MTUP对探索人类流动研究的在线轨迹的影响

Xinyi Liu, Qunying Huang, Zhenlong Li, Meiliu Wu
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引用次数: 7

摘要

社交媒体数据将长期个人旅行活动作为一组时空点(时间序列)进行捕捉,被广泛用于人类流动性研究。代表个体活动的时空点是海量的,除了空间维度外,还需要在时间维度上进行聚集,以显示时间的移动模式。在时间聚集过程中,时间序列被分割成不同的时间层,聚集结果受到四个参数的影响,包括层大小(每个时间层的时间间隔)、起始位置(第一层的开始时间)、两个连续层之间的重叠量和时间序列范围(聚集数据集的时间范围)。不同的参数化导致不同的迁移模式,称为“可修改时间单元问题”(MTUP;关于“可修改面积单位问题”(MAUP)的类比。虽然MTUP的一般效应在以前的研究中得到了很好的检验,但在使用稀疏的社交媒体数据进行轨迹重建时,MTUP往往被忽略。为了填补这一研究空白,本文将探索不同的时间聚合模式(参数化)对在3D地理空间分析系统中使用地理标记推文发现人类移动模式的影响。案例研究表明,在基于稀疏在线足迹检测个人日常代表性(规则)轨迹的过程中,MTUP是重要的。综合分析多个不同参数的聚合结果,可以更好地了解个体的日常出行规律。本研究提出的交互式分析系统和可视化方法可以最大限度地减少MTUP的影响,并有助于避免错误的论点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The impact of MTUP to explore online trajectories for human mobility studies
Social media data which capture long-term personal travel activities as a set of space-time points (time series) become widely used for human mobility study. The space-time points representing individual activities are massive and need aggregation upon time dimension (besides space dimension) to show temporal mobility patterns. During the temporal aggregations, time series are sliced into different temporal layers, and the aggregation results could be impacted by four parameters, including layer size (time interval of each tempoal layer), start placement (the start time of the first layer), amount of overlap between two consecutive layers, and time series extent (temporal scope of the datasets for aggregation). Different parameterizations result in different mobility patterns, known as the "Modifiable Temporal Unit Problem" (MTUP; on the analogy of the "Modifiable Areal Unit Problem" or MAUP). While the general effects of MTUP are well examined in previous studies, MTUP is often ignored in trajectory reconstructions using sparse social media data. To fill this research gap, this paper will explore the impact of different temporal aggregation schemas (parameterizations) on the discovery of human mobility patterns using geo-tagged tweets within a 3D geospatial analytical system. The case study reveals that MTUP is significant during the process of detecting an individual's daily representative (regular) trajectories based on sparse online footprints. Comprehensive analysis on multiple aggregation results with different parameters could improve understanding of an individual's regular daily travel patterns. The interactive analytical system and visualization methods proposed by this study could minimize MTUP impact and help avoid false arguments.
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