Bayesian negative binomial regression model with unobserved covariates for predicting the frequency of north atlantic tropical storms ...

Predicting the annual frequency of tropical storms is of interest because it can provide basic information towards improved preparation against these storms. Sea surface temperatures (SSTs) averaged over the hurricane season can predict annual tropical cyclone activity well. But predictions need to...

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Bibliographic Details
Main Authors: Li, Xun, Ghosh, Joyee, Villarini, Gabriele
Format: Text
Language:unknown
Published: Taylor & Francis 2022
Subjects:
Online Access:https://dx.doi.org/10.6084/m9.figshare.19690382
https://tandf.figshare.com/articles/journal_contribution/Bayesian_negative_binomial_regression_model_with_unobserved_covariates_for_predicting_the_frequency_of_north_atlantic_tropical_storms/19690382
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Summary:Predicting the annual frequency of tropical storms is of interest because it can provide basic information towards improved preparation against these storms. Sea surface temperatures (SSTs) averaged over the hurricane season can predict annual tropical cyclone activity well. But predictions need to be made before the hurricane season when the predictors are not yet observed. Several climate models issue forecasts of the SSTs, which can be used instead. Such models use the forecasts of SSTs as surrogates for the true SSTs. We develop a Bayesian negative binomial regression model, which makes a distinction between the true SSTs and their forecasts, both of which are included in the model. For prediction, the true SSTs may be regarded as unobserved predictors and sampled from their posterior predictive distribution. We also have a small fraction of missing data for the SST forecasts from the climate models. Thus, we propose a model that can simultaneously handle missing predictors and variable selection ...