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Using Machine Learning to Predict Apartment Prices in Lima

In: Entrepreneurship and Human-Centric Business Strategies for Social and Economic Resilience

Author

Listed:
  • Barrientos Renzo

    (Universidad ESAN)

  • Delgado Renzo

    (Universidad ESAN)

  • Escalante Laura

    (Universidad ESAN)

  • Febres Gonzalo

    (Universidad ESAN)

  • Hisbes Brizet

    (Universidad ESAN)

  • Chavez-Bedoya Luis

    (Universidad ESAN)

  • Rosales Francisco

    (Universidad ESAN)

  • Vargas Willynthom

    (Universidad ESAN)

Abstract

Traditional methods, such as appraisals based on comparisons or classic econo-metric models, cannot estimate apartment prices in Lima. These methods do not adequately capture the nonlinear dynamics of the market or the interaction of the various property characteristics that determine prices. This study aims to develop a prediction model for apartment prices in Lima using machine learning techniques. The following document evaluates the effectiveness of two ML models, Decision Tree and XGBoost, in predicting apartment prices in Lima. The performance of these models is compared with that of traditional hedonic regression using accuracy metrics such as mean absolute percentage error (MAPE), mean absolute error (MAE), root mean square error (RMSE), and R2. This Study sets a first guideline in the analysis of prices of apartments in Lima based on machine learning. Addressing the need for accurate real estate valuations, the study utilizes a dataset of over 40,000 records from 2014 to 2024 from the Central Reserve Bank of Peru (BCRP). Based on metrics such as MAPE, MAE, RMSE, and R2, XGBoost demonstrates superior predictive capabilities, outperforming both hedonic regression and Decision Tree models. The key price determinants identified are property size, garage availability, and location. The findings highlight machine learning’s potential to improve pricing accuracy and enable better risk assessment and investment decisions for investors, financial institutions, and regulators. The study also promotes integrating such models into credit scoring and risk management systems, which contributes to financial stability and informed policymaking in the Peruvian real estate market.

Suggested Citation

  • Barrientos Renzo & Delgado Renzo & Escalante Laura & Febres Gonzalo & Hisbes Brizet & Chavez-Bedoya Luis & Rosales Francisco & Vargas Willynthom, 2026. "Using Machine Learning to Predict Apartment Prices in Lima," Springer Proceedings in Business and Economics, in: Singha Chaveesuk & Seungwoo Shin & Sebastian Kot & Bilal Khalid (ed.), Entrepreneurship and Human-Centric Business Strategies for Social and Economic Resilience, pages 2725-2737, Springer.
  • Handle: RePEc:spr:prbchp:978-981-95-6415-6_168
    DOI: 10.1007/978-981-95-6415-6_168
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