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  • A Bayesian hurdle model for analysis of an insect resistance monitoring database

    Author(s)
    Falk, Matthew G
    O'Leary, Rebecca
    Nayak, Manoj
    Collins, Patrick
    Choy, Samantha Low
    Griffith University Author(s)
    Low-Choy, Sama J.
    Year published
    2015
    Metadata
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    Abstract
    Motivated by the analysis of the Australian Grain Insect Resistance Database (AGIRD), we develop a Bayesian hurdle modelling approach to assess trends in strong resistance of stored grain insects to phosphine over time. The binary response variable from AGIRD indicating presence or absence of strong resistance is characterized by a majority of absence observations and the hurdle model is a two step approach that is useful when analyzing such a binary response dataset. The proposed hurdle model utilizes Bayesian classification trees to firstly identify covariates and covariate levels pertaining to possible presence or absence ...
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    Motivated by the analysis of the Australian Grain Insect Resistance Database (AGIRD), we develop a Bayesian hurdle modelling approach to assess trends in strong resistance of stored grain insects to phosphine over time. The binary response variable from AGIRD indicating presence or absence of strong resistance is characterized by a majority of absence observations and the hurdle model is a two step approach that is useful when analyzing such a binary response dataset. The proposed hurdle model utilizes Bayesian classification trees to firstly identify covariates and covariate levels pertaining to possible presence or absence of strong resistance. Secondly, generalized additive models (GAMs) with spike and slab priors for variable selection are fitted to the subset of the dataset identified from the Bayesian classification tree indicating possibility of presence of strong resistance. From the GAM we assess trends, biosecurity issues and site specific variables influencing the presence of strong resistance using a variable selection approach. The proposed Bayesian hurdle model is compared to its frequentist counterpart, and also to a naive Bayesian approach which fits a GAM to the entire dataset. The Bayesian hurdle model has the benefit of providing a set of good trees for use in the first step and appears to provide enough flexibility to represent the influence of variables on strong resistance compared to the frequentist model, but also captures the subtle changes in the trend that are missed by the frequentist and naive Bayesian models.
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    Journal Title
    Environmental and Ecological Statistics
    Volume
    22
    Issue
    2
    DOI
    https://doi.org/10.1007/s10651-014-0294-3
    Subject
    Mathematical sciences
    Statistics not elsewhere classified
    Environmental sciences
    Biological sciences
    Publication URI
    http://hdl.handle.net/10072/173211
    Collection
    • Journal articles

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