What factors contribute to uneven suburbanisation? Predicting the number of migrants from Warsaw to its suburbs with machine learning

IF 2.2 4区 经济学 Q2 ECONOMICS
Honorata Bogusz, Szymon Winnicki, Piotr Wójcik
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引用次数: 0

Abstract

Abstract This article investigates the spatially uneven migration from Warsaw to its suburban municipalities. We report a novel approach to modelling suburbanisation: several linear and nonlinear predictive models are applied, and Explainable Artificial Intelligence methods are used to interpret the shape of relationships between the dependent variable and the most important regressors. The support vector regression algorithm is found to yield the most accurate predictions of the number of migrants to the suburbs of Warsaw. In addition, we find that migrants choose wealthier and more urbanised municipalities that offer better institutional amenities and a shorter driving time to Warsaw’s city centre.

Abstract Image

哪些因素导致了不均衡的郊区化?用机器学习预测从华沙到郊区的移民数量
摘要:本文研究了华沙向其郊区城市迁移的空间不均衡。我们报告了一种模拟郊区化的新方法:应用了几种线性和非线性预测模型,并使用可解释的人工智能方法来解释因变量和最重要回归量之间的关系形状。研究发现,支持向量回归算法对华沙郊区移民人数的预测最为准确。此外,我们发现移民会选择更富裕、城市化程度更高的城市,这些城市提供更好的制度设施,而且到华沙市中心的车程更短。
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来源期刊
CiteScore
3.60
自引率
11.80%
发文量
90
期刊介绍: The Annals of Regional Science presents high-quality research in the interdisciplinary field of regional and urban studies. The journal publishes papers which make a new or substantial contribution to the body of knowledge in which the spatial dimension plays a fundamental role, including regional economics, resource management, location theory, urban and regional planning, transportation and communication, population distribution and environmental quality. The Annals of Regional Science is the official journal of the Western Regional Science Association.
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