Introducing spatial microsimulation with R. Introduction. SimpleWorld: A worked example of spatial microsimulation. What is spatial microsimulation? Generating spatial microdata. Data preparation. Population synthesis. Alternative approaches to population synthesis. Spatial microsimulation in the wild. Model checking and evaluation. Population synthesis without microdata. Household allocation. Modelling spatial microdata. The TRESIS approach to spatial microsimulation. Spatial microsimulation for agent-based models. Appendix. Glossary. Bibliography.
Robin Lovelace is a University Academic Fellow at the University of Leeds specializing in methods of spatial data analysis and applied transport modeling. Creator of the stplanr package and a number of popular tutorials, he is an experienced R user, teacher, and developer. Robin uses open source software daily for spatial analysis, map making, statistics, and modeling. His current research focuses on online interactive mapping and modeling to provide the evidence base needed for a transition away from fossil fuels in the transport sector. Morgane Dumont is an applied mathematician currently undertaking a PhD at the University of Namur. She has a wealth of experience programming in R, Python, C, Fortran, and MATLAB®. Her research focuses on forecasting the health needs of the elderly in 2030 for Belgium. To achieve this aim, Morgane is developing a synthetic population for Belgium as an input to an agent-based model.
". . . the book provides an excellent introduction to the theory
and practice of spatial microsimulation, as well as a bridge to
working in R to actually do the various tasks described . . ."
—Ezra Haber Glenn, Journal of Statistical Software"In this
groundbreaking book, the authors present the ideas behind spatial
microsimulation, giving clear, user-friendly guidance using the
open source software R. Spatial Microsimulation with R provides the
reader with firm knowledge of the field as well as the tools to
apply the methods to his or her own data. Written in an extremely
accessible way, this book demonstrates the key steps in spatial
microsimulation, from theory into practice. It will be deservedly
instrumental in fuelling the growing interest in spatial
microsimulation amongst geographers, economists, urban and regional
planners, and public- and private-sector decision makers."
—Richard Harris, Professor of Quantitative Social Geography,
University of Bristol"This book fills an important gap in the
existing literature. What is currently missing is a book mapping
out the complete picture from what spatial microsimulation is and
why it is useful, how to prepare the data, how to actually build
the model, how to validate it, and how to use the resulting
dataset. A particular strength of the book is the close connection
between theory and implementation. The book includes very useful
code snippets while the complete scripts are provided on the
corresponding Github repository—this clearly sets standards for
open science."
—Ulrike Deetjen, Oxford University"Lovelace and Dumont provide a
great service to the microsimulation community in developing a
clear and coherent exposition of the use of the R computer language
for implementing spatial applications. Required reading for all
those involved in agent-based and microsimulation modeling."
—Michael Batty, Centre for Advanced Spatial Analysis, University
College London"Spatial Microsimulation with R is a well-written and
concise work on a topic of broad appeal. The book is structured in
a logical way, which makes it straightforward for the reader to
pull out pertinent information. It is a useful reference that
provides value for individuals of diverse backgrounds and can be a
valuable resource for individuals seeking new applications for
spatial microsimulation."
—Journal of the American Statistical Association" . . .this book is
an excellent resource for everyone who want to learn how to do
spatial microsimulation. The possibility to download the contents
of the book, compile it andwork interactively with the code also
makes it a great example of dynamic documents and reproducible
research."
—Netherlands Environmental Assessment Agency (PBL)"There are
multiple books on spatial microsimulation and hundreds more
research papers detailing the various applications of studies.
However, bar a few exceptions, they lack transparency and
reproducibility. It creates a situation whereby researchers
simultaneously encourage the uptake of the method, whilst also
creating barriers by obscuring methodologies. Lovelace and Dumont’s
book sets to address this flaw through demonstrating how to
undertake a spatial microsimulation. . . Where the book sets itself
apart from other books is in its applied nature. At the centre of
their approach is a ‘learn by doing’ mentality which serves the
book well. Examples are used to demonstrate approaches and the
authors encourage thinking beyond the material presented. Of note,
Lovelace and Dumont show step-by-step what is happening when using
IPF and how to code this, rather than jumping straight to bespoke R
packages that can run it in single lines of code (which are also
covered). Content is always clearly set out, with each step
explained in detail. The approach helps to guide the reader along
in understanding fairly complicated methods. . . Lovelace and
Dumont’s book is a fine addition to the library of anyone
interested in quantitative methods, let alone those wanting to
generate their own spatial microdata."
—Mark A. Green, Applied Spatial Analysis
". . . the book provides an excellent introduction to the theory
and practice of spatial microsimulation, as well as a bridge to
working in R to actually do the various tasks described . . ."
—Ezra Haber Glenn, Journal of Statistical Software"In this
groundbreaking book, the authors present the ideas behind spatial
microsimulation, giving clear, user-friendly guidance using the
open source software R. Spatial Microsimulation with R provides the
reader with firm knowledge of the field as well as the tools to
apply the methods to his or her own data. Written in an extremely
accessible way, this book demonstrates the key steps in spatial
microsimulation, from theory into practice. It will be deservedly
instrumental in fuelling the growing interest in spatial
microsimulation amongst geographers, economists, urban and regional
planners, and public- and private-sector decision makers."
—Richard Harris, Professor of Quantitative Social Geography,
University of Bristol"This book fills an important gap in the
existing literature. What is currently missing is a book mapping
out the complete picture from what spatial microsimulation is and
why it is useful, how to prepare the data, how to actually build
the model, how to validate it, and how to use the resulting
dataset. A particular strength of the book is the close connection
between theory and implementation. The book includes very useful
code snippets while the complete scripts are provided on the
corresponding Github repository—this clearly sets standards for
open science."
—Ulrike Deetjen, Oxford University"Lovelace and Dumont provide a
great service to the microsimulation community in developing a
clear and coherent exposition of the use of the R computer language
for implementing spatial applications. Required reading for all
those involved in agent-based and microsimulation modeling."
—Michael Batty, Centre for Advanced Spatial Analysis, University
College London"Spatial Microsimulation with R is a well-written and
concise work on a topic of broad appeal. The book is structured in
a logical way, which makes it straightforward for the reader to
pull out pertinent information. It is a useful reference that
provides value for individuals of diverse backgrounds and can be a
valuable resource for individuals seeking new applications for
spatial microsimulation."
—Journal of the American Statistical Association" . . .this book is
an excellent resource for everyone who want to learn how to do
spatial microsimulation. The possibility to download the contents
of the book, compile it andwork interactively with the code also
makes it a great example of dynamic documents and reproducible
research."
—Netherlands Environmental Assessment Agency (PBL)"There are
multiple books on spatial microsimulation and hundreds more
research papers detailing the various applications of studies.
However, bar a few exceptions, they lack transparency and
reproducibility. It creates a situation whereby researchers
simultaneously encourage the uptake of the method, whilst also
creating barriers by obscuring methodologies. Lovelace and Dumont’s
book sets to address this flaw through demonstrating how to
undertake a spatial microsimulation. . . Where the book sets itself
apart from other books is in its applied nature. At the centre of
their approach is a ‘learn by doing’ mentality which serves the
book well. Examples are used to demonstrate approaches and the
authors encourage thinking beyond the material presented. Of note,
Lovelace and Dumont show step-by-step what is happening when using
IPF and how to code this, rather than jumping straight to bespoke R
packages that can run it in single lines of code (which are also
covered). Content is always clearly set out, with each step
explained in detail. The approach helps to guide the reader along
in understanding fairly complicated methods. . . Lovelace and
Dumont’s book is a fine addition to the library of anyone
interested in quantitative methods, let alone those wanting to
generate their own spatial microdata."
—Mark A. Green, Applied Spatial Analysis
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