数据一夫多妻:城市时空数据集之间的多-多关系

F. Chirigati, Harish Doraiswamy, T. Damoulas, J. Freire
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引用次数: 64

摘要

从城市环境中收集数据的能力日益增强,再加上政府对开放的推动,导致了覆盖城市各个方面的大量时空数据集的可用性。发现这些数据集之间的关系可以产生新的见解,使领域专家不仅可以测试,还可以产生假设。然而,发现这些关系是困难的。首先,两个数据集之间的关系可能只发生在特定的位置和/或时间段。其次,数据集的绝对数量和规模,加上数据可用的不同空间和时间尺度,从索引、查询到分析,在所有方面都提出了计算挑战。最后,区分有意义的关系和虚假的关系是很重要的。为了应对这些挑战,我们提出了数据一夫多妻制,这是一个可扩展的基于拓扑的框架,允许用户查询时空数据集之间的统计显著关系。我们使用300多个时空城市数据集进行了实验评估,结果表明我们的方法在识别有趣的关系方面具有可扩展性和有效性。
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Data Polygamy: The Many-Many Relationships among Urban Spatio-Temporal Data Sets
The increasing ability to collect data from urban environments, coupled with a push towards openness by governments, has resulted in the availability of numerous spatio-temporal data sets covering diverse aspects of a city. Discovering relationships between these data sets can produce new insights by enabling domain experts to not only test but also generate hypotheses. However, discovering these relationships is difficult. First, a relationship between two data sets may occur only at certain locations and/or time periods. Second, the sheer number and size of the data sets, coupled with the diverse spatial and temporal scales at which the data is available, presents computational challenges on all fronts, from indexing and querying to analyzing them. Finally, it is non-trivial to differentiate between meaningful and spurious relationships. To address these challenges, we propose Data Polygamy, a scalable topology-based framework that allows users to query for statistically significant relationships between spatio-temporal data sets. We have performed an experimental evaluation using over 300 spatial-temporal urban data sets which shows that our approach is scalable and effective at identifying interesting relationships.
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