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Fine-Grained Urban Event Detection and Characterization Based on Tensor Cofactorization

机译:基于张量协因子分解的细粒度城市事件检测与表征

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摘要

Understanding the irregular crowd movement and social activities caused by urban events such as city festivals and concerts can benefit event management and city planning. Although various urban data can be exploited to detect such irregularities, the crowd mobility data (e.g., bike trip records) are usually in a mixed state with several basic patterns (e.g., eating, working, and recreation), making it difficult to separate concurrent events happening in the same region. The social activity data (e.g., social network check-ins) are usually oversparse, hindering the fine-grained characterization of urban events. In this paper, we propose a tensor cofactorization-based data fusion framework for fine-grained urban event detection and characterization leveraging crowd mobility data and social activity data. First, we adopt a nonnegative tensor cofactorization approach to decompose the crowd mobility tensor into several basic patterns, with the help of the auxiliary social activity tensor. We then use a multivariate-outlier-detection-based method to identify irregularities from the decomposed basic patterns and aggregate them to detect and characterize the associated urban events. We evaluate the performance of our framework using real-world bike trip data and check-in data from New York City and Washington, DC, respectively. Results show that by fusing the two types of urban data, our method achieves fine-grained urban event detection and characterization in both cities and consistently outperforms the baselines.
机译:了解城市活动(如城市节日和音乐会)引起的人群不规则移动和社交活动,可以使活动管理和城市规划受益。尽管可以利用各种城市数据来检测此类违规行为,但是人群流动性数据(例如,自行车出行记录)通常处于混合状态,并且具有几种基本模式(例如,进餐,工作和娱乐),因此很难分离并发在同一地区发生的事件。社交活动数据(例如,社交网络签到)通常过于稀疏,从而妨碍了对城市事件的精细描述。在本文中,我们提出了一个基于张量协分解的数据融合框架,用于利用人群流动性数据和社交活动数据进行细粒度的城市事件检测和表征。首先,在辅助社会活动张量的帮助下,我们采用非负张量协分解方法将人群活动性张量分解为几种基本模式。然后,我们使用基于多元离群值检测的方法从分解后的基本模式中识别出违规行为,并将其汇总以检测和表征相关的城市事件。我们分别使用真实的自行车旅行数据和纽约市和华盛顿特区的登机数据来评估框架的性能。结果表明,通过融合两种类型的城市数据,我们的方法可以在两个城市中实现细粒度的城市事件检测和特征描述,并且始终优于基线。

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