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Bayesian logistic regression of soybean sclerotinia stem rot prevalence in the U.S. north-central region: accounting for uncertainty in parameter estimation

ABSTRACT Bayesian ideas have recently gained considerable ground in several scientific fields mainly due to the rapid progress in computing resources. Nevertheless, in plant epidemiology, Bayesian methodology is not yet commonly discussed or applied. Results of a logistic regression analysis of a 4-...

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Bibliographic Details
Published in:Phytopathology 2003-06, Vol.93 (6), p.758-764
Main Authors: Mila, A.L, Yang, X.B, Carriquiry, A.L
Format: Article
Language:English
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Summary:ABSTRACT Bayesian ideas have recently gained considerable ground in several scientific fields mainly due to the rapid progress in computing resources. Nevertheless, in plant epidemiology, Bayesian methodology is not yet commonly discussed or applied. Results of a logistic regression analysis of a 4-year data set collected between 1995 and 1998 on soybean Sclerotinia stem rot (SSR) prevalence in the north-central region of the United States were reexamined with Bayesian methodology. The objective of this study was to use Bayesian methodology to explore the level of uncertainty associated with the parameter estimates derived from the logistic regression analysis of SSR prevalence. Our results suggest that the 4-year data set used in the logistic regression analysis of SSR prevalence in the north-central region of the United States may not be informative enough to produce reliable estimates of the effect of some explanatory variables on SSR prevalence. Such confident estimations are necessary for deriving robust conclusions and high quality predictions.
ISSN:0031-949X
1943-7684
DOI:10.1094/PHYTO.2003.93.6.758