Spatial Relationships Between Two Georeferenced Variables Spatial Relationships Between Two Georeferenced Variables

Spatial Relationships Between Two Georeferenced Variables

With Applications in R

Ronny Vallejos et autres
    • 84,99 $
    • 84,99 $

Description de l’éditeur

This book offers essential, systematic information on the assessment of the spatial association between two processes from a statistical standpoint. Divided into eight chapters, the book begins with preliminary concepts, mainly concerning spatial statistics. The following seven chapters focus on the methodologies needed to assess the correlation between two or more processes; from theory introduced 35 years ago, to techniques that have only recently been published. Furthermore, each chapter contains a section on R computations to explore how the methodology works with real data.  References and a list of exercises are included at the end of each chapter.

The assessment of the correlation between two spatial processes has been tackled from several different perspectives in a variety of applications fields. In particular, the problem of testing for the existence of spatial association between two georeferenced variables is relevant for posterior modeling and inference. One evident application in this context is the quantification of the spatial correlation between two images (processes defined on a rectangular grid in a two-dimensional space). From a statistical perspective, this problem can be handled via hypothesis testing, or by using extensions of the correlation coefficient. In an image-processing framework, these extensions can also be used to define similarity indices between images.

GENRE
Science et nature
SORTIE
2020
22 septembre
LANGUE
EN
Anglais
LONGUEUR
206
Pages
ÉDITEUR
Springer International Publishing
VENDEUR
Springer Nature B.V.
TAILLE
30,1
 Mo

Plus de livres de ce type

Spatial and Spatio-Temporal Geostatistical Modeling and Kriging Spatial and Spatio-Temporal Geostatistical Modeling and Kriging
2015
Case Studies in Spatial Point Process Modeling Case Studies in Spatial Point Process Modeling
2006
Statistics for Spatial Data Statistics for Spatial Data
2015
Statistical Learning and Modeling in Data Analysis Statistical Learning and Modeling in Data Analysis
2021
Topics in Nonparametric Statistics Topics in Nonparametric Statistics
2014
Robustness and Complex Data Structures Robustness and Complex Data Structures
2014