How diverse can measures of segregation be? Results from Monte Carlo simulations of an agent-based model
Authored by Daniel Arribas-Bel, Peter Nijkamp, Jacques Poot
Date Published: 2016
DOI: 10.1177/0308518x16653402
Sponsors:
NORFACE Research Programme on Migration
New Zealand Ministry of Business Innovation and Employment (MBIE)
Platforms:
Python
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
http://darribas.org/diversity_abm/code.html
Abstract
Cultural diversity is a complex and multi-faceted concept. Commonly used
quantitative measures of the spatial distribution of culturally defined
groups-such as segregation, isolation or concentration indexes-have been
designed to capture just one feature of this distribution. The strengths
and weaknesses of such measures under varying demographic, geographic
and behavioral conditions can only be comprehensively assessed
empirically. This has been rarely done in the case of multigroup
cultural diversity. This paper aims to fill this gap and to provide
evidence on the empirical properties of various segregation indexes by
means of Monte Carlo replications of agent-based modelling simulations
under widely varying assumptions. Schelling's classical segregation
model is used as the theoretical engine to generate patterns of spatial
clustering. The data inputs include the initial population, the assumed
geography, the number and shares of various cultural groups, and their
preferences with respect to co-location. Our Monte Carlo replications of
agent-based modelling data generating process produces output maps that
enable us to assess the sensitivity of the various measures of
segregation to parameter assumptions by means of response surface
analysis. We find that, as our simulated city becomes more diverse, stable residential location equilibria require the preference for
co-location with one's own group to be not much more than the group
share of the smallest demographic minority. When equilibria exist, the
values of the various segregation measures are strongly dependent on the
composition of the population across cultural groups, the assumed
preferences and the assumed geography. Index values are generally
non-decreasing in increasing preference for within-group co-location.
More diverse populations yield-for given preferences and geography-a
greater degree of spatial clustering. The sensitivity of segregation
measures to underlying conditions suggests that meaningful analysis of
the impact of segregation requires spatial panel data modelling.
Tags
Dynamics
Schelling Model
residential segregation
Neighborhood racial segregation
Ethnic-preferences
Manufacturing-industries
Geographic concentration