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Exploring city social interaction ties in the big data era: Evidence based on location-based social media data from China

机译:探索大数据时代的城市社交互动关系:基于来自中国的基于位置的社交媒体数据的证据

摘要

Location-based social media data is, increasingly, an important facilitator of exploring the movement of goods and people in and between countries across the globe. Typical examples include Twitter, Facebook, Foursquare. As with all social media data outputs, the fundamental value of location-based social media data is for sensing users? space?time trajectories, and thus, makes social media data a new platform for understanding business and social interactions in the spatial context. In large developing and emerging economies with massive social media users via computers and mobile phones, real-time ?geo-tagged? human mobility information from social media data sources are clearly potentially large. In these settings, cyberspaces are often built and expanded with the explicit aim of stimulating digital socioeconomic activities and balancing regional disparities. However, despite intense policy and public enthusiasms, there is virtually no direct evidence on exploring the configuration of urban network patterns by using social media users? mobility flows within a large developing country context. The scarcity of empirical evidence is not surprising, given that mining location-based social media data faces serious identification challenges. First, location-based social media data, as a type of big data resource, are often featured by the dynamic, massive information generated by billions of users across space. In truth, despite of the recent development of intensive-computational geographic information system (GIS) modeling programs, social media data with precise individual-level location information is still extremely large to proceed by using the GIS techniques at multiple geographical scales. Furthermore, conventional GIS-based computational methods cannot directly read the unstructured social media datasets (e.g. words, pictures, videos). Additional big data mining methods are often needed to transform social media data information from unstructured data formats to structured, and ready-to-use spatial datasets. In this paper, we tackle these problems by analysing the configuration of intercity connection patterns in China to provide new evidence to the applications of location-based social media data in urban and regional studies. Our examination of changes in human mobility patterns by months by city-pairs throughout China by months involves many potential stages of big data mining analysis. We stratify cities by core-periphery urban systems, by regions and by calendar months, finding that human mobility flows are not distributed evenly over time and across space. We find larger human mobility flows around the Chinese New Year month and the summer months. Our evidence suggests the significantly heterogeneity patterns of core-periphery urban systems as reflected from real-time human mobility flows. As a baseline, this paper is?for the first time in the literature?to comprehensively measure urban network patterns at a detailed spatial degree (the city-pair level) based on location-based social media data from a large developing country context.
机译:基于位置的社交媒体数据越来越多地成为探索全球各国内部和国家之间货物和人员流动的重要推动者。典型示例包括Twitter,Facebook,Foursquare。与所有社交媒体数据输出一样,基于位置的社交媒体数据的基本价值在于感测用户吗?时空轨迹,从而使社交媒体数据成为理解空间背景下的业务和社交互动的新平台。在大型的发展中和新兴经济体中,通过计算机和手机拥有大量的社交媒体用户,实时“地理标记”?来自社交媒体数据源的人类流动性信息显然可能很大。在这些情况下,网络空间通常是为了刺激数字社会经济活动和平衡地区差异而建立和扩展的。但是,尽管有强烈的政策和公众热情,但实际上没有直接证据表明可以通过使用社交媒体用户来探索城市网络模式的配置吗?流动性是在广大发展中国家的背景下流动的。鉴于基于位置的社交媒体数据的挖掘面临严峻的识别挑战,因此缺乏实证证据不足为奇。首先,基于位置的社交媒体数据作为一种大数据资源,通常以数十亿用户跨空间生成的动态,海量信息为特征。实际上,尽管最近开发了密集计算地理信息系统(GIS)建模程序,但是具有精确的个人级别位置信息的社交媒体数据仍然非常庞大,无法通过在多个地理尺度上使用GIS技术进行。此外,传统的基于GIS的计算方法无法直接读取非结构化社交媒体数据集(例如单词,图片,视频)。为了将社交媒体数据信息从非结构化数据格式转换为结构化且可立即使用的空间数据集,通常需要其他大数据挖掘方法。在本文中,我们通过分析中国城市间联系模式的配置来解决这些问题,从而为基于位置的社交媒体数据在城市和区域研究中的应用提供新的证据。我们对中国各地按城市对每个月对每个月对人口流动模式变化的研究涉及大数据挖掘分析的许多潜在阶段。我们通过核心外围城市系统,地区和日历月份对城市进行了分层,发现随着时间和空间的推移,人类的流动并不是均匀分布的。我们发现,在农历新年和夏季月份,人们的流动性增加。我们的证据表明,实时人类流动反映出核心外围城市系统存在明显的异质性模式。作为基线,本文是文献中的第一次,它是基于来自一个大型发展中国家的基于位置的社交媒体数据,在详细的空间度(城市对水平)上全面测量城市网络模式。

著录项

  • 作者

    Wu Wenjie; Wang Jianghao;

  • 作者单位
  • 年度 2015
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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