Data-driven methods to estimate the committor function in conceptual ocean models
Val\'erian Jacques-Dumas, Ren\'e M. van Westen, Freddy Bouchet and, Henk A. Dijkstra

TL;DR
This paper compares various data-driven methods, including neural networks and Markov chains, for estimating the committor function in ocean models, demonstrating neural networks' efficiency and accuracy in complex climate systems.
Contribution
It introduces a comparative analysis of multiple methods for estimating the committor function from trajectory data in ocean models, highlighting neural networks' advantages.
Findings
Neural networks outperform other methods in training time and accuracy.
All methods can extract useful information for committor estimation.
Neural networks are promising for complex climate models.
Abstract
In recent years, several climate subsystems have been identified that may undergo a relatively rapid transition compared to the changes in their forcing. Such transitions are rare events in general, and simulating long-enough trajectories in order to gather sufficient data to determine transition statistics would be too expensive. Conversely, rare events algorithms like TAMS (trajectory-adaptive multilevel sampling) encourage the transition while keeping track of the model statistics. However, this algorithm relies on a score function whose choice is crucial to ensure its efficiency. The optimal score function, called the committor function, is in practice very difficult to compute. In this paper, we compare different data-based methods (analog Markov chains, neural networks, reservoir computing, dynamical Galerkin approximation) to estimate the committor from trajectory data. We apply…
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