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The HoneyComb Paradigm for Research on Collective Human Behavior
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Cities: Complexity, theory and history.

Scott G Ortman1,2, José Lobo3, Michael E Smith4

  • 1Department of Anthropology, University of Colorado Boulder, Boulder, Colorado, United States of America.

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Summary
This summary is machine-generated.

Urban science reveals that cities are complex systems with underlying structures. Settlement Scaling Theory explains how population size relates to urban properties across historical and present-day cities.

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Area of Science:

  • Urban science
  • Complex systems analysis
  • Social network analysis

Background:

  • Urban science aims to develop general theories of urbanization.
  • Cities are conceptualized as complex systems exhibiting variation and structure.
  • Understanding urbanization requires accounting for historical and contemporary settlements.

Observation:

  • Settlements are viewed as social interaction networks within physical spaces.
  • Settlement Scaling Theory (SST) predicts relationships between settlement properties and population size.
  • Empirical data from past and present cities are analyzed.

Findings:

  • Both historical and contemporary settlement data align with SST predictions.
  • Population and area relationships in cities are explained by SST.
  • Baseline infrastructural area is identified as a key urban system property.

Implications:

  • SST provides a framework for understanding urban system dynamics.
  • Historical perspective is crucial for revealing fundamental urban structures.
  • Predictive urban theories are valuable even when data deviate from models.