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Spatial Market Inefficiency in Housing Market: A Spatial Quantile Regression Approach
by
Bera, Anil K
, Chae, Jiyoung
in
Efficiency
/ Efficient markets
/ Households
/ Houses
/ Housing market
/ Housing prices
/ Time series
/ Volatility
2024
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Do you wish to request the book?
Spatial Market Inefficiency in Housing Market: A Spatial Quantile Regression Approach
by
Bera, Anil K
, Chae, Jiyoung
in
Efficiency
/ Efficient markets
/ Households
/ Houses
/ Housing market
/ Housing prices
/ Time series
/ Volatility
2024
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Spatial Market Inefficiency in Housing Market: A Spatial Quantile Regression Approach
Journal Article
Spatial Market Inefficiency in Housing Market: A Spatial Quantile Regression Approach
2024
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Overview
This paper empirically tests housing market efficiency in the spatial dimension by using the spatial autoregressive conditional heteroskedastic (ARCH) and spatial quantile regression models. The tests were conducted in terms of both housing returns and squared returns (volatility). The sale price data used is from Cook County residential MLS for the years 2010–2016. The main findings are that housing returns are not spatially correlated but squared returns are spatially correlated, and the spatial dependence of squared returns seems to be stronger for higher squared return quantiles.
Publisher
Springer Nature B.V
Subject
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