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Fast Acceptance by Common Experience: FACE-recognition in Schelling's model of neighborhood segregation

Published online by Cambridge University Press:  01 January 2023

Nathan Berg*
Affiliation:
University of Texas at Dallas
Ulrich Hoffrage
Affiliation:
University of Lausanne, Switzerland
Katarzyna Abramczuk
Affiliation:
Polish Academy of Sciences and University of Warsaw
*
* Address: Prof. Nathan Berg, School of Economic, Political and Policy Sciences (EPPS), University of Texas at Dallas, GR 31 211300, Box 830688, Richardson, TX 75083–0688, USA. Email: nberg@utdallas.edu; Ulrich Hoffrage is in the Faculty of Business and Economics at the University of Lausanne. Katarzyna Abramczuk is in the Institute of Political Studies, Polish Academy of Sciences, and the Institute of Sociology, University of Warsaw. prof.berg@gmail.com.
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Abstract

Schelling (1969, 1971a,b, 1978) observed that macro-level patterns do not necessarily reflect micro-level intentions, desires or goals. In his classic model on neighborhood segregation which initiated a large and influential literature, individuals with no desire to be segregated from those who belong to other social groups nevertheless wind up clustering with their own type. Most extensions of Schelling’s model have replicated this result. There is an important mismatch, however, between theory and observation, which has received relatively little attention. Whereas Schelling-inspired models typically predict large degrees of segregation starting from virtually any initial condition, the empirical literature documents considerable heterogeneity in measured levels of segregation. This paper introduces a mechanism that can produce significantly higher levels of integration and, therefore, brings predicted distributions of segregation more in line with real-world observation. As in the classic Schelling model, agents in a simulated world want to stay or move to a new location depending on the proportion of neighbors they judge to be acceptable. In contrast to the classic model, agents’ classifications of their neighbors as acceptable or not depend lexicographically on recognition first and group type (e.g., ethnic stereotyping) second. The FACE-recognition model nests classic Schelling: When agents have no recognition memory, judgments about the acceptability of a prospective neighbor rely solely on his or her group type (as in the Schelling model). A very small amount of recognition memory, however, eventually leads to different classifications that, in turn, produce dramatic macro-level effects resulting in significantly higher levels of integration. A novel implication of the FACE-recognition model concerns the large potential impact of policy interventions that generate modest numbers of face-to-face encounters with members of other social groups.

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Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
The authors license this article under the terms of the Creative Commons Attribution 3.0 License.
Copyright
Copyright © The Authors [2010] This is an Open Access article, distributed under the terms of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/3.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Figure 0

Figure 1: A single run of the classic Schelling model: Integrated checkerboard (left), random shock in which 20 agents disappear and 5 reappear (center), and end-state environment whose integration has unraveled to a high degree of segregation (right).

Figure 1

Figure 2: Recognition heuristic for classifying neighbors as friends or nonfriends (upper panel), and classifying locations as acceptable or unacceptable (lower panel). How a potential or actual neighbor is classified depends critically on recognition; if recognized, classification as friend or nonfriend depends on acceptability of the neighborhood from which that agent is most recently recognized; if not recognized, classification depends on group identity just as in classic Schelling. To determine whether a potential or actual neighborhood is acceptable, the proportion of friends among all neighbors is compared to the acceptability threshold τ .

Figure 2

Figure 3: Histograms of end-state integration as captured by two dependent variables (Other-type exposure and Contact with at least one other) in six memory treatments. When the memory span is set to zero, the FACE-recognition model reduces to the special case of the classic Schelling model. Memory spans of the previous 1, 2, 5, 10, or 30 rounds are variants of the FACE-recognition model. Unless otherwise stated, the parameter values here and in the following figures are: 8x8 grid, 30 of each type in the initial checkerboard, 20 randomly disappearing, 5 re-appearing, and acceptability thresholds for both types of τ = 1/2.

Figure 3

Figure 4: Histograms of end-state integration when agents have a lower acceptability threshold τ . Parameter values are the same as in Figure 3, except for τ which is set here to 2/5.

Figure 4

Figure 5: Histograms of end-state integration measures as a function of acceptability thresholds (memory span = 5).

Figure 5

Figure 6: Histograms of number of moves to reach convergence, by memory and acceptability threshold τ (memory span = 1).

Figure 6

Figure 7: Histograms of end-state integration showing that the effect of recognition memory on end-state integration increases with neighborhood size (memory span = 5).

Figure 7

Figure 8: Median fraction of post-shock integration preserved in the end-state, indicated by "F” for FACE recognition treatment and "C” for Classic Schelling Model, with 80 percent sample-distribution intervals (memory span = 5). Shock size on the x-axis represents the fraction of the population perturbed away from their respective beginning positions in the perfectly integrated checkerboard.

Figure 8

Figure 9: Median number of agents who are unhappy and thus want to move as a function of time (memory span = 5).

Figure 9

Figure 10: Median other-type exposure as a function of time (memory span = 5).

Figure 10

Figure 11: Made happy by memory: Histograms of end-state number of agents who would have wanted to move in the classic Schelling model but, by using the FACE-recognition heuristic, consider their current neighborhood acceptable.