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Published in: The Journal of Real Estate Finance and Economics 1-2/2020

24-07-2019

Time-Geographically Weighted Regressions and Residential Property Value Assessment

Authors: Jeffrey P. Cohen, Cletus C. Coughlin, Jeffrey Zabel

Published in: The Journal of Real Estate Finance and Economics | Issue 1-2/2020

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Abstract

In this study, we develop and apply a new methodology for obtaining accurate and equitable property value assessments. This methodology adds a time dimension to the Geographically Weighted Regressions (GWR) framework, which we call Time-Geographically Weighted Regressions (TGWR). That is, when generating assessed values, we consider sales that are close in time and space to the designated unit. We think this is an important improvement of GWR since this increases the number of comparable sales that can be used to generate assessed values. Furthermore, it is likely that units that sold at an earlier time but are spatially near the designated unit are likely to be closer in value than units that are sold at a similar time but farther away geographically. This is because location is such an important determinant of house value. We apply this new methodology to sales data for residential properties in 50 municipalities in Connecticut for 1994–2013 and 145 municipalities in Massachusetts for 1987–2012. This allows us to compare results over a long time period and across municipalities in two states. We find that TGWR performs better than OLS with fixed effects and leads to less regressive assessed values than OLS. In many cases, TGWR performs better than GWR that ignores the time dimension. In at least one specification, several suburban and rural towns meet the IAAO Coefficient of Dispersion cutoffs for acceptable accuracy.

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Footnotes
1
The MAE is the mean of the absolute difference of the estimated and true house values divided by the true house value.
 
2
We also have OLS results on a town-by town basis, including year fixed effects. Due to the large volume of output, these OLS results for each of the municipalities are available from the authors upon request.
 
3
Cohen and Zabel (forthcoming) tried various specifications for the OLS version using the MA dataset, so here we settled on the preferred one from that study.
 
4
The Connecticut data for bathrooms has one variable that is the sum of bathrooms and half bathrooms (counted as 0.5 a bathroom) whereas the Massachusetts data includes separate variables for full bathrooms and half bathrooms.
 
5
We recognize that there are formal procedures, such as using cross validation, to choose the optimal bandwidth. For example, see Fotheringham et al. (2015). In implementing Time GWR at the city level, the selection of the optimal bandwidth, which is likely to differ across cities, is an important step.
 
Literature
go back to reference Bidanset, P. E., & Lombard, J. R. (2014a). The effect of kernel and bandwidth specification in geographically weighted regression models on the accuracy and uniformity of mass real estate appraisal. Journal of Property Tax Assessment & Administration, 11(3), 5–14. Bidanset, P. E., & Lombard, J. R. (2014a). The effect of kernel and bandwidth specification in geographically weighted regression models on the accuracy and uniformity of mass real estate appraisal. Journal of Property Tax Assessment & Administration, 11(3), 5–14.
go back to reference Bidanset, P. E., & Lombard, J. R. (2014b). Evaluating spatial model accuracy in mass real estate appraisal: A comparison of geographically weighted regression and the spatial lag model. Cityscape, 16(3), 169–182. Bidanset, P. E., & Lombard, J. R. (2014b). Evaluating spatial model accuracy in mass real estate appraisal: A comparison of geographically weighted regression and the spatial lag model. Cityscape, 16(3), 169–182.
go back to reference Borst, R. A., & McCluskey, W. J. (2008). Using geographically weighted regression to detect housing submarkets: Modeling large-scale spatial variations in value. Journal of Property Tax Assessment & Administration, 5(1), 21–21. Borst, R. A., & McCluskey, W. J. (2008). Using geographically weighted regression to detect housing submarkets: Modeling large-scale spatial variations in value. Journal of Property Tax Assessment & Administration, 5(1), 21–21.
go back to reference Cleveland, W. S., & Devlin, S. J. (1988). Locally weighted regression: An approach to regression analysis by local fitting. Journal of the American Statistical Association, 83(403), 596–610.CrossRef Cleveland, W. S., & Devlin, S. J. (1988). Locally weighted regression: An approach to regression analysis by local fitting. Journal of the American Statistical Association, 83(403), 596–610.CrossRef
go back to reference Cohen, J. P., Osleeb, J. P., & Yang, K. (2014). Semi-parametric regression models and economies of scale in the presence of an endogenous variable. Regional Science and Urban Economics, 49, 252–261.CrossRef Cohen, J. P., Osleeb, J. P., & Yang, K. (2014). Semi-parametric regression models and economies of scale in the presence of an endogenous variable. Regional Science and Urban Economics, 49, 252–261.CrossRef
go back to reference Cohen, J. P., Coughlin, C. C., & Clapp, J. M. (2017). Local polynomial regressions versus OLS for generating location value estimates. The Journal of Real Estate Finance and Economics, 54(3), 365–385.CrossRef Cohen, J. P., Coughlin, C. C., & Clapp, J. M. (2017). Local polynomial regressions versus OLS for generating location value estimates. The Journal of Real Estate Finance and Economics, 54(3), 365–385.CrossRef
go back to reference Fotheringham, A. S., Crespo, R., & Yao, J. (2015). Geographical and temporal weighted regression (GTWR). Geographical Analysis, 47, 431–452.CrossRef Fotheringham, A. S., Crespo, R., & Yao, J. (2015). Geographical and temporal weighted regression (GTWR). Geographical Analysis, 47, 431–452.CrossRef
go back to reference International Association of Assessing Officers (IAAO) (2003). Standard on Automated Valuation Models (AVMs). Chicago: International association of assessing officers. International Association of Assessing Officers (IAAO) (2003). Standard on Automated Valuation Models (AVMs). Chicago: International association of assessing officers.
go back to reference International Association of Assessing Officers (IAAO). (2013). Standard on Ratio Studies. Kansas City: International Association of Assessing Officers. International Association of Assessing Officers (IAAO). (2013). Standard on Ratio Studies. Kansas City: International Association of Assessing Officers.
go back to reference Lockwood, T., & Rossini, P. (2011). Efficacy in modelling location within the mass appraisal process. Pacific Rim Property Research Journal, 17(3), 418–442.CrossRef Lockwood, T., & Rossini, P. (2011). Efficacy in modelling location within the mass appraisal process. Pacific Rim Property Research Journal, 17(3), 418–442.CrossRef
go back to reference McCluskey, W. J., McCord, M., Davis, P. T., Haran, M., & McIlhatton, D. (2013). Prediction accuracy in mass appraisal: A comparison of modern approaches. Journal of Property Research, 30(4), 239–265.CrossRef McCluskey, W. J., McCord, M., Davis, P. T., Haran, M., & McIlhatton, D. (2013). Prediction accuracy in mass appraisal: A comparison of modern approaches. Journal of Property Research, 30(4), 239–265.CrossRef
go back to reference McMillen, D. P. (1996). One hundred fifty years of land values in Chicago: A nonparametric approach. Journal of Urban Economics, 40(1), 100–124.CrossRef McMillen, D. P. (1996). One hundred fifty years of land values in Chicago: A nonparametric approach. Journal of Urban Economics, 40(1), 100–124.CrossRef
go back to reference McMillen, D. P., & Redfearn, C. L. (2010). Estimation and hypothesis testing for nonparametric hedonic house price functions. Journal of Regional Science, 50(3), 712–733.CrossRef McMillen, D. P., & Redfearn, C. L. (2010). Estimation and hypothesis testing for nonparametric hedonic house price functions. Journal of Regional Science, 50(3), 712–733.CrossRef
go back to reference Meese, R., & Wallace, N. (1991). Nonparametric estimation of dynamic hedonic price models and the construction of residential housing price indices. Real Estate Economics, 19(3), 308–332.CrossRef Meese, R., & Wallace, N. (1991). Nonparametric estimation of dynamic hedonic price models and the construction of residential housing price indices. Real Estate Economics, 19(3), 308–332.CrossRef
go back to reference Silverman, B. W. (1986). Density Estimation for Statistical Analysis. Silverman, B. W. (1986). Density Estimation for Statistical Analysis.
go back to reference Wooldridge, J. M. (2016). Introductory econometrics (6th ed.). Boston: Cengage Learning. Wooldridge, J. M. (2016). Introductory econometrics (6th ed.). Boston: Cengage Learning.
Metadata
Title
Time-Geographically Weighted Regressions and Residential Property Value Assessment
Authors
Jeffrey P. Cohen
Cletus C. Coughlin
Jeffrey Zabel
Publication date
24-07-2019
Publisher
Springer US
Published in
The Journal of Real Estate Finance and Economics / Issue 1-2/2020
Print ISSN: 0895-5638
Electronic ISSN: 1573-045X
DOI
https://doi.org/10.1007/s11146-019-09718-8

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