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Social sensing of urban land use based on analysis of Twitter users’ mobility patterns

机译:基于对Twitter用户移动模式的分析,对城市土地利用进行社会感知

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摘要

A number of recent studies showed that digital footprints around built environments, such as geo-located tweets, are promising data sources for characterizing urban land use. However, challenges for achieving this purpose exist due to the volume and unstructured nature of geo-located social media. Previous studies focused on analyzing Twitter data collectively resulting in coarse resolution maps of urban land use. We argue that the complex spatial structure of a large collection of tweets, when viewed through the lens of individual-level human mobility patterns, can be simplified to a series of key locations for each user, which could be used to characterize urban land use at a higher spatial resolution. Contingent issues that could affect our approach, such as Twitter users’ biases and tendencies at locations where they tweet the most, were systematically investigated using 39 million geo-located Tweets and two independent datasets of the City of Chicago: 1) travel survey and 2) parcel-level land use map. Our results support that the majority of Twitter users show a preferential return, where their digital traces are clustered around a few key locations. However, we did not find a general relation among users between the ranks of locations for an individual—based on the density of tweets—and their land use types. On the contrary, temporal patterns of tweeting at key locations were found to be coherent among the majority of users and significantly associated with land use types of these locations. Furthermore, we used these temporal patterns to classify key locations into generic land use types with an overall classification accuracy of 0.78. The contribution of our research is twofold: a novel approach to resolving land use types at a higher resolution, and in-depth understanding of Twitter users’ location-related and temporal biases, promising to benefit human mobility and urban studies in general.
机译:最近的许多研究表明,围绕建筑环境的数字足迹(如地理位置的推文)是用于表征城市土地利用的有前途的数据源。但是,由于地理位置较大的社交媒体的数量和非结构化性质,因此实现这一目标面临挑战。先前的研究集中于对Twitter数据进行集体分析,从而得出城市土地利用的粗分辨率图。我们认为,从个人层面的人员流动模式的角度来看,大量推文的复杂空间结构可以简化为每个用户的一系列关键位置,这些位置可以用来表征城市土地使用状况。更高的空间分辨率。使用3900万条地理定位推文和芝加哥市的两个独立数据集,系统地调查了可能影响我们方法的潜在问题,例如Twitter用户在其发推文最多的地方的偏见和倾向,包括1)旅行调查和2 )地块级土地利用图。我们的结果支持大多数Twitter用户显示出优惠的回报,他们的数字踪迹聚集在几个关键位置。但是,根据推文的密度,我们并未在用户的位置等级之间与他们的土地使用类型之间建立一般关系。相反,发现在关键位置发推的时间模式在大多数用户中是连贯的,并且与这些位置的土地使用类型显着相关。此外,我们使用这些时间模式将关键位置分类为通用土地利用类型,总体分类精度为0.78。我们的研究有两个方面的贡献:一种以更高的分辨率解决土地使用类型的新颖方法,以及对Twitter用户的位置相关和时间偏见的深入理解,有望从总体上使人类的出行和城市研究受益。

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