Research Article
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Year 2020, , 274 - 291, 31.12.2020
https://doi.org/10.17261/Pressacademia.2020.1310

Abstract

References

  • Box, G., & Jenkins, G. (1976). Time series analysis: Forecasting and control. Holden-Day.
  • Box, G., Jenkins, G., & Reinsel, G. (1994). Time series analysis: Forecasting and control. Prentice Hall.
  • Box, G., & Jenkins, G. (1970). Time series analysis: Forecasting and control. Holden-Day.
  • Brown, R. (1959). Statistical forecasting for inventory control. McGraw-Hill.
  • Chin, L., & Fan, G.Z. (2005). Autoregressive analysis of Singapore’s private residential prices. Property Management, 23(4), 257–270.
  • Crawfor, G. W., & Frantantoni, M. C. (2003). Assessing the forecasting performance of regime-switching, ARIMA and GARCH models of house prices. Real Estate Economics, 31(2), 223–243.
  • Gatzlaff, D. H., & Tirtiroglu, D. (1995). Real estate market efficiency: Issues and evidence. Journal of Real Estate Literature, 3(2), 157–189.
  • Dombaycı, Ö. A. (2010). The prediction of heating energy consumption in a model house by using artificial neural networks in Denizli–Turkey. Advances in Engineering Software, 41(2), 141–147.
  • Gao, A., Lin, Z., & Na, C.F. (2009). Housing market dynamics: Evidence of mean reversion and downward rigidity. Journal of Housing Economics, 18(3), 256–266.
  • Gardner, Jr., E.S. (2006). Exponential smoothing: The state of the art—Part II. International Journal of Forecasting, 22(4), 637–666.
  • Gardner, Jr., E.S. (1985). Exponential smoothing: The state of the art. Journal of Forecasting, 4(1), 1–28.
  • Guirguis, H.S., Giannikos, C.I., & Anderson, R.I. (2005). The US housing market: Asset pricing forecasts using time varying coefficients. The Journal of Real Estate Finance and Economics, 30(1), 33–53.
  • Hepşen, A., & Vatansever, M. (2011). Forecasting future trends in Dubai housing market by using Box-Jenkins autoregressive integrated moving average. International Journal of Housing Markets and Analysis, 4(3), 210–223.
  • Holden, K., Peel, D. A., & Thompson, J. L. (1990). Economic forecasting: An introduction. Cambridge University Press.
  • Holt, C.C. (2004). Forecasting seasonal and trends by exponentially weighted moving averages. International Journal of Forecasting 20(1), 5–10.
  • Hui, E. C., & Yue, S. (2006). Housing price bubbles in Hong Kong, Beijing and Shanghai: A comparative study. The Journal of Real Estate Finance and Economics, 33(4), 299–327.
  • Hyndman, R.J., Koehler, A.B., Snyder, R.D., & Grose, S. (2002). A state space framework for automatic forecasting using exponential smoothing methods. International Journal of Forecasting, 18(3), 439–454.
  • Mcgough, T., & Tsolacos, S. (1995). Forecasting commercial rental values using ARIMA models. Journal of Property Valuation and Investment, 13(5), 6–22.
  • Miles, W. (2008). Boom–bust cycles and the forecasting performance of linear and non-linear models of house prices. The Journal of Real Estate Finance and Economics, 36, 249–264.
  • Nelder, J. A., & Wedderburn, R. W. (1972). Generalized linear models. Journal of the Royal Statistical Society: Series A (General), 135(3), 370–384.
  • Ooms, M. (2012). Empirical vector autoregressive modelling. Springer-Verlag Berlin Heidelberg.
  • Öztürk, N., & Fitöz, E. (2012). Türkiye’de konut piyasasının belirleyicileri: Ampirik bir uygulama. Uluslararası Yönetim İktisat ve İşletme Dergisi, 5(10), 21 – 46.
  • Rapach, D.E., & Strauss, J.K. (2009). Differences in housing price forecastability across US states. International Journal of Forecasting, 25(2), 351–372.
  • Selim, H. (2009). Determinants of house prices in Turkey: Hedonic regression versus artificial neural network. Expert Systems with Applications, 36(2), 2843–2852.
  • Shumway, R., & Stoffer, D. (2010). Time Series Analysis and Its Applications: With R Examples (3rd edition). Springer.
  • Stevenson, S. (2007). A comparison of the forecasting ability of ARIMA models. Journal of Property Investment & Finance, 25(3), 223–240.
  • Türkiye Cumhuriyeti Merkez Bankası [TCMB] (2019). Residential property price index. Retrieved August 22, 2019 from https://evds2.tcmb.gov.tr/index.php?/evds/serieMarket/collapse_26/5949/DataGroup/english/bie_hkfe/
  • Tse, R. Y. (1997). An application of the ARIMA model to real-estate prices in Hong Kong. Journal of Property Finance, 8(2), 152–163.
  • Webel, K., & Ollech, D. (2018). An overall seasonality test based on recursive feature elimination in conditional random forests. In Proceedings of the 5th International Conference on Time Series and Forecasting (pp. 20-31).
  • Winters, P.R. (1960). Forecasting sales by exponentially weighted moving averages. Management science, 6(3), 324–342.
  • Yayar, R., & Karaca, S.S. (2014). Determining factors effecting housing prices with hedonic model: A case of TR83 region. Ege Academic Review, 14(4), 509–518.
  • Yayar, R., & Gül, D. (2014). Mersin kent merkezinde konut piyasası fiyatlarının hedonic tahmini. Anadolu Üniversitesi Sosyal Bilimler Dergisi, 14(3), 87–99.
  • Yilmaz, B. (2019). Housing Market Dynamics and Advances in Mortgages: Option Based Modeling and Hedging [Unpublished doctoral dissertation]. Middle East Technical University.
  • Yilmaz, B., & Selcuk-Kestel, A. S. (2019). Computation of hedging coefficients for mortgage default and prepayment options: Malliavin calculus approach. The Journal of Real Estate Finance and Economics, 59(4), 673–697

FORECASTING HOUSE PRICES IN TURKEY: GLM, VAR AND TIME SERIES APPROACHES

Year 2020, , 274 - 291, 31.12.2020
https://doi.org/10.17261/Pressacademia.2020.1310

Abstract

Purpose- A wide range of decision-makers is interested in educated forecasts for house prices. The technical analysis introduced in this study aims to estimate future (forecasted) house prices and provide sufficient evidence in support of the adequacy of the estimated models obtained from parametric and non-parametric modeling methods for Turkey's housing market.
Methodology- We employ non-parametric and various time series methods to find appropriate fits to forecast Turkey's house price index (HPI). In our modelling, we consider macroeconomic indicators related to housing markets, such as; gold, interest rate and currencies. In this study, first using the explanatory variables, we construct two Generalized Linear Models (GLM) and a Vector Auto Regressive (VAR) model. Then, we construct two univariate time series models. HPI series inherits seasonality. Even though the HPI contains seasonality, first, we neglect the seasonal effect and come up an Autoregressive Moving Average (ARMA(p,q)) model among many other alternative ARMA models. Second, we consider the seasonality effect on the housing market index and construct a seasonal Autoregressive Integrated Moving Average (ARIMA(p,d,q)(P,D,Q)) and exponential smoothing models.
Findings- The analysis identifies forecasts of Turkey’s housing market index from both the seasonal ARIMA(p,d,q) (P,D,Q)_m and Holt Winter models as accurate models compared to classical time series models, namely ARIMA(p,d,q) models, based on the explanation power measure (R^2) values and out-of-sample error measures MSE, RMSE and MAE.
Conclusion- The study has three main contributions: i) Our forecast shows Turkey's housing market's return will not increase in the following 12-months. ii) The seasonal ARIMA and exponential smoothing models forecast some negative returns within the given forecasting period, which should be considered a warning for Turkey's housing market for the future. iii) GLM and VAR models illustrate that Turkey's housing market shows a high dependence on gold, inflation, and foreign exchange rates than other well-known economic indicators.

References

  • Box, G., & Jenkins, G. (1976). Time series analysis: Forecasting and control. Holden-Day.
  • Box, G., Jenkins, G., & Reinsel, G. (1994). Time series analysis: Forecasting and control. Prentice Hall.
  • Box, G., & Jenkins, G. (1970). Time series analysis: Forecasting and control. Holden-Day.
  • Brown, R. (1959). Statistical forecasting for inventory control. McGraw-Hill.
  • Chin, L., & Fan, G.Z. (2005). Autoregressive analysis of Singapore’s private residential prices. Property Management, 23(4), 257–270.
  • Crawfor, G. W., & Frantantoni, M. C. (2003). Assessing the forecasting performance of regime-switching, ARIMA and GARCH models of house prices. Real Estate Economics, 31(2), 223–243.
  • Gatzlaff, D. H., & Tirtiroglu, D. (1995). Real estate market efficiency: Issues and evidence. Journal of Real Estate Literature, 3(2), 157–189.
  • Dombaycı, Ö. A. (2010). The prediction of heating energy consumption in a model house by using artificial neural networks in Denizli–Turkey. Advances in Engineering Software, 41(2), 141–147.
  • Gao, A., Lin, Z., & Na, C.F. (2009). Housing market dynamics: Evidence of mean reversion and downward rigidity. Journal of Housing Economics, 18(3), 256–266.
  • Gardner, Jr., E.S. (2006). Exponential smoothing: The state of the art—Part II. International Journal of Forecasting, 22(4), 637–666.
  • Gardner, Jr., E.S. (1985). Exponential smoothing: The state of the art. Journal of Forecasting, 4(1), 1–28.
  • Guirguis, H.S., Giannikos, C.I., & Anderson, R.I. (2005). The US housing market: Asset pricing forecasts using time varying coefficients. The Journal of Real Estate Finance and Economics, 30(1), 33–53.
  • Hepşen, A., & Vatansever, M. (2011). Forecasting future trends in Dubai housing market by using Box-Jenkins autoregressive integrated moving average. International Journal of Housing Markets and Analysis, 4(3), 210–223.
  • Holden, K., Peel, D. A., & Thompson, J. L. (1990). Economic forecasting: An introduction. Cambridge University Press.
  • Holt, C.C. (2004). Forecasting seasonal and trends by exponentially weighted moving averages. International Journal of Forecasting 20(1), 5–10.
  • Hui, E. C., & Yue, S. (2006). Housing price bubbles in Hong Kong, Beijing and Shanghai: A comparative study. The Journal of Real Estate Finance and Economics, 33(4), 299–327.
  • Hyndman, R.J., Koehler, A.B., Snyder, R.D., & Grose, S. (2002). A state space framework for automatic forecasting using exponential smoothing methods. International Journal of Forecasting, 18(3), 439–454.
  • Mcgough, T., & Tsolacos, S. (1995). Forecasting commercial rental values using ARIMA models. Journal of Property Valuation and Investment, 13(5), 6–22.
  • Miles, W. (2008). Boom–bust cycles and the forecasting performance of linear and non-linear models of house prices. The Journal of Real Estate Finance and Economics, 36, 249–264.
  • Nelder, J. A., & Wedderburn, R. W. (1972). Generalized linear models. Journal of the Royal Statistical Society: Series A (General), 135(3), 370–384.
  • Ooms, M. (2012). Empirical vector autoregressive modelling. Springer-Verlag Berlin Heidelberg.
  • Öztürk, N., & Fitöz, E. (2012). Türkiye’de konut piyasasının belirleyicileri: Ampirik bir uygulama. Uluslararası Yönetim İktisat ve İşletme Dergisi, 5(10), 21 – 46.
  • Rapach, D.E., & Strauss, J.K. (2009). Differences in housing price forecastability across US states. International Journal of Forecasting, 25(2), 351–372.
  • Selim, H. (2009). Determinants of house prices in Turkey: Hedonic regression versus artificial neural network. Expert Systems with Applications, 36(2), 2843–2852.
  • Shumway, R., & Stoffer, D. (2010). Time Series Analysis and Its Applications: With R Examples (3rd edition). Springer.
  • Stevenson, S. (2007). A comparison of the forecasting ability of ARIMA models. Journal of Property Investment & Finance, 25(3), 223–240.
  • Türkiye Cumhuriyeti Merkez Bankası [TCMB] (2019). Residential property price index. Retrieved August 22, 2019 from https://evds2.tcmb.gov.tr/index.php?/evds/serieMarket/collapse_26/5949/DataGroup/english/bie_hkfe/
  • Tse, R. Y. (1997). An application of the ARIMA model to real-estate prices in Hong Kong. Journal of Property Finance, 8(2), 152–163.
  • Webel, K., & Ollech, D. (2018). An overall seasonality test based on recursive feature elimination in conditional random forests. In Proceedings of the 5th International Conference on Time Series and Forecasting (pp. 20-31).
  • Winters, P.R. (1960). Forecasting sales by exponentially weighted moving averages. Management science, 6(3), 324–342.
  • Yayar, R., & Karaca, S.S. (2014). Determining factors effecting housing prices with hedonic model: A case of TR83 region. Ege Academic Review, 14(4), 509–518.
  • Yayar, R., & Gül, D. (2014). Mersin kent merkezinde konut piyasası fiyatlarının hedonic tahmini. Anadolu Üniversitesi Sosyal Bilimler Dergisi, 14(3), 87–99.
  • Yilmaz, B. (2019). Housing Market Dynamics and Advances in Mortgages: Option Based Modeling and Hedging [Unpublished doctoral dissertation]. Middle East Technical University.
  • Yilmaz, B., & Selcuk-Kestel, A. S. (2019). Computation of hedging coefficients for mortgage default and prepayment options: Malliavin calculus approach. The Journal of Real Estate Finance and Economics, 59(4), 673–697
There are 34 citations in total.

Details

Primary Language English
Subjects Economics, Finance, Business Administration
Journal Section Articles
Authors

Bilgi Yılmaz 0000-0002-9646-2757

A.sevtap Selcuk Kestel This is me 0000-0001-5647-7973

Publication Date December 31, 2020
Published in Issue Year 2020

Cite

APA Yılmaz, B., & Kestel, A. S. (2020). FORECASTING HOUSE PRICES IN TURKEY: GLM, VAR AND TIME SERIES APPROACHES. Journal of Business Economics and Finance, 9(4), 274-291. https://doi.org/10.17261/Pressacademia.2020.1310

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