Bayesian inference in multivariate spatio-temporal areal models using INLA: analysis of gender-based violence in small areas

被引:0
作者
G. Vicente
T. Goicoa
M. D. Ugarte
机构
[1] Public University of Navarre,Department of Statistics, Computer Science, and Mathematics
[2] Public University of Navarre,InaMat²
[3] Centro Asociado de la UNED,undefined
来源
Stochastic Environmental Research and Risk Assessment | 2020年 / 34卷
关键词
Crimes against women; Dowry deaths; Rapes; Gibbs sampling; Hierarchical Bayesian models; INLA; M-models; WinBUGS;
D O I
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中图分类号
学科分类号
摘要
Multivariate models for spatial count data are currently receiving attention in disease mapping to model two or more diseases jointly. They have been thoroughly studied from a theoretical point of view, but their use in practice is still limited because they are computationally expensive and, in general, they are not implemented in standard software to be used routinely. Here, a new multivariate proposal, based on the recently derived M models for spatial data, is developed for spatio-temporal areal data. The model takes account of the correlation between the spatial and temporal patterns of the phenomena being studied, and it also includes spatio-temporal interactions. Though multivariate models have been traditionally fitted using Markov chain Monte Carlo techniques, here we propose to adopt integrated nested Laplace approximations to speed up computations as results obtained using both fitting techniques were nearly identical. The techniques are used to analyse two forms of crimes against women in India. In particular, we focus on the joint analysis of rapes and dowry deaths in Uttar Pradesh, the most populated Indian state, during the years 2001–2014.
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页码:1421 / 1440
页数:19
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