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首页> 外文期刊>International Journal of Statistical Distributions and Applications >Spatial Cumulative Probit Model: An Application to Poverty Classification and Mapping
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Spatial Cumulative Probit Model: An Application to Poverty Classification and Mapping

机译:空间累积概率模型:在贫困分类与制图中的应用

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Previous studies on household poverty classification have commonly dichotomized the dependent variable into non-poor or poor, and used binary models. This way, the most extreme categories of poverty, which are usually the main targets of interventions, are not identified. Moreover, expenditure data used to describe poverty is typically collected at several locations over large geographical domains. Local disturbances introduce spatial correlation, implying that global parameters (obtained via independence assumptions of standard statistical methods) cannot adequately describe site-specific conditions of the data. The objective, therefore, is to describe an appropriate method for ordered categorical data collected at geo-referenced locations over large geographical space. To achieve this, a model named Spatial Cumulative Probit Model (SCPM) was proposed. This model classified household poverty in an ordinal spatial framework. Bayesian inference was performed on data sampled by Markov Chain Monte Carlo (MCMC) algorithms. A test of model adequacy show that the SCPM is unbiased and attains a lower misclassification rate of 14.43% than the simple Cumulative Probit (CP) model with misclassification rate of 16.5% that ignores spatial dependence in the data. Overall, 'savannah ecological zone', 'polygamous marriage' and 'rural location' were the most powerful predictors of extreme poverty in Ghana. The prediction map, created by this study, identified positive correlation with respect to 'poor' and 'extremely poor' categories. Results of the model in this study can be considered a category and site-specific report that identifies all levels and sites of poverty for easy targeting, thus, avoiding the blanket approach that prefers the one-fits-it-all solution to the problem of poverty. Analysis was based on the Ghana Living Standards Survey (GLSS 6) dataset.
机译:先前有关家庭贫困分类的研究通常将因变量分为非贫困或贫困,并使用二元模型。这样,通常无法确定最极端的贫困类别(通常是干预的主要目标)。此外,用于描述贫困的支出数据通常是在大型地理区域的多个位置收集的。局部干扰会引入空间相关性,这意味着(通过标准统计方法的独立性假设获得的)全局参数不能充分描述数据的特定地点条件。因此,目的是描述一种用于在大地理空间上的地理参考位置处收集的有序分类数据的适当方法。为了实现这一目标,提出了一种名为空间累积概率模型(SCPM)的模型。该模型按有序的空间框架将家庭贫困分类。贝叶斯推断是对通过Markov Chain Monte Carlo(MCMC)算法采样的数据进行的。对模型适当性的测试表明,与忽略了数据中空间依赖性的简单累积概率(CP)模型(错误分类率为16.5%)相比,SCPM是无偏见的,错误分类率为14.43%。总体而言,“大草原生态区”,“一夫多妻制婚姻”和“农村地区”是加纳极端贫困的最有力预测指标。这项研究创建的预测图确定了与“贫困”和“极端贫困”类别正相关。可以将本研究中模型的结果视为类别和针对特定地点的报告,该报告可以识别所有贫困水平和地点,以便于确定目标,因此避免了一揽子方法,后者倾向于采用“一刀切”的解决方案来解决贫困问题。贫穷。分析基于加纳生活水平调查(GLSS 6)数据集。

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