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Influence Maximization Algorithm Based on Reverse Reachable Set

Gengxin Sun, Chih‐Cheng Chen

2021Mathematical Problems in Engineering27 citationsDOIOpen Access PDF

Abstract

Most of the existing influence maximization algorithms are not suitable for large-scale social networks due to their high time complexity or limited influence propagation range. Therefore, a D-RIS (dynamic-reverse reachable set) influence maximization algorithm is proposed based on the independent cascade model and combined with the reverse reachable set sampling. Under the premise that the influence propagation function satisfies monotonicity and submodularity, the D-RIS algorithm uses an automatic debugging method to determine the critical value of the number of reverse reachable sets, which not only obtains a better influence propagation range but also greatly reduces the time complexity. The experimental results on the two real datasets of Slashdot and Epinions show that D-RIS algorithm is close to the CELF (cost-effective lazy-forward) algorithm and higher than RIS algorithm, HighDegree algorithm, LIR algorithm, and pBmH (population-based metaheuristics) algorithm in influence propagation range. At the same time, it is significantly better than the CELF algorithm and RIS algorithm in running time, which indicates that D-RIS algorithm is more suitable for large-scale social network.

Topics & Concepts

AlgorithmComputer scienceMaximizationRange (aeronautics)Set (abstract data type)Scale (ratio)Mathematical optimizationMathematicsComposite materialProgramming languageMaterials scienceQuantum mechanicsPhysicsComplex Network Analysis TechniquesOpinion Dynamics and Social InfluenceNetwork Security and Intrusion Detection
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