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Contribution to Book
Data and Analytics for Neighborhood Development: Smart Shrinkage Decision Modeling in Baltimore, Maryland
Planning Support Systems and Smart Cities (2015)
  • Michael P Johnson, Jr., University of Massachusetts - Boston
  • Justin Hollander, Tufts University
  • Eliza D Whiteman, University of Pennsylvania
Abstract
Many older cities in the United States confront the problem of long-term declines in population and economic activity resulting in blighted conditions that make conventional revitalization initiatives unlikely to succeed. Smart shrinkage, a planning approach that emphasizes alternative land uses while preserving quality of life, offers a way for cities to remain desirable places to live and work. However, there is little research on empirical methods to support planning decisions consistent with smart shrinkage. We present results from two studies with planners from the City of Baltimore that provide novel insights regarding ways in which planners can perform vacant property redevelopment using methods from data analytics and decision science. This study provides a foundation for practitioners to make better use of large volumes of data describing blighted communities, accommodate diverse attitudes about policy and planning responses to blight, and judiciously apply advanced methods in data analysis and decision models.
Keywords
  • Smart shrinkage,
  • decision models,
  • vacancy,
  • data analytics
Publication Date
July, 2015
Editor
Stan Geertman, Joe Ferreira, Robert Goodspeed, John Stillwell
Publisher
Springer
ISBN
978-3-319-18367-1
Citation Information
Michael P Johnson, Justin Hollander and Eliza D Whiteman. "Data and Analytics for Neighborhood Development: Smart Shrinkage Decision Modeling in Baltimore, Maryland" 1Heidelberg, GermanyPlanning Support Systems and Smart Cities (2015) p. 61 - 76
Available at: http://works.bepress.com/michael_johnson/62/