in networks , 2007, KDD '07.

[21]  Jie Gao,et al.  General Threshold Model for Social Cascades: Analysis and Simulations , 2016, EC.

[22]  Jie Gao,et al.  Complex Contagions in Kleinberg's Small World Model , 2014, ITCS.

[23]  Laks V. S. Lakshmanan,et al.  Viral Marketing Meets Social Advertising: Ad Allocation with Minimum Regret , 2014, Proc. VLDB Endow..

[24]  Wei Chen,et al.  Combining Traditional Marketing and Viral Marketing with Amphibious Influence Maximization , 2015, EC.

[25]  Jie Tang,et al.  Social Role-Aware Emotion Contagion in Image Social Networks , 2016, AAAI.

[26]  Xiaokui Xiao,et al.  Influence maximization: near-optimal time complexity meets practical efficiency , 2014, SIGMOD Conference.

[27]  Christian Borgs,et al.  Maximizing Social Influence in Nearly Optimal Time , 2012, SODA.

[28]  Jon M. Kleinberg,et al.  Group formation in large social networks: membership, growth, and evolution , 2006, KDD '06.

[29]  Éva Tardos,et al.  Maximizing the Spread of Influence through a Social Network , 2015, Theory Comput..