A Generalized Estimating Equations Approach for Modeling Spatially Clustered Data

Clustering in spatial data is very common phenomena in various fields such as disease mapping, ecology, environmental science and so on. Analysis of spatially clustered data should be different from conventional analysis of spatial data because of the nature of clusters in the data. Because it is e...

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Main Authors: Nasrin Lipi, Mohammad Samsul Alam, Syed Shahadat Hossain
Format: Article
Language:English
Published: Austrian Statistical Society 2021-07-01
Series:Austrian Journal of Statistics
Online Access:https://www.ajs.or.at/index.php/ajs/article/view/1097
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spelling doaj-837604aa17654a19bdce9194fb9503bb2021-07-15T13:57:01ZengAustrian Statistical SocietyAustrian Journal of Statistics1026-597X2021-07-0150410.17713/ajs.v50i4.1097A Generalized Estimating Equations Approach for Modeling Spatially Clustered DataNasrin Lipi0Mohammad Samsul Alam1Syed Shahadat Hossain2Institute of Statistical Research and Training, University of DhakaInstitute of Statistical Research and TrainingInstitute of Statistical Research and Training Clustering in spatial data is very common phenomena in various fields such as disease mapping, ecology, environmental science and so on. Analysis of spatially clustered data should be different from conventional analysis of spatial data because of the nature of clusters in the data. Because it is expected that the observations of same cluster are more similar than the observations from different clusters. In this study, a method has been proposed for the analysis of spatially clustered areal data based on generalized estimating equations which were originally developed for analyzing longitudinal data. The performance of the model for known clusters is tested in terms of how well it estimates the regression parameters and how well it captures the true spatial process. These results are presented and compared with the conditional auto-regressive model which is the most frequently used spatial model. In the simulation study, the proposed generalized estimating equations approach yields better results than the popular conditional auto-regressive model from the both perspectives of parameter estimation and spatial process capturing. A real life data on the vitamin A supplement coverage among postpartum women in Bangladesh is then analyzed for demonstration of the method. The existing divisional clustering behavior of vitamin A supplement coverage in Bangladesh is identified more accurately by the proposed approach than that by the conditional auto-regressive model. https://www.ajs.or.at/index.php/ajs/article/view/1097
collection DOAJ
language English
format Article
sources DOAJ
author Nasrin Lipi
Mohammad Samsul Alam
Syed Shahadat Hossain
spellingShingle Nasrin Lipi
Mohammad Samsul Alam
Syed Shahadat Hossain
A Generalized Estimating Equations Approach for Modeling Spatially Clustered Data
Austrian Journal of Statistics
author_facet Nasrin Lipi
Mohammad Samsul Alam
Syed Shahadat Hossain
author_sort Nasrin Lipi
title A Generalized Estimating Equations Approach for Modeling Spatially Clustered Data
title_short A Generalized Estimating Equations Approach for Modeling Spatially Clustered Data
title_full A Generalized Estimating Equations Approach for Modeling Spatially Clustered Data
title_fullStr A Generalized Estimating Equations Approach for Modeling Spatially Clustered Data
title_full_unstemmed A Generalized Estimating Equations Approach for Modeling Spatially Clustered Data
title_sort generalized estimating equations approach for modeling spatially clustered data
publisher Austrian Statistical Society
series Austrian Journal of Statistics
issn 1026-597X
publishDate 2021-07-01
description Clustering in spatial data is very common phenomena in various fields such as disease mapping, ecology, environmental science and so on. Analysis of spatially clustered data should be different from conventional analysis of spatial data because of the nature of clusters in the data. Because it is expected that the observations of same cluster are more similar than the observations from different clusters. In this study, a method has been proposed for the analysis of spatially clustered areal data based on generalized estimating equations which were originally developed for analyzing longitudinal data. The performance of the model for known clusters is tested in terms of how well it estimates the regression parameters and how well it captures the true spatial process. These results are presented and compared with the conditional auto-regressive model which is the most frequently used spatial model. In the simulation study, the proposed generalized estimating equations approach yields better results than the popular conditional auto-regressive model from the both perspectives of parameter estimation and spatial process capturing. A real life data on the vitamin A supplement coverage among postpartum women in Bangladesh is then analyzed for demonstration of the method. The existing divisional clustering behavior of vitamin A supplement coverage in Bangladesh is identified more accurately by the proposed approach than that by the conditional auto-regressive model.
url https://www.ajs.or.at/index.php/ajs/article/view/1097
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