Predicting Gentrification in England: A Data Primitive Approach

IF 2.1 Q3 ENVIRONMENTAL SCIENCES Urban science (Basel, Switzerland) Pub Date : 2023-06-13 DOI:10.3390/urbansci7020064
J. Gray, Lisa Buckner, A. Comber
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引用次数: 1

Abstract

Geodemographic classifications are useful tools for segmenting populations and have many applications but are not suitable for measuring neighbourhood change over time. There is a need for an approach that uses data of a higher spatiotemporal resolution to capture the fundamental dimensions of processes driving local changes. Data primitives are measures that capture the fundamental drivers of neighbourhood processes and therefore offer a suitable route. In this article, three types of gentrification are conceptualised, and four key data primitives are applied to capture them in a case study region in Yorkshire, England. These areas are visually validated according to their temporal properties to confirm the presence of gentrification and are then assigned to a high-level gentrification type. Ensemble modelling is then used to predict the presence, type, and temporal properties of gentrification across the rest of England. The results show an alignment of the spatial extent of gentrification types with previous gentrification studies throughout the country but may have made an overprediction in London. The periodicities of (1) residential, (2) rural, and (3) transport-led gentrification also vary throughout the country, but regardless of type, gentrification in areas within close proximity to one another have differing velocities such that they peak and complete within similar times. These temporal findings offer new, more timely tools for authorities in devising schedules of interventions and for understanding the intricacies of neighbourhood change.
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预测英国中产阶级化:一种数据原始方法
大地测量分类是分割种群的有用工具,有很多应用,但不适合测量邻域随时间的变化。需要一种使用更高时空分辨率的数据来捕捉驱动局部变化的过程的基本维度的方法。数据基元是捕捉邻域过程的基本驱动因素的度量,因此提供了一条合适的路线。在本文中,对三种类型的绅士化进行了概念化,并在英国约克郡的一个案例研究区域中应用了四个关键数据原语来捕捉它们。这些区域根据其时间特性进行视觉验证,以确认绅士化的存在,然后分配给高级绅士化类型。然后使用集合建模来预测英格兰其他地区绅士化的存在、类型和时间特性。结果显示,绅士化类型的空间范围与之前全国各地的绅士化研究一致,但可能在伦敦做出了过高的预测。(1)住宅、(2)农村和(3)交通主导的中产阶级化的周期在全国各地也各不相同,但无论类型如何,在彼此紧邻的地区,中产阶级化都有不同的速度,因此它们在相似的时间内达到峰值并完成。这些临时发现为当局制定干预计划和了解社区变化的复杂性提供了新的、更及时的工具。
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来源期刊
CiteScore
4.30
自引率
0.00%
发文量
0
审稿时长
11 weeks
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