Physical Review X (Dec 2019)

Phase Transition in the Recoverability of Network History

  • Jean-Gabriel Young,
  • Guillaume St-Onge,
  • Edward Laurence,
  • Charles Murphy,
  • Laurent Hébert-Dufresne,
  • Patrick Desrosiers

DOI
https://doi.org/10.1103/PhysRevX.9.041056
Journal volume & issue
Vol. 9, no. 4
p. 041056

Abstract

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Network growth processes can be understood as generative models of the structure and history of complex networks. This point of view naturally leads to the problem of network archaeology: reconstructing all the past states of a network from its structure—a difficult permutation inference problem. In this paper, we introduce a Bayesian formulation of network archaeology, with a generalization of preferential attachment as our generative mechanism. We develop a sequential Monte Carlo algorithm to evaluate the posterior averages of this model, as well as an efficient heuristic that uncovers a history well correlated with the true one, in polynomial time. We use these methods to identify and characterize a phase transition in the quality of the reconstructed history, when they are applied to artificial networks generated by the model itself. Despite the existence of a no-recovery phase, we find that nontrivial inference is possible in a large portion of the parameter space as well as on empirical data.