利用比较方法对马达加斯加塔那那利佛的模式剥夺:利用中尺度和宏观尺度的主成分分析和加权系统进行多维分析

IF 6.5 1区 经济学 Q1 DEVELOPMENT STUDIES
Fenosoa Nantenaina Ramiaramanana , Jacques Teller , Richard Sliuzas , Monika Kuffer
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引用次数: 0

摘要

人口快速增长和全球城市化带来了社会经济挑战,造成了全球南方城市的不平等,例如贫困地区的扩散。本研究旨在开发利用IDEAMAPS框架绘制和表征GS城市城市贫困状况的方法,重点关注家庭、区域和区域连接层面。该方法采用五个领域的23个指标,采用宏观(塔那那利佛城市群)和中观(塔那那利佛城市公社- CUA)尺度的加权系统,以及主成分分析(PCA)和人口加权分析。变量缩减过程评估了在保留解释力的同时简化指标的影响。结果表明,中部和周边地区以及东部和西部社区的贫困程度存在显著的空间差异。等权重系统提供了一个直观的概述,显示53%的社区在宏观尺度上享有特权,而15%的社区高度贫困。在中尺度上,27%的社区处于高度贫困状态,这强调了更精细的空间尺度对揭示局部差异的重要性。PCA降低了数据的复杂性并识别了关键的剥夺维度,但对异常值仍然敏感。人口加权分析揭示了贫困水平与人口密度之间的不一致,强调了在人口密集的社区进行有针对性干预的必要性。变量缩减证实了模型的稳健性,但强调了保留关键变量的重要性。本研究强调需要进行准确、多尺度的评估,为解决城市不平等问题的政策提供信息。未来的研究应结合先进的空间技术、时间动态和其他指标,如治理和环境危害,以完善剥夺分析和指导包容性城市政策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using comparative approaches to model deprivation in Antananarivo, Madagascar: A multidimensional analysis using principal components analysis and weighting system across meso and macro scales
Rapid population growth and global urbanization pose socio-economic challenges, causing inequalities in Global South (GS) cities, such as the proliferation of deprived areas. This study aims to develop methods for mapping and characterizing urban deprivation in GS cities using the IDEAMAPS framework, focusing on household, area, and area-connect levels. The methodology employs 23 indicators across five domains, with a weighting system applied at macro (agglomeration of Antananarivo) and meso (Urban Commune of Antananarivo - CUA) scales, alongside Principal Component Analysis (PCA) and population-weighted analysis. A variable reduction process assessed the impact of simplifying indicators while retaining explanatory power. Results demonstrated significant spatial contrasts in deprivation between central and peripheral areas and eastern and western neighborhoods. The equal weighting system provided an intuitive overview, showing that 53% of neighborhoods were privileged at the macro scale, while 15% were highly deprived. At the meso scale, 27% of neighborhoods were highly deprived, emphasizing the importance of finer spatial scales to uncover localized disparities. PCA reduced data complexity and identified key deprivation dimensions but remains sensitive to outliers. Population-weighted analysis revealed the misalignment between deprivation level and population density, highlighting the need for targeted interventions in densely populated neighborhoods.
Variable reduction confirmed model robustness but underscored the importance of retaining critical variables. This study highlights the need for accurate, multi-scale assessments to inform policies addressing urban inequalities. Future research should integrate advanced spatial techniques, temporal dynamics, and additional indicators, such as governance and environmental hazards, to refine deprivation analyses and guide inclusive urban policies.
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来源期刊
CiteScore
10.50
自引率
10.30%
发文量
151
审稿时长
38 days
期刊介绍: Habitat International is dedicated to the study of urban and rural human settlements: their planning, design, production and management. Its main focus is on urbanisation in its broadest sense in the developing world. However, increasingly the interrelationships and linkages between cities and towns in the developing and developed worlds are becoming apparent and solutions to the problems that result are urgently required. The economic, social, technological and political systems of the world are intertwined and changes in one region almost always affect other regions.
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