一种新的时空事件设置序列相似性度量:方法开发与案例研究

Q3 Social Sciences
Fuyu Xu, K. Beard
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引用次数: 0

摘要

检查事件环境或环境(更准确地说,是设置)的相似性为分析事件序列提供了额外的见解,因为它提供了有关上下文和可能影响事件序列的潜在共同因素的信息。本文提出了一种新的事件设置序列相似性度量方法,该方法涉及事件发生的空间和时间。虽然对时空事件序列的相似性度量进行了研究,但尚未对事件序列的设置和设置序列进行研究。在建模事件设置序列时,我们考虑空间和时间尺度来定义设置的边界,并将动态变量与静态变量结合在一起。使用基于矩阵的表示和扩展的Jaccard索引,我们开发了新的相似性度量,允许使用所有变量数据类型。我们成功地将这些相似性度量与其他多元统计分析方法结合在一个案例研究中,该研究涉及与同一监测站相关的设置序列和污染事件序列,验证了一个假设,即更相似的时空设置或设置序列可能产生更多相似的事件或事件序列。综上所述,所开发的相似性测量方法在案例研究之外具有广泛的应用范围,可用于其他学科背景和地理环境。它们为研究人员了解不同因素及其与时空事件序列发生相对应的动力学提供了有力的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Similarity Measure of Spatiotemporal Event Setting Sequences: Method Development and Case Study
Examining the similarity of event environments or surroundings—more precisely, settings—provides additional insight in analyzing event sequences, as it provides information about the context and potential common factors that may have influenced them. This article proposes a new similarity measure for event setting sequences, which involve the space and time in which events occur. While similarity measures for spatiotemporal event sequences have been studied, the settings and setting sequences have not yet been studied. While modeling event setting sequences, we consider spatial and temporal scales to define the bounds of the setting and incorporate dynamic variables alongside static variables. Using a matrix-based representation and an extended Jaccard index, we developed new similarity measures that allow for the use of all variable data types. We successfully used these similarity measures coupled with other multivariate statistical analysis approaches in a case study involving setting sequences and pollution event sequences associated with the same monitoring stations, which validate the hypothesis that more similar spatial-temporal settings or setting sequences may generate more similar events or event sequences. In conclusion, the developed similarity measures have wide application beyond the case study to other disciplinary contexts and geographical settings. They offer researchers a powerful tool for understanding different factors and their dynamics corresponding to occurrences of spatiotemporal event sequences.
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来源期刊
Human Geographies
Human Geographies Social Sciences-Geography, Planning and Development
CiteScore
1.10
自引率
0.00%
发文量
7
审稿时长
8 weeks
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