自然景观的美化价值

IF 2 3区 经济学 Q2 BUSINESS, FINANCE
Timothy L. Hamilton, Erik B. Johnson
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引用次数: 0

摘要

我们估计城市环境中自然景观的非市场价值。这些观点包含了公园和开放空间中常见的自然区域的美学,并提供了以前的研究无法从公园和开放空间的邻近性中分离出来的物业评估方面。我们将机器学习技术整合到谷歌街景图像中,以识别城市环境中的自然景观。我们发现,正资本化率与家庭对公园类房产的看法有关。估算对各种规格都是可靠的,包括从邻近物业的新开发中确定的模型,以及有助于排除更广泛的社区环境影响的伪造测试。从政策的角度来看,我们的研究结果为开放空间的最佳大小、位置和形状提供了信息。此外,用于构建我们的视图变量的机器学习方法为其他非市场估值研究提供了潜在的强大工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The amenity value of natural views
We estimate nonmarket values for natural views in an urban setting. These views contain the aesthetics of natural areas commonly found in public parks and open space, and offer an aspect of property valuation that previous research is unable to disentangle from proximity to parks and open space. We incorporate machine learning techniques on Google Street View images to identify natural views in an urban setting. We find positive capitalization rates associated with household views of park‐like properties. Estimates are robust to a variety of specifications, including models that are identified off of new developments on neighboring properties and falsification tests that help to rule out the effect of a broader neighborhood environment. From a policy perspective, our results inform as to the optimal size, location, and shape of open space. Furthermore, machine learning methods used in the construction of our view variable provide a potentially powerful tool for other nonmarket valuation studies.
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来源期刊
CiteScore
4.00
自引率
13.60%
发文量
44
期刊介绍: As the official journal of the American Real Estate and Urban Economics Association, Real Estate Economics is the premier journal on real estate topics. Since 1973, Real Estate Economics has been facilitating communication among academic researchers and industry professionals and improving the analysis of real estate decisions. Articles span a wide range of issues, from tax rules to brokers" commissions to corporate real estate including housing and urban economics, and the financial economics of real estate development and investment.
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