机器学习模拟城市化:新兴形式综述

IF 7.1 1区 地球科学 Q1 ENVIRONMENTAL STUDIES
Mueller Maya , Hoque Simi , Hamil Pearsall
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引用次数: 0

摘要

绅士化是一个复杂而又因地制宜的过程,涉及到建筑环境和社区社会结构的变化,往往会导致弱势社区流离失所。机器学习(ML)已成为一种强大的预测工具,它能够规避方法论上的挑战,而这些挑战一直阻碍着研究人员对城市化进行可靠的预测。此外,用于景观特征评估或深度绘图的计算机视觉 ML 算法现在可以捕捉与城市化引起的再开发相关的更广泛的建筑指标。这些新颖的 ML 应用有望迅速增进我们对城市化的理解,并提高我们将学术研究成果转化为对社区和利益相关者更有成效的指导的能力,但伴随着这一突飞猛进的发展而来的是陡峭的学习曲线。本文旨在弥合这一鸿沟,概述了最新进展,并提供了一个可供各学术领域研究人员使用的可操作模板。作为次要重点,本综述介绍了用于城市化模型的可解释人工智能(XAI)工具,并就将黑盒模型应用于人类系统时出现的细微挑战展开了讨论。摘要:"城市化 "是一个复杂而又因地制宜的过程,它涉及建筑环境和社区社会结构的变化,往往会导致弱势社区流离失所。机器学习(ML)已成为一种强大的预测工具,它能够规避方法论上的挑战,而这些挑战一直阻碍着研究人员对城市化进行可靠的预测。此外,用于景观特征评估或深度绘图的计算机视觉 ML 算法现在可以捕捉与城市化引起的再开发相关的更广泛的建筑指标。这些新颖的 ML 应用有望迅速增进我们对城市化的理解,并提高我们将学术研究成果转化为对社区和利益相关者更有成效的指导的能力,但伴随着这一突飞猛进的发展而来的是陡峭的学习曲线。本文旨在弥合这一鸿沟,概述了最新进展,并提供了一个可供各学术领域研究人员使用的可操作模板。作为次要重点,本综述介绍了用于城市化模型的可解释人工智能(XAI)工具,并就将黑箱模型应用于人类系统时出现的细微挑战展开了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning to model gentrification: A synthesis of emerging forms

Gentrification is a complex and context-specific process that involves changes in the built environment and social fabric of neighborhoods, often resulting in the displacement of vulnerable communities. Machine Learning (ML) has emerged as a powerful predictive tool that is capable of circumventing the methodological challenges that historically held back researchers from producing reliable forecasts of gentrification. Additionally, computer vision ML algorithms for landscape character assessment, or deep mapping, can now capture a wider range of built metrics related to gentrification-induced redevelopment. These novel ML applications promise to rapidly progress our understandings of gentrification and our capacity to translate academic findings into more productive direction for communities and stakeholders, but with this sudden development comes a steep learning curve. The current paper aims to bridge this divide by providing an overview of recent progress and an actionable template of use that is accessible for researchers across a wide array of academic fields. As a secondary point of emphasis, the review goes over Explainable Artificial Intelligence (XAI) tools for gentrification models and opens up discussion on the nuanced challenges that arise when applying black-box models to human systems. Abstract: Gentrification is a complex and context-specific process that involves changes in the built environment and social fabric of neighborhoods, often resulting in the displacement of vulnerable communities. Machine Learning (ML) has emerged as a powerful predictive tool that is capable of circumventing the methodological challenges that historically held back researchers from producing reliable forecasts of gentrification. Additionally, computer vision ML algorithms for landscape character assessment, or deep mapping, can now capture a wider range of built metrics related to gentrification-induced redevelopment. These novel ML applications promise to rapidly progress our understandings of gentrification and our capacity to translate academic findings into more productive direction for communities and stakeholders, but with this sudden development comes a steep learning curve. The current paper aims to bridge this divide by providing an overview of recent progress and an actionable template of use that is accessible for researchers across a wide array of academic fields. As a secondary point of emphasis, the review goes over Explainable Artificial Intelligence (XAI) tools for gentrification models and opens up discussion on the nuanced challenges that arise when applying black-box models to human systems.

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来源期刊
CiteScore
13.30
自引率
7.40%
发文量
111
审稿时长
32 days
期刊介绍: Computers, Environment and Urban Systemsis an interdisciplinary journal publishing cutting-edge and innovative computer-based research on environmental and urban systems, that privileges the geospatial perspective. The journal welcomes original high quality scholarship of a theoretical, applied or technological nature, and provides a stimulating presentation of perspectives, research developments, overviews of important new technologies and uses of major computational, information-based, and visualization innovations. Applied and theoretical contributions demonstrate the scope of computer-based analysis fostering a better understanding of environmental and urban systems, their spatial scope and their dynamics.
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