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Development And Aplication Of Bayesian Spatial Analysis On Poverty Data In East Java, Indonesia

机译:印度尼西亚东爪哇贫困数据贝叶斯空间分析的发展与应用

摘要

This paper is extracted from the research educational process of M.S level at Bogor Agricultural University, Indonesia. We first created a research group named Geoinformatics on Peverty and then invited some students to join and do research related to spatial statistics and poverty. Poverty is one of the crucial problems in Indonesia which is not easy to be solved. Following a survey held by the Statistics Indonesia in March 2011 showed that there were 30.02 million people or 12.49% of total Indonesian are considered poor. From the statistical point of view, poverty is an interesting topic because there are many problems of spatial data, i.e. spatial autocorrelation, error variance heterogenity, spatial interaction, and other statistical issues. The main objective of the geoinformatics group is to compile and develop spatial statistics applied on poverty allowing spatial effects. Those are GSM (General Spatial Model), SAR (Simultan Autoregressive), CAR (Conditional Autoregressive), SEM (Spatial Error Model), Bayesian SAR, and SAE (Small Area Estimation). The models are implemented on poverty data in East Java, Indonesia. The general results show that the poverty in East Java are related to low education, poor access to clean water, government pro poor programs (health insurance for the poor, subsidized rice for the poor, and poor letter), and improper housing. Statistically, Bayesian SAR slightly perform better than the other spatial regressions. In terms of small area estimation, spatial empirical best linear unbiased prediction (SEBLUP) and empirical Bayesian methods are more efficient than empirical BLUP (EBLUP).
机译:本文摘自印度尼西亚茂物农业大学硕士课程的研究教育过程。我们首先成立了一个名为Peverty的地理信息学研究小组,然后邀请一些学生加入并从事有关空间统计和贫困的研究。贫穷是印度尼西亚不容易解决的关键问题之一。根据印度尼西亚统计局2011年3月进行的一项调查显示,有3002万人被认为是穷人,占印度尼西亚总人口的12.49%。从统计的角度来看,贫困是一个有趣的话题,因为空间数据存在许多问题,即空间自相关,误差方差异质性,空间相互作用以及其他统计问题。地理信息学小组的主要目标是编制和发展适用于贫困的空间统计数据,以产生空间效应。这些是GSM(通用空间模型),SAR(Simultan自回归),CAR(条件自回归),SEM(空间误差模型),贝叶斯SAR和SAE(小面积估计)。这些模型是在印度尼西亚东爪哇省的贫困数据上实现的。总体结果表明,东爪哇省的贫困与教育程度低,获得清洁水的渠道匮乏,政府扶贫计划(为穷人提供医疗保险,为穷人提供大米补贴和穷人书信)以及住房不当有关。从统计上讲,贝叶斯SAR的效果略好于其他空间回归。就小面积估计而言,空间经验最佳线性无偏预测(SEBLUP)和经验贝叶斯方法比经验BLUP(EBLUP)更有效。

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