Econometric Models of Real Estate Prices with Prior Information. Mixed Estimation

Author:

Doszyń Mariusz1

Affiliation:

1. Institute of Economics and Finance , University of Szczecin , Poland

Abstract

Abstract The purpose of this paper is to estimate econometric models with sample and prior information. Prices of land property for residential development in Szczecin are modeled (the price level was determined for 2018). Modeling property prices only based on sample data generates numerous problems. Transaction databases from local real estate markets often contain a small number of observations. Properties are frequently similar, which results in low variability of property characteristics, and thus – low efficiency of parameter estimators. In such a situation, the impact of some features cannot be estimated from the sample data. As a solution to this problem, the paper proposes econometric models that consider prior information. This information can be, for example, in the form of property feature weights proposed by experts. The prior information will be expressed in the form of stochastic restrictions imposed on the model parameters. In the simulation experiment, the predictive power of mixed estimation models is compared with two kind of models: OLS models and model with only prior information. It turned out that mixed estimation results are superior with regard to formal criteria and predictive abilities.

Publisher

Walter de Gruyter GmbH

Reference27 articles.

1. Barańska, A., & Łuczak, A. (2007). Comparing the results of function model estimation for the prediction of real estate market values in additive and multiplicative form. Geomatics and Environmental Engineering, 1(3), 19–35.

2. Cellmer, R., Cichulska, A., & Bełej, M. (2020). Spatial Analysis of Housing Prices and Market Activity with the Geographically Weighted Regression. ISPRS International Journal of Geo-Information, 9(6), 380. https://doi.org/10.3390/ijgi9060380

3. Dell, G. (2017). Regression, Critical Thinking, and the Valuation Problem Today. The Appraisal Journal, 85(3), 217–230.

4. Doszyń, M. (red. n.). (2020a). System kalibracji macierzy wpływu atrybutów w szczecińskim algorytmie masowej wyceny nieruchomości. WNUS. Szczecin [Doszyń, M. (red. n.) (2020a). Calibration system of attributes influence matrix in Szczecin mass real estate valuation algorithm. WNUS. Szczecin]

5. Doszyń, M. (2020b). Algorithm of real estate mass appraisal with inequality restricted least squares (IRLS) estimation. Journal of European Real Estate Research, 13(2), 161–179. https://doi.org/10.1108/JERER-11-2019-0040

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