Do School Districts Affect NYC House Prices? Identifying Border Differences Using a Bayesian Nonparametric Approach to Geographic Regression Discontinuity Designs.
收藏DataCite Commons2021-09-29 更新2024-07-28 收录
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https://tandf.figshare.com/articles/dataset/Do_School_Districts_Affect_NYC_House_Prices_Identifying_Border_Differences_Using_a_Bayesian_Nonparametric_Approach_to_Geographic_Regression_Discontinuity_Designs_/12912705/1
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What is the premium on house price for a particular school district? To estimate this in New York City we use a novel implementation of a Geographic Regression Discontinuity Design (GeoRDD) built from Gaussian processes regression (kriging) to model spatial structure. With a GeoRDD, we specifically examine price differences along borders between “treatment” and “control” school districts. GeoRDDs extend RDDs to multivariate settings; location is the forcing variable and the border between school districts constitutes the discontinuity threshold. We first obtain a Bayesian posterior distribution of the price difference function, our nominal treatment effect, along the border. We then address nuances of having a functional estimand defined on a border with potentially intricate topology, particularly when defining and estimating causal estimands of the local average treatment effect (LATE). We test for nonzero LATE with a calibrated hypothesis test with good frequentist properties, which we further validate using a placebo test. Using our methodology, we identify substantial differences in price across several borders. In one case, a border separating Brooklyn and Queens, we estimate a statistically significant 20% higher price for a house on the more desirable side. We also find that geographic features can undermine some of these comparisons.
提供机构:
Taylor & Francis
创建时间:
2020-09-03



