Interpreting traffic dynamics using ubiquitous urban data

Fei Wu, Hongjian Wang, Z. Li
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引用次数: 64

Abstract

Given a large collection of urban datasets, how can we find their hidden correlations? For example, New York City (NYC) provides open access to taxi data from year 2012 to 2015 with about half million taxi trips generated per day. In the meantime, we have a rich set of urban data in NYC including points-of-interest (POIs), geo-tagged tweets, weather, vehicle collisions, etc. Is it possible that these ubiquitous datasets can be used to explain the city traffic? Understanding the hidden correlation between external data and traffic data would allow us to answer many important questions in urban computing such as: If we observe a high traffic volume at Madison Square Garden (MSG) in NYC, is it because of the regular peak hour or a big event being held at MSG? If a disaster weather such as a hurricane or a snow storm hits the city, how would the traffic be affected? Most of existing studies on traffic dynamics focus only on traffic data itself and do not seek for external datasets to explain traffic. In this paper, we present our results in attempts to understand taxi traffic dynamics in NYC from multiple external data sources. We use four real-world ubiquitous urban datasets, including POIs, weather, geo-tagged tweets, and collision records. To address the heterogeneity of ubiquitous urban data, we present carefully-designed feature representations for these datasets. Our analysis suggests that POIs can well describe the regular traffic patterns. In addition, geo-tagged tweets can be used to explain irregular traffic caused by big events, and weather may account for abnormal traffic drops.
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利用无处不在的城市数据解释交通动态
给定大量的城市数据集,我们如何找到它们隐藏的相关性?例如,纽约市(NYC)提供了从2012年到2015年的出租车数据开放访问,每天产生约50万辆出租车。与此同时,我们在纽约市拥有丰富的城市数据集,包括兴趣点(POIs)、地理标记推文、天气、车辆碰撞等。有没有可能这些无处不在的数据集可以用来解释城市交通?了解外部数据和交通数据之间隐藏的相关性将使我们能够回答城市计算中的许多重要问题,例如:如果我们观察到纽约麦迪逊广场花园(MSG)的高流量,这是因为常规高峰时段还是MSG举办了大型活动?如果一个灾难性的天气,如飓风或暴风雪袭击城市,交通会受到怎样的影响?现有的交通动力学研究大多只关注交通数据本身,而没有寻求外部数据集来解释交通。在本文中,我们展示了我们的结果,试图从多个外部数据源了解纽约市的出租车交通动态。我们使用了四个真实世界中无处不在的城市数据集,包括poi、天气、地理标记的推文和碰撞记录。为了解决无处不在的城市数据的异质性,我们为这些数据集提出了精心设计的特征表示。我们的分析表明,poi可以很好地描述常规流量模式。此外,地理标记推文可以用来解释大事件引起的不正常流量,天气可能解释流量异常下降。
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