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Open Space in US Urban Areas: Where Might There Be Too Much or Too Little of a Good Thing?

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  • JunJie Wu
  • Jialing Yu
  • Walid Oueslati

Abstract

The considerable variations in the share of open space across US cities raise two questions: What determines the optimal amount of open space in an urban area? Is the existing amount socially optimal? To address these questions, we first process data to measure the amount of natural, preserved, and developable open space in US metropolitan areas. We then develop a framework to characterize the optimal amount of open space in an urban area. This framework reveals that the geography-imposed land scarcity, price elasticities of housing demand and supply, economies of scale in municipal services provision, and marginal benefits from open-space conservation are the key parameters that determine the optimal amount of open space. By implementing the framework empirically, we find that most US metropolitan areas—97.39% according to our preferred model—have insufficient open space in their developed areas and additional open-space conservation in those areas will improve social welfare.

Suggested Citation

  • JunJie Wu & Jialing Yu & Walid Oueslati, 2023. "Open Space in US Urban Areas: Where Might There Be Too Much or Too Little of a Good Thing?," Journal of the Association of Environmental and Resource Economists, University of Chicago Press, vol. 10(2), pages 315-352.
  • Handle: RePEc:ucp:jaerec:doi:10.1086/721756
    DOI: 10.1086/721756
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    Cited by:

    1. Moeltner, Klaus & Puri, Roshan & Johnston, Robert J., 2023. "Regression and matching in hedonic analysis: Empirical guidance for estimator choice," 2023 Annual Meeting, July 23-25, Washington D.C. 335807, Agricultural and Applied Economics Association.

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