Modeling Poverty Data in Indonesia with Spatial Hierarchy Structure Using HLM, GWR, and HGWR Methods

Cintia Septemberini, Muhammad Nur Aidi, Anang Kurnia
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Abstract

Poverty causes the majority of the Indonesian population to face challenges in fulfilling basic needs such as clothing, food, and shelter. The factors that play a role in determining the poverty rate in Indonesia tend to vary in each province; this is due to the diverse conditions resulting from spatial heterogeneity. However, poverty in Indonesia is not only influenced by factors from various regions but also by the conditions of the districts/cities within them. Districts/cities within a province form a spatial hierarchy structure. Therefore, in this study, the Hierarchical Linear Model (HLM), Geographically Weighted Regression (GWR), and Hierarchical and Geographically Weighted Regression (HGWR) methods were applied to determine the best model among the three methods in analyzing the factors affecting the poverty rate in Indonesia with a spatial hierarchy structure. The results of the analysis show that the HGWR method is the best model compared to HLM and GWR, as evidenced by the higher R-squared value of 0.8004 compared to HLM and GWR. Based on the HGWR model, most of the local estimators for population dependency ratio (G1), adjusted per capita expenditure (G2), and economic growth rate (G3) showed significance in provinces located in eastern Indonesia. In addition, the fixed effects and random effects estimators, namely the percentage of households without access to electricity (X1), the ratio of per capita normative consumption to net product (X2), and the percentage of households without access to clean water (X3), also have a significant influence on the poverty rate in Indonesia.
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使用 HLM、GWR 和 HGWR 方法,利用空间层次结构对印度尼西亚的贫困数据建模
贫困导致印尼大多数人口在满足衣、食、住等基本需求方面面临挑战。决定印尼贫困率的因素往往因省而异;这是由于空间异质性导致条件各不相同。然而,印尼的贫困现象不仅受到各地区因素的影响,还受到各地区内各县/市条件的影响。省内各县/市形成了空间层次结构。因此,本研究采用了层次线性模型法(HLM)、地理加权回归法(GWR)和层次与地理加权回归法(HGWR),以确定三种方法中的最佳模型,分析影响印尼空间层次结构贫困率的因素。分析结果表明,与 HLM 和 GWR 相比,HGWR 方法是最佳模型,其 R 方值为 0.8004,高于 HLM 和 GWR。基于 HGWR 模型,人口抚养比(G1)、调整后人均支出(G2)和经济增长率(G3)的大部分本地估计值在印尼东部省份都显示出显著性。此外,固定效应和随机效应估计因子,即用不上电的家庭百分比(X1)、人均标准消费与净产品的比率(X2)和用不上清洁水的家庭百分比(X3),对印尼的贫困率也有显著影响。
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