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Hierarchical Modeling and Inference in Ecology: The Analysis of Data from Populations, Metapopulations and Communities

Unknown Author
4.9/5 (10415 ratings)
Description:The hierarchical modelling framework represents a powerful and flexible framework for modelling and inference about ecological processes. It admits an explicit and formal representation of the data model into constituent components for observations and ecological process. The model for the ecological process of interest (the ?process model"), describes variation (spatial, temporal, etc..) in the ecological process that is the object of inference. This process is manifest in some (typically unobservable, or only partially so) state variable, say z(i, t), e.g., abundance or occurrence at some point in space (i) and time (t). Whereas the model for the observations conditional on the ecological process (the "observation model"), describes the probabilistic mechanisms by which the data are obtained. Whereas almost all classical methods focus exclusively on models that describe the sampling process, through the closely related probability distribution [data-parameters], the incorporation of these two component models into a single unified model (referred to as a hierarchical or state-space model) results in a generic and flexible strategy for conducting inference about population and community structure from biological sampling data. In particular, while the [data, process, parameters] model may be very complex, the two component sub-models are typically very simple, even for some very complex data structures.This yields surprisingly simple solutions to some very complex problems. Examples include: (1)Hierarchical models of simple counts. (2)Modelling individual heterogeneity in capture-recapture models. (3)Estimating community structure by modelling occurrence of species. * Wide variety of examples involving many taxa (birds, amphibians, mammals, insects, plants)* Detailed explanations describing the implementation of hierarchical models using freely available software such as R and WinBUGS* Computing support provided as technical appendices in an online companion siteWe have made it easy for you to find a PDF Ebooks without any digging. And by having access to our ebooks online or by storing it on your computer, you have convenient answers with Hierarchical Modeling and Inference in Ecology: The Analysis of Data from Populations, Metapopulations and Communities. To get started finding Hierarchical Modeling and Inference in Ecology: The Analysis of Data from Populations, Metapopulations and Communities, you are right to find our website which has a comprehensive collection of manuals listed.
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0080559255

Hierarchical Modeling and Inference in Ecology: The Analysis of Data from Populations, Metapopulations and Communities

Unknown Author
4.4/5 (1290744 ratings)
Description: The hierarchical modelling framework represents a powerful and flexible framework for modelling and inference about ecological processes. It admits an explicit and formal representation of the data model into constituent components for observations and ecological process. The model for the ecological process of interest (the ?process model"), describes variation (spatial, temporal, etc..) in the ecological process that is the object of inference. This process is manifest in some (typically unobservable, or only partially so) state variable, say z(i, t), e.g., abundance or occurrence at some point in space (i) and time (t). Whereas the model for the observations conditional on the ecological process (the "observation model"), describes the probabilistic mechanisms by which the data are obtained. Whereas almost all classical methods focus exclusively on models that describe the sampling process, through the closely related probability distribution [data-parameters], the incorporation of these two component models into a single unified model (referred to as a hierarchical or state-space model) results in a generic and flexible strategy for conducting inference about population and community structure from biological sampling data. In particular, while the [data, process, parameters] model may be very complex, the two component sub-models are typically very simple, even for some very complex data structures.This yields surprisingly simple solutions to some very complex problems. Examples include: (1)Hierarchical models of simple counts. (2)Modelling individual heterogeneity in capture-recapture models. (3)Estimating community structure by modelling occurrence of species. * Wide variety of examples involving many taxa (birds, amphibians, mammals, insects, plants)* Detailed explanations describing the implementation of hierarchical models using freely available software such as R and WinBUGS* Computing support provided as technical appendices in an online companion siteWe have made it easy for you to find a PDF Ebooks without any digging. And by having access to our ebooks online or by storing it on your computer, you have convenient answers with Hierarchical Modeling and Inference in Ecology: The Analysis of Data from Populations, Metapopulations and Communities. To get started finding Hierarchical Modeling and Inference in Ecology: The Analysis of Data from Populations, Metapopulations and Communities, you are right to find our website which has a comprehensive collection of manuals listed.
Our library is the biggest of these that have literally hundreds of thousands of different products represented.
Pages
Format
PDF, EPUB & Kindle Edition
Publisher
Release
ISBN
0080559255
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