Bayesian Modeling of Spatio-Temporal Data with R

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A01=Sujit Sahu
advanced Bayesian computation in R
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Areal Unit Data
Argo Floats
Author_Sujit Sahu
Auto-regressive Model
automatic-update
bayesian
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COP=United Kingdom
Covariance Function
Data Set
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environmental data analysis
eq_isMigrated=2
eq_nobargain
Exponential Covariance Function
Full Conditional Distribution
GLM Fit
GP Model
hierarchical modeling
HMC
INLA Package
Isotropic Covariance Functions
Language_English
MCMC Convergence
MCMC Iteration
MCMC Sample
modelling
Ozone Concentration Values
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Posterior Distribution
Posterior Predictive Distribution
predictive analytics
Predictive Distribution
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Prior Distributions
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R programming for statistics
softlaunch
Spatial Random Effects
spatial statistics
Spatio Temporal Data
Spatio Temporal Model
spatio-temporal
Square Root Scale
Target Posterior Distribution
uncertainty quantification

Product details

  • ISBN 9780367277987
  • Weight: 880g
  • Dimensions: 156 x 234mm
  • Publication Date: 02 Mar 2022
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
  • Language: English
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Applied sciences, both physical and social, such as atmospheric, biological, climate, demographic, economic, ecological, environmental, oceanic and political, routinely gather large volumes of spatial and spatio-temporal data in order to make wide ranging inference and prediction. Ideally such inferential tasks should be approached through modelling, which aids in estimation of uncertainties in all conclusions drawn from such data. Unified Bayesian modelling, implemented through user friendly software packages, provides a crucial key to unlocking the full power of these methods for solving challenging practical problems.

Key features of the book:

• Accessible detailed discussion of a majority of all aspects of Bayesian methods and computations with worked examples, numerical illustrations and exercises

• A spatial statistics jargon buster chapter that enables the reader to build up a vocabulary without getting clouded in modeling and technicalities

• Computation and modeling illustrations are provided with the help of the dedicated R package bmstdr, allowing the reader to use well-known packages and platforms, such as rstan, INLA, spBayes, spTimer, spTDyn, CARBayes, CARBayesST, etc

• Included are R code notes detailing the algorithms used to produce all the tables and figures, with data and code available via an online supplement

• Two dedicated chapters discuss practical examples of spatio-temporal modeling of point referenced and areal unit data

• Throughout, the emphasis has been on validating models by splitting data into test and training sets following on the philosophy of machine learning and data science

This book is designed to make spatio-temporal modeling and analysis accessible and understandable to a wide audience of students and researchers, from mathematicians and statisticians to practitioners in the applied sciences. It presents most of the modeling with the help of R commands written in a purposefully developed R package to facilitate spatio-temporal modeling. It does not compromise on rigour, as it presents the underlying theories of Bayesian inference and computation in standalone chapters, which would be appeal those interested in the theoretical details. By avoiding hard core mathematics and calculus, this book aims to be a bridge that removes the statistical knowledge gap from among the applied scientists.

Sujit K. Sahu is a Professor of Statistics at the University of Southampton. He has co-authored more than 60 papers on Bayesian computation and modeling of spatio-temporal data. He has also contributed to writing specialist R packages for modeling and analysis of such data.

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