Chapter 1 Introduction
Chapter 2 Data and Plots
Chapter 3 Handling Spatial Data
Chapter 4 Programming in R
Chapter 5 Using R as a GIS
Chapter 6 Point Pattern Analysis
Chapter 7 Spatial Attribute Analysis
Chapter 8 Localised Spatial Analysis
Chapter 9 R and Internet Data
Chapter 10 Epilogue
Chris Brunsdon is Professor of Geocomputation and Director of the
National Centre for Geocomputation at the National University of
Ireland, Maynooth, having worked previously in the Universities of
Newcastle, Glamorgan, Leicester and Liverpool, variously in
departments focusing on both geography and computing. He has
interests that span both of these disciplines, including spatial
statistics, geographical information science, and exploratory
spatial data analysis, and in particular the application of these
ideas to crime pattern analysis, the modelling of house prices,
medical and health geography and the analysis of land use data. He
was one of the originators of the technique of geographically
weighted regression (GWR).
He has extensive experience of programming in R, going back to the
late 1990s, and has developed a number of R packages which are
currently available on CRAN, the Comprehensive R Archive Network.
He is an advocate of free and open source software, and in
particular the use of reproducible research methods, and has
contributed to a large number of workshops on the use of R and of
GWR in a number of countries, including the UK, Ireland, Japan,
Canada, the USA, the Czech Republic and Australia.
When not involved in academic work he enjoys running, collecting
clocks and watches, and cooking – the last of these probably
cancelling out the benefits of the first.
Alexis Comber, Lex, is Professor of Spatial Data Analytics at Leeds
Institute for Data Analytics (LIDA) the University of Leeds. He
worked previously at the University of Leicester where he held a
chair in Geographical Information Science. His first degree was in
Plant and Crop Science at the University of Nottingham and he
completed a PhD in Computer Science at the Macaulay Institute,
Aberdeen (now the James Hutton Institute) and the University of
Aberdeen. This developed expert systems for land cover monitoring
from satellite imagery and brought him into the world of spatial
data, spatial analysis, and mapping.
Lex’s research interests span many different application areas
including environment, land cover / land use, demographics, public
health, agriculture, bio-energy and accessibility, all of which
require multi-disciplinary approaches. His research draws from
methods in geocomputation, mathematics, statistics and computer
science and he has extended techniques in operations research /
location-allocation (what to put where), graph theory (cluster
detection in networks), heuristic searches (how to move
intelligently through highly dimensional big data), remote sensing
(novel approaches for classification), handling divergent data
semantics (uncertainty handling, ontologies, text mining) and
spatial statistics (quantifying spatial and temporal process
heterogeneity).
He has co-authored (with Chris Brunsdon) An Introduction to R for
Spatial Analysis and Mapping, the first ‘how to book’ for spatial
analyses and mapping in R, the open source statistical software,
now in its second edition.
Outside of academic work and in no particular order, Lex enjoys his
vegetable garden, walking the dog and playing pinball (he is the
proud owner of a 1981 Bally Eight Ball Deluxe).
There′s no better text for showing students and data analysts how
to use R for spatial analysis, mapping and reproducible research.
If you want to learn how to make sense of geographic data and would
like the tools to do it, this is your guide.
*Richard Harris*
Students and other life-long learners need flexible skills to add
value to spatial data. This comprehensive, accessible and
thoughtful book unlocks the spatial data value chain. It provides
an essential guide to the R spatial analysis ecosystem. This
excellent state-of-the-art treatment will be widely used in student
classes, continuing professional development and self-tuition.
*Paul Longley*
In this second edition, the authors have once again captured the
state of the art in one of the most widely used approaches to
spatial analysis. Spanning from the absolute beginner to more
advanced concepts and underpinned by a strong ‘learn by doing’
ethos, this book is ideally suited for both students and teachers
of spatial analysis using R.
*Jonny Huck*
A timely update to the de facto reference and textbook for anyone —
geographer, planner, or (geo)data scientist — needing to undertake
mapping and spatial analysis in R. Complete with self-tests and
valuable insights into the transition from sp to sf, this book will
help you to develop your ability to write flexible, powerful, and
fast geospatial code in R.
*Jonathan Reades*
Brunsdon and Comber’s 2nd edition of their acclaimed text book is
updated with the key developments in spatial analysis and mapping
in R and maintains the pedagogic style that made the original
volume such an indispensable resource for teaching and
research.
*Scott Orford*
The future of GIS is open-source! An Introduction to R for
Spatial Analysis and Mapping is an ideal introduction to spatial
data analysis and mapping using the powerful open-source language
R. Assuming no prior knowledge, Brunsdon and Comber get the
reader up to speed quickly with clear writing, excellent pedagogic
material and a keen sense of geographic applications. The second
edition is timely and fresh. An Introduction to R for Spatial
Analysis and Mapping should be required reading for every Geography
and GIS student, as well as faculty and professionals.
*Harvey Miller*
While there are many books that provide an introduction to R, this
is one of the few that provides both a general and an
application-specific (spatial analysis) introduction and is
therefore far more useful and accessible. Written by two
experts in the field, it covers both the theory and practice of
spatial statistical analysis and will be an important addition
to the bookshelves of researchers whose spatial analysis needs have
outgrown currently available GIS software.
*Jennifer Miller*
Brunsdon and Comber have produced that rare text that is both an
introduction to the field of spatial analysis and, simultaneously,
to the programming language R. It has been my go-to text in
teaching either subject and this new edition updates and expands an
already deeply comprehensive work.
*Jim Thatcher*
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