Unifying information propagation models on networks and influence maximization

Yu Tian and Renaud Lambiotte
Phys. Rev. E 106, 034316 – Published 16 September 2022

Abstract

Information propagation on networks is a central theme in social, behavioral, and economic sciences, with important theoretical and practical implications, such as the influence maximization problem for viral marketing. Here we consider a model that unifies the classical independent cascade models and the linear threshold models, and generalize them by considering continuous variables and allowing feedback in the dynamics. We then formulate its influence maximization as a mixed integer nonlinear programming problem and adopt derivative-free methods. Furthermore, we show that the problem can be exactly solved in the special case of linear dynamics, where the selection criterion is closely related to the Katz centrality, and propose a customized direct search method with local convergence. We then demonstrate the close to optimal performance of the customized direct search numerically on both synthetic and real networks.

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  • Received 4 May 2022
  • Accepted 30 August 2022

DOI:https://doi.org/10.1103/PhysRevE.106.034316

©2022 American Physical Society

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Authors & Affiliations

Yu Tian* and Renaud Lambiotte

  • Mathematical Institute, University of Oxford, Oxford OX2 6GG, United Kingdom

  • *yu.tian@maths.ox.ac.uk
  • renaud.lambiotte@maths.ox.ac.uk

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Issue

Vol. 106, Iss. 3 — September 2022

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