Proceedings of International Conference on Applied Innovation in IT
2025/07/26, Volume 13, Issue 3, pp.337-344

House Price Prediction Using Diverse Machine Learning Techniques


Sabyasachi Pramanik, Abdulkhaleq Husham Yousif, Salah Jasim, Raushan Raj, Muskan Kumari, Atanu Roy and Ahmed J. Obaid


Abstract: With the rapid growth of society and evolving market demands, understanding market trends has become increasingly crucial. Accurate prediction of house prices based on current trends is vital for informed decision-making. It enables individuals to plan their financial needs effectively and align them with their goals. As a continually expanding industry, the real estate sector plays a significant role in this context. For investors, identifying market patterns is essential for making strategic investments that can maximize returns. However, the lack of transparency in real estate pricing, often influenced by inflated rates set by intermediaries, poses challenges for clients. The availability of extensive datasets has opened new possibilities for researchers to create predictive models with improved accuracy. Traditional models often face lower precision and overfitting issues, which reduce their effectiveness. In contrast, the proposed system addresses these challenges, offering a robust and efficient model complemented by an intuitive ui. The primary goal of this research is to create an all-encompassing solution that benefits both businesses and individuals, reducing manual efforts while saving time and money. This system utilizes several ML techniques, such as Linear Regression, Lasso Regression, and Decision Tree. These algorithms are integrated using the stacking technique to enhance performance and accuracy. The proposed approach aims to deliver a user-friendly and reliable tool that simplifies real estate decision-making while ensuring precise predictions.

Keywords: House Price Prediction, Lasso Regression, Decision Tree Regressor, Real Estate Market Trends, Feature Engineering, Predictive Modeling in Real Estate.

DOI: Under Indexing

Download: PDF

References:

  1. Y. Li and Q. Chen, "Predicting House Prices Using Machine Learning Algorithms: A Comparative Study," International Journal of Data Science and Analytics, vol. 9, no. 4, pp. 365–380, 2020.
  2. S. Jain and P. Kumar, "An Overview of Machine Learning Algorithms for Real Estate Price Prediction," Journal of Artificial Intelligence in Real Estate, vol. 10, no. 2, pp. 112–130, 2021.
  3. A. Kumar and N. Sharma, "Machine Learning in Real Estate: Addressing Challenges and Future Opportunities," Journal of Smart Cities and Machine Learning, vol. 15, no. 1, pp. 45–62, 2022.
  4. R. Chaudhary and S. Patel, "Forecasting Housing Prices Using Ensemble Learning Techniques: A Case Study," International Journal of Artificial Intelligence and Data Mining, vol. 17, no. 3, pp. 201–220, 2023.
  5. R. Sinha and A. Gupta, "Improving Real Estate Price Predictions through Hybrid Machine Learning Models," Journal of Real Estate Analytics, vol. 21, no. 4, pp. 325–340, 2024.
  6. J. Zhang and H. Liu, "Dynamic Real Estate Price Forecasting Using Reinforcement Learning," Journal of Machine Learning for Finance and Real Estate, vol. 22, no. 1, pp. 78–95, 2024.
  7. M. Patel and P. Rathi, "Data-Driven Approach to Real Estate Price Predictions: Leveraging Big Data and AI," Journal of Real Estate Technology and Innovation, vol. 12, no. 2, pp. 150–169, 2023.
  8. R. Sharma and P. Agarwal, "Predicting Property Prices Using Hybrid Deep Learning Models: A Comparative Study," Journal of Computational Economics, vol. 14, no. 1, pp. 88–103, 2022.
  9. S. Singh and D. Verma, "Real-Time Real Estate Market Analysis Using Machine Learning and Neural Networks," Journal of Urban Studies and Data Science, vol. 19, no. 3, pp. 223–241, 2024.
  10. V. Patel and P. Bansal, "A Comprehensive Review of Machine Learning Techniques for Predicting Property Prices," Journal of Applied Artificial Intelligence, vol. 18, no. 2, pp. 177–195, 2023.
  11. A. Roy and S. Das, "Application of Gradient Boosting Models in Housing Price Predictions: A Comparative Analysis," Journal of Advanced Data Analytics in Real Estate, vol. 11, no. 3, pp. 120–139, 2023.
  12. T. Wang and L. Zhao, "Leveraging Transfer Learning for Real Estate Valuation Across Geographies," International Journal of Artificial Intelligence Applications in Urban Planning, vol. 16, no. 4, pp. 289–310, 2024.
  13. P. Mehta and N. Choudhary, "Deep Reinforcement Learning Models for Real-Time Property Price Predictions," Journal of Computational Intelligence and Smart Systems, vol. 13, no. 1, pp. 65–82, 2023.
  14. F. Ahmed and S. Khan, "Real Estate Market Forecasting Using LSTM Networks: A Regional Study," Journal of Machine Learning Applications in Real Estate, vol. 20, no. 2, pp. 142–160, 2024.
  15. X. Wei and R. Sun, "Exploring Feature Engineering Techniques for Housing Price Prediction with ML Models," International Journal of Data Engineering and Artificial Intelligence, vol. 9, no. 5, pp. 321–340.


    HOME

       - Conference
       - Journal
       - Paper Submission to Journal
       - Paper Submission to Conference
       - For Authors
       - For Reviewers
       - Important Dates
       - Conference Committee
       - Editorial Board
       - Reviewers
       - Last Proceedings


    PROCEEDINGS

       - Volume 13, Issue 3 (ICAIIT 2025)
       - Volume 13, Issue 2 (ICAIIT 2025)
       - Volume 13, Issue 1 (ICAIIT 2025)
       - Volume 12, Issue 2 (ICAIIT 2024)
       - Volume 12, Issue 1 (ICAIIT 2024)
       - Volume 11, Issue 2 (ICAIIT 2023)
       - Volume 11, Issue 1 (ICAIIT 2023)
       - Volume 10, Issue 1 (ICAIIT 2022)
       - Volume 9, Issue 1 (ICAIIT 2021)
       - Volume 8, Issue 1 (ICAIIT 2020)
       - Volume 7, Issue 1 (ICAIIT 2019)
       - Volume 7, Issue 2 (ICAIIT 2019)
       - Volume 6, Issue 1 (ICAIIT 2018)
       - Volume 5, Issue 1 (ICAIIT 2017)
       - Volume 4, Issue 1 (ICAIIT 2016)
       - Volume 3, Issue 1 (ICAIIT 2015)
       - Volume 2, Issue 1 (ICAIIT 2014)
       - Volume 1, Issue 1 (ICAIIT 2013)


    PAST CONFERENCES

       ICAIIT 2025
         - Photos
         - Reports

       ICAIIT 2024
         - Photos
         - Reports

       ICAIIT 2023
         - Photos
         - Reports

       ICAIIT 2021
         - Photos
         - Reports

       ICAIIT 2020
         - Photos
         - Reports

       ICAIIT 2019
         - Photos
         - Reports

       ICAIIT 2018
         - Photos
         - Reports

    ETHICS IN PUBLICATIONS

    ACCOMODATION

    CONTACT US

 

        

         Proceedings of the International Conference on Applied Innovations in IT by Anhalt University of Applied Sciences is licensed under CC BY-SA 4.0


                                                   This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License


           ISSN 2199-8876
           Publisher: Edition Hochschule Anhalt
           Location: Anhalt University of Applied Sciences
           Email: leiterin.hsb@hs-anhalt.de
           Phone: +49 (0) 3496 67 5611
           Address: Building 01 - Red Building, Top floor, Room 425, Bernburger Str. 55, D-06366 Köthen, Germany

        site traffic counter

Creative Commons License
Except where otherwise noted, all works and proceedings on this site is licensed under Creative Commons Attribution-ShareAlike 4.0 International License.