Estimating the Gains from New Rail Transit Investment: A Machine Learning Tree Approach

Seungwoo Chin, Matthew E. Kahn, H. Moon
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引用次数: 9

Abstract

Urban rail transit investments are expensive and irreversible. Since people differ with respect to their demand for trips, their value of time, and the types of real estate they live in, such projects are likely to offer heterogeneous benefits to residents of a city. Using the opening of a major new subway in Seoul, we contrast hedonic estimates based on multivariate hedonic methods with a machine learning approach that allows us to estimate these heterogeneous effects. While a majority of the "treated" apartment types appreciate in value, other types decline in value. We explore potential mechanisms. We also cross-validate our estimates by studying what types of new housing units developers build in the treated areas close to the new train lines.
估算新的轨道交通投资收益:一种机器学习树方法
城市轨道交通投资昂贵且不可逆转。由于人们对旅行的需求、对时间的价值和所居住的房地产类型不同,这些项目可能会给城市居民带来不同的好处。以首尔新开通的一条主要地铁为例,我们将基于多元享乐方法的享乐估计与机器学习方法进行了对比,后者允许我们估计这些异质效应。虽然大多数“经过处理”的公寓类型都在升值,但其他类型的价值却在下降。我们探索潜在的机制。我们还通过研究开发商在靠近新铁路线的处理区域建造什么类型的新住宅单元来交叉验证我们的估计。
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