Implementing spatial segregation measures in R.

Reliable and accurate estimation of residential segregation between population groups is important for understanding the extent of social cohesion and integration in our society. Although there have been considerable methodological advances in the measurement of segregation over the last several dec...

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Main Authors: Seong-Yun Hong, David O'Sullivan, Yukio Sadahiro
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0113767
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spelling doaj-68ac44252a154fcb983422ac8ee8f2372021-03-03T20:11:17ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-01911e11376710.1371/journal.pone.0113767Implementing spatial segregation measures in R.Seong-Yun HongDavid O'SullivanYukio SadahiroReliable and accurate estimation of residential segregation between population groups is important for understanding the extent of social cohesion and integration in our society. Although there have been considerable methodological advances in the measurement of segregation over the last several decades, the recently developed measures have not been widely used in the literature, in part due to their complex calculation. To address this problem, we have implemented several newly proposed segregation indices in R, an open source software environment for statistical computing and graphics, as a package called seg. Although there are already a few standalone applications and add-on packages that provide access to similar methods, our implementation has a number of advantages over the existing tools. First, our implementation is flexible in the sense that it provides detailed control over the calculation process with a wide range of input parameters. Most of the parameters have carefully chosen defaults, which perform acceptably in many situations, so less experienced users can also use the implemented functions without too much difficulty. Second, there is no need to export results to other software programs for further analysis. We provide coercion methods that enable the transformation of our output classes into general R classes, so the user can use thousands of standard and modern statistical techniques, which are already available in R, for the post-processing of the results. Third, our implementation does not require commercial software to operate, so it is accessible to a wider group of people.https://doi.org/10.1371/journal.pone.0113767
collection DOAJ
language English
format Article
sources DOAJ
author Seong-Yun Hong
David O'Sullivan
Yukio Sadahiro
spellingShingle Seong-Yun Hong
David O'Sullivan
Yukio Sadahiro
Implementing spatial segregation measures in R.
PLoS ONE
author_facet Seong-Yun Hong
David O'Sullivan
Yukio Sadahiro
author_sort Seong-Yun Hong
title Implementing spatial segregation measures in R.
title_short Implementing spatial segregation measures in R.
title_full Implementing spatial segregation measures in R.
title_fullStr Implementing spatial segregation measures in R.
title_full_unstemmed Implementing spatial segregation measures in R.
title_sort implementing spatial segregation measures in r.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Reliable and accurate estimation of residential segregation between population groups is important for understanding the extent of social cohesion and integration in our society. Although there have been considerable methodological advances in the measurement of segregation over the last several decades, the recently developed measures have not been widely used in the literature, in part due to their complex calculation. To address this problem, we have implemented several newly proposed segregation indices in R, an open source software environment for statistical computing and graphics, as a package called seg. Although there are already a few standalone applications and add-on packages that provide access to similar methods, our implementation has a number of advantages over the existing tools. First, our implementation is flexible in the sense that it provides detailed control over the calculation process with a wide range of input parameters. Most of the parameters have carefully chosen defaults, which perform acceptably in many situations, so less experienced users can also use the implemented functions without too much difficulty. Second, there is no need to export results to other software programs for further analysis. We provide coercion methods that enable the transformation of our output classes into general R classes, so the user can use thousands of standard and modern statistical techniques, which are already available in R, for the post-processing of the results. Third, our implementation does not require commercial software to operate, so it is accessible to a wider group of people.
url https://doi.org/10.1371/journal.pone.0113767
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