Title
Scalable influence maximization under independent cascade model.
Abstract
Influence maximization is a fundamental problem that aims at finding a small subset of seed nodes to maximize the spread of influence in social networks. Influence maximization problem plays an important role in viral marketing, which is widely adopted in social network advertising. However, finding an optimal solution is NP hard. A more realistic approach is to find a balanced point between the effectiveness and efficiency. A greedy algorithm and its improvements (including Cost-Effective Lazy Forward (CELF) algorithm) were developed to provide an approximation solution with errors bounded at (11/e). But the method still suffers from high computational overhead. In this paper, we analyse the bottleneck of the greedy algorithm and propose a more efficient method to replace the time-consuming part of the greedy algorithm. Then, we design a CascadeDiscount algorithm to solve the influence maximization problem. The experimental results on real-world datasets demonstrate that (1) our CascadeDiscount algorithm maintains a close influence spread to CELF and performs better than two heuristics methods, DegreeDiscountIC and TwoStage; (2) our CascadeDiscount method runs two orders of magnitude faster than CELF over real-world datasets.
Year
DOI
Venue
2017
10.1016/j.jnca.2016.10.020
J. Network and Computer Applications
Keywords
Field
DocType
Influence maximization,Viral marketing,Greedy algorithm,Heuristics
Overhead (computing),Bottleneck,Viral marketing,Mathematical optimization,Computer science,Greedy algorithm,Heuristics,Maximization,Bounded function,Scalability
Journal
Volume
Issue
ISSN
86
C
1084-8045
Citations 
PageRank 
References 
8
0.48
19
Authors
6
Name
Order
Citations
PageRank
Feng Lu1386.88
Weikang Zhang282.17
Liwen Shao380.82
Xunfei Jiang4569.40
Peng Xu5282.93
Hai Jin66544644.63