- ホーム
- > 洋書
- > 英文書
- > Science / Mathematics
Full Description
Hierarchical Modeling and Analysis for Spatial Data, Third Edition presents a comprehensive and up-to-date treatment of hierarchical and multilevel modeling for spatial and spatio-temporal data within a Bayesian framework. Over the past decade since the second edition, spatial statistics has evolved significantly, driven by an explosion in data availability and advances in Bayesian computation. This edition reflects those changes, introducing new methods, expanded applications, and enhanced computational resources to support researchers and practitioners across disciplines, including environmental science, ecology, and public health.
Key features of the third edition:
A dedicated chapter on state-of-the-art Bayesian modeling of large spatial and spatio-temporal datasets
Two new chapters on spatial point pattern analysis, covering both foundational and Bayesian perspectives
A new chapter on spatial data fusion, integrating diverse spatial data sources from different probabilistic mechanisms
An accessible introduction to GPS mapping, geodesic distances, and mathematical cartography
An expanded special topics chapter, including spatial challenges with finite population modeling and spatial directional data
A thoroughly revised chapter on Bayesian inference, featuring an updated review of modern computational techniques
A dedicated GitHub repository providing R programs and solutions to selected exercises, ensuring continued access to evolving software developments
With refreshed content throughout, this edition serves as an essential reference for statisticians, data scientists, and researchers working with spatial data. Graduate students and professionals seeking a deep understanding of Bayesian spatial modeling will find this volume an invaluable resource for both theory and practice.
Contents
1 Overview of spatial data problems. 2 Basics of point-referenced data models. 3 Some theory for point-referenced data models. 4 Basics of areal data models. 5 Basics of Bayesian inference. 6 Hierarchical modeling for univariate spatial data. 7 Spatial misalignment. 8 Basics of Point Pattern Data Modeling. 9 Bayesian Analysis of Point Pattern Models. 10 Multivariate spatial modeling for point-referenced data. 11 Models for multivariate areal data.12 Spatiotemporal modeling.13 Modeling large spatial and spatiotemporal datasets. 14 Spatial gradients and wombling. 15 Spatial survival models. 16 Spatial data fusion (and preferential sampling). 17 Special topics in spatial process modeling.