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A new approach to the space–time analysis of big data: application to subway traffic data in Seoul

机译:大数据时空分析的新方法:在首尔地铁交通数据中的应用

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Abstract A prevalent type of big data is in the form of space–time measurements. Cyclostationary empirical orthogonal function (CSEOF) analysis is introduced as an efficient and valuable technique to interpret space–time structure of variability in a big dataset. CSEOF analysis is demonstrated to be a powerful tool in understanding the space–time structure of variability, when data exhibits periodic statistics in time. As an example, CSEOF analysis is applied to the hourly passenger traffic on Subway Line #2 of Seoul, South Korea during the period of 2010–2017. The first mode represents the weekly cycle of subway passengers and captures the majority (~?97%) of the total variability. The corresponding loading vector exhibits a typical weekly pattern of subway passengers as a function of time and the locations of subway stations. The associated principal component time series shows that there are two occasions of significant reduction in the amplitude of the weekly activity in each year; these reductions are associated with two major holidays—lunar New Year and Fall Festival (called Chuseok in Korea). The second and third modes represent daily contrasts in a week and are associated with taking extra days off before or after holidays. The fourth mode exhibits an interesting upward trend, which represents a general decrease in the number of subway passengers during weekdays except for Wednesday and an increase over the weekends.
机译:摘要大数据的一种普遍形式是时空测量。循环平稳经验正交函数(CSEOF)分析是一种有效且有价值的技术,可用于解释大数据集中变异性的时空结构。当数据表现出定期的周期性统计信息时,证明CSEOF分析是理解时空结构的强大工具。例如,将CSEOF分析应用于2010年至2017年期间,韩国首尔地铁2号线的每小时客运量。第一种模式代表地铁乘客的每周周期,并捕获总变异性的大部分(约97%)。相应的负荷向量显示出地铁乘客每周的典型时间随时间和地铁站位置的变化。相关的主成分时间序列表明,每年都有两次机会显着减少每周活动的幅度。这些减少与两个主要的假期相关联-农历新年和秋季节(在韩国称为中秋节)。第二和第三种模式代表一周中的每日对比,并与节假日前后放假有关。第四种模式呈现出有趣的上升趋势,这表示工作日(周三除外)中的地铁乘客数量普遍减少,而周末则有所增加。

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