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Activity-space segregation: Understanding social divisions in space and time.

机译:活动空间隔离:了解时空上的社会分化。

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摘要

This dissertation offers a new theoretical and methodological framework for understanding segregation in spatio-temporal terms as a separation of activity spaces, the spaces people move through as they go about their daily activities. The framework is a set of indexes with which multiple dimensions of activity-space segregation can be measured and compared across cities. The indexes are designed to capture socially relevant information about differences in the places people frequent, the people with whom they come into contact, and the nature of their movement. In designing the indexes, the dissertation extends the existing areal unit indexes of residential segregation, draws on an early formulation of White's spatial proximity index, and identifies existing measures of individual activity space from the geography and ecology literature. For each index, the dissertation develops an estimator that may be used to draw inferences from sample data, and it evaluates the performance of the estimator at different sample sizes and under different geographic and demographic conditions. To do this, it relies on a combination of high resolution activity-space trajectories collected from volunteers all over the world through a mobile phone application, and simulated trajectories of the full populations of two U.S. cities. The dissertation concludes that the proposed areal unit measures of activity-space segregation may be estimated with minimal bias using coarse trajectory data but require large samples of people and the implementation of a bootstrap bias correction technique. The proposed extension of White's spatial proximity index, on the other hand, may be estimated without bias using coarse trajectory data from relatively small samples of people. The proposed measures of individual activity spaces require high resolution trajectory data, but may be estimated without bias using relatively small samples of people.
机译:本文为时空隔离提供了一个新的理论和方法框架,将隔离理解为活动空间的分离,即人们在进行日常活动时所经过的空间。该框架是一组指标,通过这些指标可以测量和比较城市间活动空间隔离的多个维度。这些索引旨在捕获与社会相关的信息,这些信息涉及人们经常去的地方,与他们接触的人以及他们的运动性质方面的差异。在设计指标时,本文扩展了居民隔离的现有单位面积指数,借鉴了怀特空间邻近指数的早期公式,并从地理和生态文献中确定了个体活动空间的现有度量。对于每个索引,论文开发了一个估计器,该估计器可用于从样本数据中得出推论,并评估在不同样本量以及不同地理和人口条件下该估计器的性能。为此,它依赖于通过移动电话应用程序从世界各地的志愿者那里收集的高分辨率活动空间轨迹与模拟的两个美国城市全部人口的轨迹的组合。论文得出的结论是,可以使用粗略的轨迹数据以最小的偏差来估计所建议的活动空间隔离的单位面积度量,但是需要大量的样本并且需要使用自举偏差校正技术。另一方面,使用来自相对较小的人的样本的粗略轨迹数据,可以在没有偏差的情况下估计White的空间接近性指数的拟议扩展。拟议的单个活动空间的度量需要高分辨率的轨迹数据,但是可以使用相对较小的人员样本进行估计而不会产生偏差。

著录项

  • 作者

    Palmer, John R.B.;

  • 作者单位

    Princeton University.;

  • 授予单位 Princeton University.;
  • 学科 Sociology Demography.;Sociology Public and Social Welfare.;Sociology General.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 150 p.
  • 总页数 150
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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