Statistical significance test for transition matrices of atmospheric Markov chains

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Abstract

Low-frequency variability of large-scale atmospheric dynamics can be represented schematically by a Markov chain of multiple flow regimes. This Markov chain contains useful information for the long-range forecaster, provided that the statistical significance of the associated transition matrix can be reliably tested. Monte Carlo simulation yields a very reliable significance test for the elements of this matirx. The results of this test agree with previously used empirical formulae when each cluster of maps identified as a distinct flow regime is sufficiently large and when they all contain a comparable number of maps. Monte Carlo simulation provides a more reliable way to test the statistical significance of transitions to and from small clusters. -from Authors

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Vautard, R., Mo, K. C., & Ghil, M. (1990). Statistical significance test for transition matrices of atmospheric Markov chains. Journal of the Atmospheric Sciences, 47(15), 1926–1931. https://doi.org/10.1175/1520-0469(1990)047<1926:SSTFTM>2.0.CO;2

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