Predicting housing prices using regression models with Full stack web development
Keywords:
estimate housing prices, neighborhood facilities, regression-basedAbstract
Predicting housing prices accurately is a
vital problem in the real estate industry,
assisting buyers, sellers, investors, and
policymakers
in
making
informed
decisions. This project presents a web
based predictive system that applies
regression-based machine learning models
to
estimate housing prices using key
parameters such as location, size, number
of
rooms, neighborhood facilities, and
market conditions. A full-stack architecture
integrates a trained ML model with an
interactive user interface and efficient
backend processing. The system allows
users to input property attributes and
returns real-time price predictions. It
emphasizes usability, scalability, and
reliable data-driven insights. Performance
evaluation metrics such as RMSE, MAE,
and R² are used to validate model efficiency.
The project demonstrates the feasibility of
combining artificial intelligence with web
estate decision support application.
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This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.










