300 Cities - An Exploration in Characterizing US Cities

Abstract

The goal of the 300-Cities Project is to support IRS policy decisions by finding a small number of city clusters, where the cities within each cluster will respond similarly to IRS interventions. This report describes two types of analyses based on U.S. Census 2000 data. The first is an agent-class analysis. In this analysis city clustering operations are based on the correspondence of population profiles for pairs of cities. Extensive effort using this analysis framework in conjunction with the SAS statistical package demonstrates that although the framework is conceptually straightforward, it is computationally impractical and conceptually impoverished. The second analysis framework, the city-matching analysis, combines city summary and population heterogeneity metrics with information access constraints and taxpayer categories to create a city-matching index for each pair of cities. The city-matching analysis thus shifts the basis of analysis from a city's population profile to its information diffusion characteristics, and provides "hooks" to IRS classification schemes to make the findings more actionable. City clustering operations in this framework are based on city-matching indices, which were analyzed by traditional social network analysis techniques using the Organizational Risk Analyzer (ORA). Although the issue of how best to integrate the various components of the city-match index remain unresolved, exploratory results show promise by yielding actionable city clusters. The city clusters, however, only account for 95 of the 297 cities in the Census 2000 data. Together, the two analysis frameworks raise questions as to whether canonical city types exist.

Open PDF

Document Details

Document Type
Technical Report
Publication Date
Jun 01, 2008
Accession Number
ADA500866

Entities

People

  • Kathleen Carley
  • Michael K. Martin
  • Neal Altman

Organizations

  • Carnegie Mellon University

Tags

DTIC Thesaurus Topics

  • Coding
  • Colorado
  • Computer Programming
  • Computer Science
  • Computers
  • Data Analysis
  • Data Sets
  • Education
  • Families (Human)
  • Geographic Regions
  • Lessons Learned
  • Low Density
  • New York
  • Simulations
  • Social Networks
  • United States
  • Urban Areas

Readers

  • Systems Analysis and Design
  • Theoretical Analysis.
  • Urban Planning and Geography.