大数据
城市化
数据科学
城市规划
分析
城市研究
智慧城市
公司治理
城市政策
计算机科学
政治学
计算机安全
工程类
地理
建筑
经济
数据挖掘
土木工程
管理
法学
考古
物联网
作者
Jens Kandt,Michael Batty
出处
期刊:Cities
[Elsevier BV]
日期:2020-11-20
卷期号:109: 102992-102992
被引量:292
标识
DOI:10.1016/j.cities.2020.102992
摘要
The analysis of big data is deemed to define a new era in urban research, planning and policy. Real-time data mining and pattern detection in high-frequency data can now be carried out at a large scale. Novel analytical practices promise smoother decision-making as part of a more evidence-based and smarter urbanism, while critical voices highlight the dangers and pitfalls of instrumental, data-driven city making to urban governance. Less attention has been devoted to identifying the practical conditions under which big data can realistically contribute to addressing urban policy problems. In this paper, we discuss the value and limitations of big data for long-term urban policy and planning. We first develop a theoretical perspective on urban analytics as a practice that is part of a new smart urbanism. We identify the particular tension of opposed temporalities of high-frequency data and the long durée of structural challenges facing cities. Drawing on empirical studies using big urban data, we highlight epistemological and practical challenges that arise from the analysis of high-frequency data for strategic purposesand formulate propositions on the ways in which urban analytics can inform long-term urban policy.
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