利用空间机器学习分析影响和预测就业密度的因素——以韩国首尔为例

IF 3.3 3区 地球科学 Q1 GEOGRAPHY Geographical Analysis Pub Date : 2023-07-12 DOI:10.1111/gean.12371
Jane Ahn, Youngsang Kwon
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引用次数: 0

摘要

首尔的就业密度存在地区差异。考虑到交通拥堵和就业与住房不平衡等问题,了解就业密度的空间模式并找出关键影响因素对于确定未来城市空间结构的变化非常重要。本研究分析了首尔各地区的就业密度,以得出重要的预测因素。我们研究了就业密度的空间模式,并根据一般模型和空间异质性模型评估了空间和非空间因素的影响。为了预测就业密度的分布,我们使用了两种统计模型(即普通最小二乘回归模型[OLS]和地理加权回归模型[GWR])和两种机器学习模型(即随机森林模型[RF]和地理加权随机森林模型[GWRF])。结果表明,主要的影响因素是企业商业公司的数量、主要设施和景点设施的数量、地铁站的可达性、商业区和工业区的面积以及与商业区的距离。
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Analyzing the Factors that Affect and Predict Employment Density Using Spatial Machine Learning: The Case Study of Seoul, South Korea

There is a regional disparity in the employment density of Seoul. Considering problems such as traffic congestion and jobs-housing imbalance, it is important to understand the spatial pattern of employment density and identify key influencing factors to determine the changes in the future urban spatial structure. This study analyzed employment density in each region of Seoul to derive important predictors. We examined the spatial patterns of employment density and evaluated the effects of spatial and nonspatial factors based on the general model and the spatial heterogeneity model. To predict the distribution of employment density, we used two statistical models (i.e., ordinary least squares regression [OLS] and geographically weighted regression [GWR] models) and two machine learning models (i.e., the random forest [RF] and geographically weighted random forest [GWRF] models). The results showed that the key influencing factors were the number of corporate business companies, number of main and attraction facilities, accessibility to subway stations, areas of commercial and industrial districts, and distance to business districts.

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来源期刊
CiteScore
8.70
自引率
5.60%
发文量
40
期刊介绍: First in its specialty area and one of the most frequently cited publications in geography, Geographical Analysis has, since 1969, presented significant advances in geographical theory, model building, and quantitative methods to geographers and scholars in a wide spectrum of related fields. Traditionally, mathematical and nonmathematical articulations of geographical theory, and statements and discussions of the analytic paradigm are published in the journal. Spatial data analyses and spatial econometrics and statistics are strongly represented.
期刊最新文献
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