Real Estate Valuation in Buenos Aires, an Interactive Tool Development
Metadata
Show full item recordAuthor/s:
Gonzalvo, Francisco
Advisor/s:
Iarussi, Emmanuel
Thesis degree name:
Master in Management + Analytics
Date:
2024Abstract
This thesis explores the application of machine learning models for real estate valuation
in Buenos Aires, aiming to develop a user-centric tool to assist buyers and investors in
making informed decisions. Traditional regression models, while useful, often fail to
capture the complex, nonlinear relationships inherent in real estate data. Consequently,
we employed advanced machine learning techniques, including XGBoost, Random
Forest, and Support Vector Machines (SVM), selected for their robustness and efficiency
in handling large datasets.
Our input data consists of 64,358 property listings from the e-commerce platform
Mercado Libre, obtained through a combination of Python scripts and the platform's
own API.