Bayesian hierarchical latent variable models for ecological data types

dc.contributor.advisorChairperson, Graduate Committee: Jennifer Green and Andrew Hoegh (co-chair)en
dc.contributor.authorStratton, Christian Alexanderen
dc.contributor.otherThis is a manuscript style paper that includes co-authored chapters.en
dc.date.accessioned2022-11-09T22:41:01Z
dc.date.available2022-11-09T22:41:01Z
dc.date.issued2022en
dc.description.abstractEcologists and environmental scientists employ increasingly complicated sampling designs to address research questions that can help explain the impacts of climate change, disease, and other emerging threats. To understand these impacts, statistical methodology must be developed to address the nuance of the sampling design and provide inferences about the quantities of interest; this methodology must also be accessible and easily implemented by scientists. Recently, hierarchical latent variable modeling has emerged as a comprehensive framework for modeling a variety of ecological data types. In this dissertation, we discuss hierarchical modeling of multi-scale occupancy data and multi-species abundance data. Within the multi-scale occupancy framework, we propose new methodology to improve computational performance of existing modeling approaches, resulting in a 98% decrease in computation time. This methodology is implemented in an R package developed to encourage community uptake of our method. Additionally, we propose a new modeling framework capable of simultaneous clustering and ordination of ecological abundance data that allows for estimation of the number of clusters present in the latent ordination space. This modeling framework is also extended to accommodate hierarchical sampling designs. The proposed modeling framework is applied to two data sets and code to fit our model is provided. The software and statistical methodology proposed in this dissertation illustrate the flexibility of hierarchical latent variable modeling to accommodate a variety of data types.en
dc.identifier.urihttps://scholarworks.montana.edu/handle/1/16964en
dc.language.isoenen
dc.publisherMontana State University - Bozeman, College of Letters & Scienceen
dc.rights.holderCopyright 2022 by Christian Alexander Strattonen
dc.subject.lcshZoological surveysen
dc.subject.lcshEcologyen
dc.subject.lcshStatisticsen
dc.subject.lcshMathematical modelsen
dc.subject.lcshLatent variablesen
dc.titleBayesian hierarchical latent variable models for ecological data typesen
dc.typeDissertationen
mus.data.thumbpage90en
thesis.degree.committeemembersMembers, Graduate Committee: Mark Greenwood; Katharine M. Banneren
thesis.degree.departmentMathematical Sciences.en
thesis.degree.genreDissertationen
thesis.degree.namePhDen
thesis.format.extentfirstpage1en
thesis.format.extentlastpage109en

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