sparr: Analyzing Spatial Relative Risk Using Fixed and Adaptive Kernel Density Estimation in R

The estimation of kernel-smoothed relative risk functions is a useful approach to examining the spatial variation of disease risk. Though there exist several options for performing kernel density estimation in statistical software packages, there have been very few contributions to date that have fo...

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Main Authors: Tilman M. Davies, Martin L. Hazelton, Jonathan C. Marshall
Format: Article
Language:English
Published: Foundation for Open Access Statistics 2011-03-01
Series:Journal of Statistical Software
Subjects:
Online Access:http://www.jstatsoft.org/v39/i01/paper
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spelling doaj-8468cf51abdd457dbd1ec33ce1f24ff22020-11-25T01:47:57ZengFoundation for Open Access StatisticsJournal of Statistical Software1548-76602011-03-013901sparr: Analyzing Spatial Relative Risk Using Fixed and Adaptive Kernel Density Estimation in RTilman M. DaviesMartin L. HazeltonJonathan C. MarshallThe estimation of kernel-smoothed relative risk functions is a useful approach to examining the spatial variation of disease risk. Though there exist several options for performing kernel density estimation in statistical software packages, there have been very few contributions to date that have focused on estimation of a relative risk function per se. Use of a variable or adaptive smoothing parameter for estimation of the individual densities has been shown to provide additional benefits in estimating relative risk and specific computational tools for this approach are essentially absent. Furthermore, little attention has been given to providing methods in available software for any kind of subsequent analysis with respect to an estimated risk function. To facilitate analyses in the field, the R package sparr is introduced, providing the ability to construct both fixed and adaptive kernel-smoothed densities and risk functions, identify statistically significant fluctuations in an estimated risk function through the use of asymptotic tolerance contours, and visualize these objects in flexible and attractive ways.http://www.jstatsoft.org/v39/i01/paperdensity estimationvariable bandwidthtolerance contoursgeographical epidemiologykernel smoothing
collection DOAJ
language English
format Article
sources DOAJ
author Tilman M. Davies
Martin L. Hazelton
Jonathan C. Marshall
spellingShingle Tilman M. Davies
Martin L. Hazelton
Jonathan C. Marshall
sparr: Analyzing Spatial Relative Risk Using Fixed and Adaptive Kernel Density Estimation in R
Journal of Statistical Software
density estimation
variable bandwidth
tolerance contours
geographical epidemiology
kernel smoothing
author_facet Tilman M. Davies
Martin L. Hazelton
Jonathan C. Marshall
author_sort Tilman M. Davies
title sparr: Analyzing Spatial Relative Risk Using Fixed and Adaptive Kernel Density Estimation in R
title_short sparr: Analyzing Spatial Relative Risk Using Fixed and Adaptive Kernel Density Estimation in R
title_full sparr: Analyzing Spatial Relative Risk Using Fixed and Adaptive Kernel Density Estimation in R
title_fullStr sparr: Analyzing Spatial Relative Risk Using Fixed and Adaptive Kernel Density Estimation in R
title_full_unstemmed sparr: Analyzing Spatial Relative Risk Using Fixed and Adaptive Kernel Density Estimation in R
title_sort sparr: analyzing spatial relative risk using fixed and adaptive kernel density estimation in r
publisher Foundation for Open Access Statistics
series Journal of Statistical Software
issn 1548-7660
publishDate 2011-03-01
description The estimation of kernel-smoothed relative risk functions is a useful approach to examining the spatial variation of disease risk. Though there exist several options for performing kernel density estimation in statistical software packages, there have been very few contributions to date that have focused on estimation of a relative risk function per se. Use of a variable or adaptive smoothing parameter for estimation of the individual densities has been shown to provide additional benefits in estimating relative risk and specific computational tools for this approach are essentially absent. Furthermore, little attention has been given to providing methods in available software for any kind of subsequent analysis with respect to an estimated risk function. To facilitate analyses in the field, the R package sparr is introduced, providing the ability to construct both fixed and adaptive kernel-smoothed densities and risk functions, identify statistically significant fluctuations in an estimated risk function through the use of asymptotic tolerance contours, and visualize these objects in flexible and attractive ways.
topic density estimation
variable bandwidth
tolerance contours
geographical epidemiology
kernel smoothing
url http://www.jstatsoft.org/v39/i01/paper
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AT jonathancmarshall sparranalyzingspatialrelativeriskusingfixedandadaptivekerneldensityestimationinr
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