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Relationship between volatility and spatial autocorrelation in real estate prices. Lo Y.F. Daniel Department of Real Estate and Construction The University of Hong Kong daniello@hku.hk. Spatial Autocorrelation in Real Estate Prices. Similar to Serial Autocorrelation in Time Series
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Relationship between volatility and spatial autocorrelation in real estate prices Lo Y.F. Daniel Department of Real Estate and Construction The University of Hong Kongdaniello@hku.hk
Spatial Autocorrelation in Real Estate Prices • Similar to Serial Autocorrelation in Time Series • Housing prices show regular pattern over space, despite detailed hedonic specification. • Consequences: • OLS estimates of the t-test values no long reliable • OLS estimates are no longer relatively efficient • Research Foci: • Detect spatial autocorrelation • Improving the estimation reliability by different “correction models”
Take it for granted • The underlying cause(s) remain unknown
Possible Causes of Spatial Autocorrelation of Real Estate Prices • Omitted Variable(s) in Hedonic Equation • Ignorance of the researchers. • Some hedonic variables are not easily observable/quantifiable, e.g. noise pollution, air pollution • But they are likely be spatially correlated. • Resulting in spatial autocorrelation of housing prices!
Possible Causes of Spatial Autocorrelation of Real Estate Prices • Building/Construction Characteristics • Building in close proximity tends to be developed at the same time • Share similar architecture designs, structural features, age, height, facilities, amenities etc. • Compatibility Law: ensure communities remain environmentally intact over time. • ->>>>Spatially autocorrelation
Possible Causes of Spatial Autocorrelation of Real Estate Prices • Information Search Conjecture • Real Estate is inefficient • Heterogeneous • Traders have incomplete and imperfect information • Traded in decentralized market • Search around the neighborhood for recent transaction information (i.e. comparables) spatial autocorrelation of housing prices. • In addition, when market is more volatile, traders would rely less on comparables weakening spatial linkages of housing prices.
Our Empirical Tests Equation 1: P: log of transaction price S: structural characteristics N: Neighborhood characteristics S*N: Interaction term of S and N T: Time Dummies
Equation 2: • Pit: Property i transacted at time t • PJ, t-m: Property j transacted at time t-m • W is a spatial weight measuring the spatio-temporal “closeness” of each pair of transaction data. • D: distance between property i and j • Mi,j: time between Pi and Pj
Equation 3: • V: Volatility of housing prices
Over 160 000 geo-referenced transaction data • Approx. 1.29 M population • Approx. 5000 residential buildings • 1997 to 2008 • Hong Kong Island • Relatively volatile • Information availability, highly efficient!
Conclusion • Real Estate prices are spatially autocorrelated • The degree of spatial autocorrelation is dependent on market volatility • When the market is more volatile> smaller the spatial autocorrelation!
Implications • A better theoretical understanding • Should include volatility into the hedonic equation • Improve valuation accuracy and efficiency
The End • Thank you! • Please send comments to daniello@hku.hk