Euclidean Distance Based Permutation Methods in Atmospheric Science |
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Authors: | Paul W. Mielke Jr. Kenneth J. Berry |
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Affiliation: | (1) Department of Statistics, Colorado State University, Fort Collins, CO 80523-1877, USA;(2) Department of Sociology, Colorado State University, Fort Collins, CO 80523-1784, USA |
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Abstract: | The majority of existing statistical methods inherently involve complex nonmetric analysis spaces due to their least squares
regression origin; consequently, the analysis space of such statistical methods is not consistent with the simple metric Euclidean
geometry of the data space in question. The statistical methods presented in this paper are consistent with the data spaces
in question. These alternative methods depend on exact and approximate permutation procedures for univariate and multivariate
data involving cyclic phenomena, autoregressive patterns, covariate residual analyses including most linear model based experimental
designs, and linear and nonlinear prediction model evaluations. Specific atmospheric science applications include climate
change, Atlantic basin seasonal tropical cyclone predictions, analyses of weather modification experiments, and numerical
model evaluations for phenomena such as cumulus clouds, clear-sky surface energy budgets, and mesoscale atmospheric predictions. |
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Keywords: | agreement autoregressive patterns cyclic data distribution-free experimental designs inference multivariate nonparametric permutation prediction regression residual analyses |
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