GEOGRAPHICALLY WEIGHTED PANEL REGRESSION (GWPR) MODEL FOR POVERTY DATA IN WEST JAVA PROVINCE 2019-2021

Ramadhoni Nasri, Nurul Gusriani, Nursanti Anggriani
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Abstract

The problem of poverty in West Java shows a pattern that tends to be concentrated in adjacent areas, indicating spatial heterogeneity in the problem. On the other hand, poverty in West Java also shows an increasing trend from year to year so that dynamic changes occur in various regions. From this situation, it is necessary to know the factors that affect poverty spatially using panel data. One way is to model the poverty problem with the Geographically Weighted Panel Regression (GWPR) model. The GWPR model is the development of a regression model that combines Geographically Weighted Regression (GWR) with panel data regression assuming a Fixed Effect Model (FEM). The data used in this study are secondary data in the 2019-2021 range from the Central Bureau of Statistics and Open Data Jabar which consists of the dependent variable (Y), namely the percentage of poor people and the independent variable (X), namely the factors that influence the percentage of poverty. The purpose of this study is to produce a GWPR model using the Weighted Least Square (WLS) method with the Tricube adaptive kernel weighting function. By conducting overall and partial testing through the F test and t test, the results show that the model for each location and the factors that influence the percentage of poor people in West Java are different for each location due to spatial variations in the relationship between the independent variable and the dependent variable.
西爪哇省2019-2021年贫困数据的地理加权面板回归(gwpr)模型
西爪哇的贫穷问题显示出一种倾向于集中在邻近地区的格局,表明该问题的空间异质性。另一方面,西爪哇的贫困也呈现逐年增加的趋势,因此各个地区都发生了动态变化。在这种情况下,有必要利用面板数据来了解影响贫困的空间因素。一种方法是用地理加权面板回归(GWPR)模型来模拟贫困问题。GWPR模型是地理加权回归(GWR)和面板数据回归(panel data regression)相结合的回归模型的发展,假设固定效应模型(Fixed Effect model, FEM)。本研究使用的数据是中央统计局和开放数据Jabar在2019-2021年范围内的二次数据,由因变量(Y)即贫困人口百分比和自变量(X)即影响贫困百分比的因素组成。本研究的目的是利用加权最小二乘(WLS)方法与Tricube自适应核加权函数建立GWPR模型。通过F检验和t检验进行整体检验和局部检验,结果表明,由于自变量与因变量关系的空间差异,每个地区的模型和影响西爪哇贫困人口百分比的因素在每个地区都是不同的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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