This practical teaches the basic theory and practice of `spatial microsimulation' using the popular free software package R. The term microsimulation means different things in different disciplines, so it is important to be clear at the outset what we will and will not be covering. We will be learning how to create spatial microdata, the basis of all spatial microsimulation models, using iterative proportional fitting (IPF). IPF is an efficient method for allocating in- dividuals from a non-spatial dataset to geographical zones, analogous to the `Furness method' in transport modelling, but with more constraints. There are other ways of generating spatial microdata but, as far as the author is aware,1 this is the most effective and flexible ...
Spatial microsimulation models are increasingly being used to create realistic microdata for geograp...
AbstractA wide range of user groups from policy makers to media commentators demand ever more spatia...
A wide range of user groups from policy makers to media commentators demand ever more spatially deta...
Iterative Proportional Fitting (IPF), also known as biproportional fitting, ‘raking’ or the RAS algo...
Spatial microsimulation modelling has developed for over a half century and is now a mainstream anal...
This paper extends a spatial microsimulation model to test how the model behaves after adding differ...
oai:ojs.pkp.sfu.ca:article/687Spatial microsimulation is a methodology aiming to simulate entities s...
This book is a practical guide on how to design, create and validate a spatial microsimulation model...
Iterative proportional fitting (IPF) is a widely used method for spatial microsimulation. The techni...
AbstractIterative proportional fitting (IPF) is a widely used method for spatial microsimulation. Th...
Abstract Spatial microsimulation models typically match census of population data with survey data i...
This chapter critically reviews the state-of-the-art in spatial microsimulation and agent-based mode...
synthACS is an R package that provides flexible tools for building synthetic microdatasets based on ...
Background: Microsimulation consists of a set of techniques for estimating characteristics and model...
The presence of identical benchmark/constraint variables in both geographic and survey datasets is a...
Spatial microsimulation models are increasingly being used to create realistic microdata for geograp...
AbstractA wide range of user groups from policy makers to media commentators demand ever more spatia...
A wide range of user groups from policy makers to media commentators demand ever more spatially deta...
Iterative Proportional Fitting (IPF), also known as biproportional fitting, ‘raking’ or the RAS algo...
Spatial microsimulation modelling has developed for over a half century and is now a mainstream anal...
This paper extends a spatial microsimulation model to test how the model behaves after adding differ...
oai:ojs.pkp.sfu.ca:article/687Spatial microsimulation is a methodology aiming to simulate entities s...
This book is a practical guide on how to design, create and validate a spatial microsimulation model...
Iterative proportional fitting (IPF) is a widely used method for spatial microsimulation. The techni...
AbstractIterative proportional fitting (IPF) is a widely used method for spatial microsimulation. Th...
Abstract Spatial microsimulation models typically match census of population data with survey data i...
This chapter critically reviews the state-of-the-art in spatial microsimulation and agent-based mode...
synthACS is an R package that provides flexible tools for building synthetic microdatasets based on ...
Background: Microsimulation consists of a set of techniques for estimating characteristics and model...
The presence of identical benchmark/constraint variables in both geographic and survey datasets is a...
Spatial microsimulation models are increasingly being used to create realistic microdata for geograp...
AbstractA wide range of user groups from policy makers to media commentators demand ever more spatia...
A wide range of user groups from policy makers to media commentators demand ever more spatially deta...