Modeling contagion in policy systems
Authored by Herschel F Thomas
Date Published: 2017
DOI: 10.1016/j.cogsys.2017.03.003
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Abstract
Scholars of the policy process offer compelling explanations for
patterns in the aggregate-level attention of policymakers. Yet, we have
little systematic understanding of the day-to-day behavior of these
individuals. Why does a given policymaker, on a given day, decide to
focus on one pressing issue while ignoring many others? I approach this
question from a cognitive systems perspective and argue that
policymakers are highly interdependent actors who are subject to
cognitive limits and have incentives to closely monitor the political
environment. These tendencies contribute to the emergence of widespread
herd behavior in their individual attention to policy issues, a
phenomenon I conceptualize as `issue contagion.' I then utilize the
methods of computational social science to build an agentbased
simulation model of policymakers' issue attention over time. I also
outline three empirical expectations regarding the density of
communication ties between actors, the presence of segmented groups
(e.g. political parties and coalitions), and the rate at which actors
take cues from one another. Through a series of sensitivity tests, I
document the internal validity of the model and show that incremental
changes in network density, segmentation, and cue-taking all generate
clear and visible trends in the frequency of issue contagion events. (C)
2017 Elsevier B.V. All rights reserved.
Tags
Simulation
Agent-based modeling
Dynamics
bubbles
Contagion
Politics
Issue attention
Agenda-setting
Legislative cue-taking