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On a new class of score functions to estimate tail probabilities of some stochastic processes with adaptive multilevel splitting.

Charles-Edouard BréhierTony Lelièvre
Published in: Chaos (Woodbury, N.Y.) (2019)
We investigate the application of the adaptive multilevel splitting algorithm for the estimation of tail probabilities of solutions of stochastic differential equations evaluated at a given time and of associated temporal averages. We introduce a new, very general, and effective family of score functions that is designed for these problems. We illustrate its behavior in a series of numerical experiments. In particular, we demonstrate how it can be used to estimate large deviations rate functionals for the longtime limit of temporal averages.
Keyphrases
  • mental health
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