Modelling Spatial and Spatial-Temporal Data

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A01=Guangquan Li
A01=Robert P. Haining
advanced spatial-temporal modeling guide
Author_Guangquan Li
Author_Robert P. Haining
Average Direct Effect
Average Income
Average Indirect Effect
Bayesian Hierarchical Model
Bayesian Inference
Bayesian inference methods
Bayesian models
Burglary Count
Burglary Rate
Category=JMB
Category=KCH
Category=PBT
cross-sectional spatial data
Data Sparsity
disease mapping analysis
eq_bestseller
eq_business-finance-law
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_society-politics
hierarchical modeling techniques
Hierarchical Modelling
ICAR Model
MCMC Chain
MCMC Iteration
Observed Outcome Value
policy intervention evaluation
Posterior Predictive Checks
quantitative social research
R code
Row Standardised Weights Matrix
RW1 Model
SDM.
Small Area Estimation
Space Time Interaction
Space Time Separable
Spatial Dependence
Spatial Dependence Structure
Spatial Econometric
Spatial Econometric Approach
Spatial Econometric Modelling
Spatial Econometric Models
Spatial Heterogeneity
spatial statistics applications
Spatial Temporal Data
Spatial Weights Matrix
Temporal Main Effects
Uncertainty
WinBUGS Code

Product details

  • ISBN 9781482237429
  • Weight: 1440g
  • Dimensions: 178 x 254mm
  • Publication Date: 07 Feb 2020
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Modelling Spatial and Spatial-Temporal Data: A Bayesian Approach is aimed at statisticians and quantitative social, economic and public health students and researchers who work with small-area spatial and spatial-temporal data. It assumes a grounding in statistical theory up to the standard linear regression model. The book compares both hierarchical and spatial econometric modelling, providing both a reference and a teaching text with exercises in each chapter. The book provides a fully Bayesian, self-contained, treatment of the underlying statistical theory, with chapters dedicated to substantive applications. The book includes WinBUGS code and R code and all datasets are available online.

Part I covers fundamental issues arising when modelling spatial and spatial-temporal data. Part II focuses on modelling cross-sectional spatial data and begins by describing exploratory methods that help guide the modelling process. There are then two theoretical chapters on Bayesian models and a chapter of applications. Two chapters follow on spatial econometric modelling, one describing different models, the other substantive applications. Part III discusses modelling spatial-temporal data, first introducing models for time series data. Exploratory methods for detecting different types of space-time interaction are presented, followed by two chapters on the theory of space-time separable (without space-time interaction) and inseparable (with space-time interaction) models. An applications chapter includes: the evaluation of a policy intervention; analysing the temporal dynamics of crime hotspots; chronic disease surveillance; and testing for evidence of spatial spillovers in the spread of an infectious disease. A final chapter suggests some future directions and challenges.

Robert Haining is Emeritus Professor in Human Geography, University of Cambridge, England. He is the author of Spatial Data Analysis in the Social and Environmental Sciences (1990) and Spatial Data Analysis: Theory and Practice (2003). He is a Fellow of the RGS-IBG and of the Academy of Social Sciences.

Guangquan Li is Senior Lecturer in Statistics in the Department of Mathematics, Physics and Electrical Engineering, Northumbria University, Newcastle, England. His research includes the development and application of Bayesian methods in the social and health sciences. He is a Fellow of the Royal Statistical Society.

Robert Haining is Emeritus Professor in Human Geography, University of Cambridge, England. He is the author of Spatial Data Analysis in the Social and Environmental Sciences (1990) and Spatial Data Analysis: Theory and Practice (2003). He is a Fellow of the RGS-IBG and of the Academy of Social Sciences.

Guangquan Li is Senior Lecturer in Statistics in the Department of Mathematics, Physics and Electrical Engineering, Northumbria University, Newcastle, England. His research includes the development and application of Bayesian methods in the social and health sciences. He is a Fellow of the Royal Statistical Society.

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