社会与空间种族隔离:基于大尺度空间网络数据的种族隔离分析框架

J. Blumenstock, Lauren Fratamico
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引用次数: 35

摘要

虽然种族隔离在决定许多国家的发展轨迹方面起着重要作用,但对种族隔离动态的经验措施仍处于初级阶段。在本文中,我们开发了一个新的计算框架来建模和测量来自大规模数字数据新来源的细粒度分离模式。该框架改进了先前的工作,提供了一种方法,将隔离分解为以前的工作无法分离的两种类型:社会隔离,如在人与人之间的互动中观察到的,以及空间隔离,如由个人在物理位置的共同存在所决定的。因此,我们的主要贡献是开发一套可用于使用通用空间网络数据研究分离的计算和定量方法。第二个贡献是详细讨论了这种方法在研究发展中国家种族隔离方面的优势、劣势和影响,在这些国家,种族分裂是常见的,但关于种族隔离的数据经常受到偏见和错误的困扰。最后,为了演示如何在实践中使用这一框架,并说明社会隔离和空间隔离之间的差异,我们使用来自南亚一个大型发展中国家单个城市的数据进行了一系列诊断测试。我们开发的案例研究是基于来自移动电话网络的匿名数据,但该框架可以很容易地推广到来自Twitter、社交媒体和网络传感器等来源的广泛的空间网络数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social and spatial ethnic segregation: a framework for analyzing segregation with large-scale spatial network data
While ethnic segregation plays an important role in determining the development trajectories of many countries, empirical measures of the dynamics of segregation remain rudimentary. In this paper, we develop a new computational framework to model and measure fine-grained patterns of segregation from novel sources of large-scale digital data. This framework improves upon prior work by providing a method for decomposing segregation into two types that previous work has been unable to separate: social segregation, as observed in interactions between people, and spatial segregation, as determined by the co-presence of individuals in physical locations. Our primary contribution is thus to develop a set of computational and quantitative methods that can be used to study segregation using generic spatial network data. A secondary contribution is to discuss in detail the strengths, weaknesses, and implications of this approach for studying segregation in developing countries, where ethnic divisions are common but data on segregation is often plagued by issues of bias and error. Finally, to demonstrate how this framework can be used in practice, and to illustrate the differences between social and spatial segregation, we run a series of diagnostic tests using data from a single city in a large developing country in South Asia. The case study we develop is based on anonymized data from a mobile phone network, but the framework can generalize easily to a broad class of spatial network data from sources such as Twitter, social media, and networked sensors.
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