2024
DOI: 10.1029/2023ms004034
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Bayesian Structure Learning for Climate Model Evaluation

Terence J. O'Kane,
Dylan Harries,
Mark A. Collier

Abstract: A Bayesian structure learning approach is employed to compare and contrast interactions between the major climate teleconnections over the recent past as revealed in reanalyses and climate model simulations from leading Meteorological Centers. In a previous study, the authors demonstrated a general framework using homogeneous Dynamic Bayesian Network models constructed from reanalyzed time series of empirical climate indices to compare probabilistic graphical models. Reversible jump Markov Chain Monte Carlo is… Show more

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