地理学中的大数据(R)演变:过去二十年的复杂性建模

IF 3.1 1区 社会学 Q1 GEOGRAPHY
Liliana Perez, Raja Sengupta
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引用次数: 0

摘要

数据和统计以及计算系统的使用预示着地理学定量革命的开始。20 世纪 90 年代末,仿真模型(蜂窝自动机和基于代理的模型)开始使用,不到 20 年前,复杂性理论和建模的本体论和认识论也已确定。然而,我们正在进入一个新时代,传感器定期收集和更新大量时空数据。我们将这种 "大数据 "定义为以足够大的数量(超过目前最大的个人硬盘的存储容量)收集的地理定位数据,这些数据至少每天更新一次,数据来源多样,格式各异,通常无需对其准确性进行验证。随后,我们通过广泛的文献综述(按应用领域细分)发现,过去二十年来,复杂性仿真模型的使用呈指数级增长,但也注意到最近的增长速度有所放缓。此外,我们还注意到建模人员在利用大数据校准和验证模型方面存在差距,我们将其归因于数据可用性问题。我们认为,如果能够妥善处理某些限制因素和问题,大数据可以极大地促进仿真建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Big Data (R)evolution in Geography: Complexity Modelling in the Last Two Decades

Big Data (R)evolution in Geography: Complexity Modelling in the Last Two Decades

The use of data and statistics along with computational systems heralded the beginning of a quantitative revolution in Geography. Use of simulation models (Cellular Automata and Agent-Based Models) followed in the late 1990s, with ontology and epistemology of complexity theory and modelling being defined a little less than two decades ago. We are, however, entering a new era where sensors regularly collect and update large amounts of spatio-temporal data. We define this ‘Big Data’ as geolocated data collected in sufficiently high volume (exceeding storage capacities of the largest personal hard drives currently available), that is updated at least daily, from a variety of sources in different formats, often without recourse to verification of its accuracy. We then identify the exponential growth in the use of complexity simulation models in the past two decades via an extensive literature review (broken down by application area), but also notice a recent slowdown. Further, a gap in the utilisation of Big Data by modellers to calibrate and validate their models is noted, which we attribute to data availability issues. We contend that Big Data can significantly boost simulation modelling, if certain constraints and issues are managed properly.

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来源期刊
Geography Compass
Geography Compass GEOGRAPHY-
CiteScore
6.00
自引率
6.50%
发文量
61
期刊介绍: Unique in its range, Geography Compass is an online-only journal publishing original, peer-reviewed surveys of current research from across the entire discipline. Geography Compass publishes state-of-the-art reviews, supported by a comprehensive bibliography and accessible to an international readership. Geography Compass is aimed at senior undergraduates, postgraduates and academics, and will provide a unique reference tool for researching essays, preparing lectures, writing a research proposal, or just keeping up with new developments in a specific area of interest.
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