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Defining Housing Submarkets
Institution:1. Institute of Real Estate and Urban Studies, National University of Singapore, 119613, Singapore;2. Hang Lung Center for Real Estate, Institue of Real Estate, Tsinghua University, Beijing, 1000084, P R China;3. Department of Real Estate and Urban Land Economics, School of Business, University of Wisconsin-Madison, Madison, WI 53706, United States;1. School of Public Administration, Southwest Minzu University, Chengdu 610041, China;2. Business School of Southwest Minzu University, Chengdu 610041, China
Abstract:This paper develops a statistical method for defining housing submarkets. The method is applied using household survey data for Sydney and Melbourne, Australia. First, principal component analysis is used to extract a set of factors from the original variables for both local government area (LGA) data and a combined set of LGA and individual dwelling data. Second, factor scores are calculated and cluster analysis is used to determine the composition of housing submarkets. Third, hedonic price equations are estimated for each city as a whole, fora prioriclassifications of submarkets, and for submarkets defined by the cluster analysis. The weighted mean squared errors from the hedonic equations are used to compare alternative classifications of submarkets. In Melbourne, the classification derived from aKmeans clustering procedure on individual dwelling data is significantly better than classifications derived from all other methods of constructing housing submarkets. In some other cases, the statistical analysis produces submarkets that are better than thea prioriclassification, but the improvement is not significant.
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