Evolving towards the optimal path to extinction in stochastic processes

ORAL

Abstract

A large, rare stochastic fluctuation can cause an epidemic or a species to become extinct. In large, finite populations, the extinction process follows an optimal path which maximizes the probability of extinction. We show theoretically that the optimal path also possesses a maximal sensitivity to initial conditions. As a result, the optimal path emerges naturally from the dynamics and may be characterized using the finite-time Lyapunov exponents. Our theory is general, and is demonstrated with several stochastic epidemiological models.

*Research supported by the Office of Naval Research, the Air Force Office of Scientific Research, and the National Institutes of Health.

Authors

  • Eric Forgoston

    • Naval Research Lab
    • U.S. Naval Research Laboratory
    • US Naval Research Laboratory
  • Simone Bianco

    • College of William and Mary
    • The College of William and Mary
  • Leah Shaw

    • College of William and Mary
    • The College of William and Mary
  • Ira Schwartz

    • Naval Research Lab
    • U.S. Naval Research Laboratory
    • US Naval Research Laboratory
    • Naval Research Laboratory