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An open-source framework for non-spatial and spatial segregation measures: the PySAL segregation module

Renan Xavier Cortes (), Sergio Rey (), Elijah Knaap and Levi John Wolf ()
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Renan Xavier Cortes: University of California
Sergio Rey: University of California
Levi John Wolf: University of Bristol

Journal of Computational Social Science, 2020, vol. 3, issue 1, No 7, 135-166

Abstract: Abstract In human geography and the urban social sciences, the segregation literature typically engages with five conceptual dimensions along which a given society may be considered segregated: evenness, isolation, clustering, concentration and centralization (all of which can incorporate or omit spatial context). Over the last several decades, dozens of segregation indices have been proposed and studied in the literature, each of which is designed to focus on the nuances of a particular dimension, or correct an oversight in earlier work. Despite their increasing proliferation, however, few of these indices remain used in practice beyond their original conception, due in part to complex formulae and data requirements, particularly for indices that incorporate spatial context. Furthermore, existing segregation software typically fails to provide inferential frameworks for either single-value or comparative hypothesis testing. To fill this gap, we develop an open-source Python package designed as a submodule for the Python Spatial Analysis Library, PySAL. This new module tackles the problem of segregation point estimation for a wide variety of spatial and aspatial segregation indices, while providing a computationally based hypothesis testing framework that relies on simulations under the null hypothesis. We illustrate the use of this new library using tract-level census data in two American cities.

Keywords: Open-source; Segregation; PySAL; Spatial analysis (search for similar items in EconPapers)
Date: 2020
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Citations: View citations in EconPapers (2)

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DOI: 10.1007/s42001-019-00059-3

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