Price forecasting for real estate using machine learning: A case study on Riyadh city

Ali Louati, Rahma Lahyani, Abdulaziz Aldaej, Abdullah Aldumaykhi, Saad Otai

Research output: Contribution to journalArticlepeer-review

31 Scopus citations

Abstract

Real estate is potentially contributing to the economic growth. It has a strong correlation between property owners and beneficiaries. The accurate forecast of future property prices is particularly important. Therefore, real estate prices are reflecting the economic level of counties, and their price ranges are of great interest to both buyers and sellers. Developing a land-price forecast model could significantly assist in predicting future land prices and setting real estate regulations. In contrast, machine learning (ML) algorithms have demonstrated a great potential to perform predictions. Motivated by these assumptions, we develop in this article a set of ML algorithms to build models capable to increase the effectiveness of land price estimation. The ML algorithms adopted in this work include the decision tree, random forest (RF), and linear regression. We collected data from 5946 lands localized in the northern area of Riyadh, KSA. This data has been collected using GeoTech's DAAL website. The performance of the developed models has been assessed based on state-of-art performance metrics including mean absolute error, mean squared error, and median squared error. The experiments show that the RF based model outperforms the remaining models.

Original languageEnglish
Article numbere6748
JournalConcurrency Computation Practice and Experience
Volume34
Issue number6
DOIs
StatePublished - 10 Mar 2022

Keywords

  • decision tree
  • linear regression
  • machine learning
  • price prediction
  • random forest

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