揭示社区形态:利用数据分析实现城市地区的智能治理

IF 3.9 2区 社会学 Q1 URBAN STUDIES Journal of Urban Management Pub Date : 2022-06-01 DOI:10.1016/j.jum.2022.05.005
Alon Sagi , Avigdor Gal , Daniel Czamanski , Dani Broitman
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引用次数: 3

摘要

城市学者在理解家庭与其直接环境之间的相互关系方面取得了巨大进展,这是建立高效城市管理系统的一种手段。但是,从城市管理的角度来看,依赖长期固定的地理区域作为基本数据收集是一个问题。由于不断变化的偏好、支付意愿、地点选择和物理发展,现代城市地区处于不断变化的状态。在这种不断变化的背景下,什么是“社区”的最合适的定义,定义为在特定(和临时)城市配置中的小而相对同质的区域?本文为越来越多的文献在城市研究和住房子市场的社区划分中使用数据分析工具做出了贡献,利用了英格兰和威尔士在很长一段时间内房地产交易的大数据。研究结果揭示了有机城市特征的重要性和刚性几何定义的弊端。他们还强调了使用深度机器学习(ML)工具(如人工神经网络(ANN))以及传统方法的重要性。该论文对城市治理的贡献在于提出了一个智能和动态的系统,旨在确定在特定时期和情况下最适合城市管理的区域。建议的框架可以定期实施,有助于定义具有较大差异的同质空间单元(社区),从而设计适合每个空间单元的城市政策。
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Uncovering the shape of neighborhoods: Harnessing data analytics for a smart governance of urban areas

Urban scholars have made great advances to understand the reciprocal relations between households and their immediate environments as a means for the creation of efficient urban administrative systems. However, from an urban management perspective, reliance on geographical areas fixed for long periods of time as basic data collection constitutes a problem. Modern urban areas are in a permanent state of flux because of changing preferences, willingness to pay, location choices, and physical development. In this constantly changing context, what is the most appropriate delimitation of a “neighborhood”, defined as a small and relatively homogeneous area in a certain (and temporary) urban configuration? This paper contributes to the growing literature on the use of data analytic tools in urban studies and neighborhood delimitation in housing sub-markets, exploiting big data on real-estate transactions in England and Wales during a long period of time. The results shed light on the importance of organic urban features and the drawbacks of rigid geometric definitions. They also highlight the importance of the usage of deep Machine Learning (ML) tools such as Artificial Neural Network (ANN), alongside with traditional methods. The paper's contribution to urban governance is the suggestion of a smart and dynamic system aimed at defining the most appropriate areas for urban management given a specific period and situation. The suggested framework can be implemented periodically, helping to define homogeneous spatial units (neighborhoods) with large variances among them, allowing for designing urban policies tailored to each one of them.

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来源期刊
CiteScore
9.50
自引率
4.90%
发文量
45
审稿时长
65 days
期刊介绍: Journal of Urban Management (JUM) is the Official Journal of Zhejiang University and the Chinese Association of Urban Management, an international, peer-reviewed open access journal covering planning, administering, regulating, and governing urban complexity. JUM has its two-fold aims set to integrate the studies across fields in urban planning and management, as well as to provide a more holistic perspective on problem solving. 1) Explore innovative management skills for taming thorny problems that arise with global urbanization 2) Provide a platform to deal with urban affairs whose solutions must be looked at from an interdisciplinary perspective.
期刊最新文献
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