区域经济增长:一个空间德宾模型方法

A. Karim
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引用次数: 0

摘要

本研究的目的是确定空间依赖对中爪哇省区域生产总值(GRDP)的影响。空间杜宾模型(Spatial Durbin Model, SDM)是空间自回归模型(Spatial Autoregressive Model, SAR)的发展,是由空间数据结构组成的回归模型。对自变量的分量有一个额外的空间影响,它没有包括在SAR模式中,或通常被称为对自变量的间接影响。这表明SDM相对于SAR具有优势,因为对因变量和自变量都有空间影响,本研究中使用的空间加权矩阵为行归一化二值邻近。本研究使用的数据来自中央爪哇统计局(BPS) 2019年35个区市的数据,其中GRDP为因变量,劳动力、人力资源和道路基础设施为自变量。分析结果表明,AIC值显著优于普通最小二乘(OLS)和SAR模型。SDM结果表明,人力资源具有积极的信号,直接效应为88.5%,间接效应为13.1%。此外,劳动力变量对GRDP的间接影响为22.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regional Economic Growth: A Spatial Durbin Model Approach
The purpose of this study is to determine the effect of spatial dependence on Gross Regional Domestic Product (GRDP) in Central Java Province. Spatial Durbin Model (SDM) is a regression model consisting of a spatial data structure which is the development of the Spatial Autoregressive Model (SAR). There is an additional spatial effect on the component of the independent variable that is not included in the SAR model or commonly referred to as an indirect effect on the independent variable. This indicates that SDM has advantages compared to SAR because there are spatial effects on the dependent and independent variables, the spatial weighted matrix used in this study is row-normalized binary contiguity. The data used in this study is sourced from the Central Java Statistics Agency (BPS) in 2019 for 35 districts and cities, which GRDP as the dependent variable, labor, human resources, and road infrastructure as independent variables. Based on the results of the analysis, the AIC value shows that SDM is significantly better than the ordinary least square (OLS) and SAR models. SDM results show that human resources have a positive sign and a direct effect of 88.5 percent and an indirect effect of 13.1 percent. In addition, the labor variable has an indirect effect on GRDP of 22.2 percent.
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