An overview of the forecasting methods used in real estate housing price modelling

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Abstract

Forecasting is very fundamental in real estate where the past transactions become the evidences while decision making for the present and the future. Several techniques and validation approached that were commonly used in housing price index forecasting. Beside the appropriate forecasting method, error calculation is one of the critical constraints in accuracy out of all methods. This paper overview the available methods and the types of error being considered in forecasting techniques. Then the forecasting methods, namely Multiple Regression Analysis (MRA) and Artificial Neural Network which are highly applied in forecasting modelling are compared over its error accuracy.

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CITATION STYLE

APA

Munusamy, M., Muthuveerappan, C., Baba, M., & Asmoni, M. (2015). An overview of the forecasting methods used in real estate housing price modelling. Jurnal Teknologi, 73(5), 189–193. https://doi.org/10.11113/jt.v73.4337

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