Bayesian spatial analysis of demographic survey data

In this paper we analyze the spatial patterns of the risk of unprotected sexual intercourse for Italian women during their initial experience with sexual intercourse. We rely on geo-referenced survey data from the Italian Fertility and Family Survey, and we use a Bayesian approach relying on weakly...

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Format: Article
Language:English
Published: Max Planck Institute for Demographic Research 2003-02-01
Series:Demographic Research
Subjects:
Online Access:http://www.demographic-research.org/volumes/vol8/3/
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spelling doaj-ff69bd050ae144dfa96225f47b80743e2020-11-24T22:47:54ZengMax Planck Institute for Demographic ResearchDemographic Research1435-98712003-02-0183Bayesian spatial analysis of demographic survey dataIn this paper we analyze the spatial patterns of the risk of unprotected sexual intercourse for Italian women during their initial experience with sexual intercourse. We rely on geo-referenced survey data from the Italian Fertility and Family Survey, and we use a Bayesian approach relying on weakly informative prior distributions. Our analyses are based on a logistic regression model with a multilevel structure. The spatial pattern uses an intrinsic Gaussian conditional autoregressive (CAR) error component. The complexity of such a model is best handled within a Bayesian framework, and statistical inference is carried out using Markov Chain Monte Carlo simulation. In contrast with previous analyses based on multilevel model, our approach avoids the restrictive assumption of independence between area effects. This model allows us to borrow strength from neighbors in order to obtain estimates for areas that may, on their own, have inadequate sample sizes. We show that substantial geographical variation exists within Italy (Southern Italy has higher risks of unprotected first-time sexual intercourse). The findings are robust with respect to the specification of the prior distribution. We argue that spatial analysis can give useful insights on unmet reproductive health needs.http://www.demographic-research.org/volumes/vol8/3/Italy
collection DOAJ
language English
format Article
sources DOAJ
title Bayesian spatial analysis of demographic survey data
spellingShingle Bayesian spatial analysis of demographic survey data
Demographic Research
Italy
title_short Bayesian spatial analysis of demographic survey data
title_full Bayesian spatial analysis of demographic survey data
title_fullStr Bayesian spatial analysis of demographic survey data
title_full_unstemmed Bayesian spatial analysis of demographic survey data
title_sort bayesian spatial analysis of demographic survey data
publisher Max Planck Institute for Demographic Research
series Demographic Research
issn 1435-9871
publishDate 2003-02-01
description In this paper we analyze the spatial patterns of the risk of unprotected sexual intercourse for Italian women during their initial experience with sexual intercourse. We rely on geo-referenced survey data from the Italian Fertility and Family Survey, and we use a Bayesian approach relying on weakly informative prior distributions. Our analyses are based on a logistic regression model with a multilevel structure. The spatial pattern uses an intrinsic Gaussian conditional autoregressive (CAR) error component. The complexity of such a model is best handled within a Bayesian framework, and statistical inference is carried out using Markov Chain Monte Carlo simulation. In contrast with previous analyses based on multilevel model, our approach avoids the restrictive assumption of independence between area effects. This model allows us to borrow strength from neighbors in order to obtain estimates for areas that may, on their own, have inadequate sample sizes. We show that substantial geographical variation exists within Italy (Southern Italy has higher risks of unprotected first-time sexual intercourse). The findings are robust with respect to the specification of the prior distribution. We argue that spatial analysis can give useful insights on unmet reproductive health needs.
topic Italy
url http://www.demographic-research.org/volumes/vol8/3/
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