Identifying emerging financial bubbles using machine learning
DOI:
https://doi.org/10.71459/edutech202420Keywords:
Financial bubbles, Machine Learning, Market analysis, Predictive ModelAbstract
Financial bubbles arise very easily in unstable and fluctuating financial markets, and their bursting can cause immense economic disruption when it does occur. Traditional detection methods primarily rely on historical data, making it challenging for regulators, investors, and policymakers to anticipate and mitigate market crashes before they occur. This project shall try to use machine learning to develop a predictive model that indicates real-time early signs of financial bubbles. The model then tries to analyze the various financial market indicators, including asset prices, trading volumes, volatility, and investor sentiment, trying to find recognizable patterns associated with the bubble formations. This would allow its stakeholders to administer preventive measures in time and reduce risk, thereby protecting the financial ecosystem at its best. The work integrated advanced machine learning techniques such as time-series forecasting, anomaly detection, and behavioural analytics to improve prediction accuracy and reliability.
References
1. Adsure, S., Jaisawaal, D., Shetty, A., Shinde, D., Mane, S., & Kulkarni, A. Stock Market Prediction Using Machine Learning.
2. Jakhar, Y. K., Sharma, P., & Ahmed, B. (2024, July). Stock Price Prediction by Using Machine Learning Techniques: A Study of TCS Ltd. In 2024 2nd International Conference on Sustainable Computing and Smart Systems (ICSCSS) (pp. 1256-1260). IEEE.
3. Khan, W., Ghazanfar, M. A., Azam, M. A., Karami, A., Alyoubi, K. H., & Alfakeeh, A. S. (2022). Stock market prediction using machine learning classifiers and social media, news. Journal of Ambient Intelligence and Humanized Computing, 1-24.
4. Aasim, M., Katırcı, R., Akgur, O., Yildirim, B., Mustafa, Z., Nadeem, M. A., ... & Yılmaz, G. (2022). Machine learning (ML) algorithms and artificial neural network for optimizing in vitro germination and growth indices of industrial hemp (Cannabis sativa L.). Industrial Crops and Products, 181, 114801.
5. Hiray, P. V., Patankar, A., & Doke, P. ML based stock prediction method for accurate future prediction of stock market. International journal of health sciences, 6(S4), 7139-7148.
6. Ruke, A., Gaikwad, S., Yadav, G., Buchade, A., Nimbarkar, S., & Sonawane, A. (2024, March). Predictive Analysis of Stock Market Trends: A Machine Learning Approach. In 2024 4th International Conference on Data Engineering and Communication Systems (ICDECS) (pp. 1-6). IEEE.
7. Shrikhande, P., Ramani, R., & Bhalerao, R. (2022). Stock Market Analysis and Prediction. International Journal for Research in Applied Science & Engineering Technology (IJRASET), 10, 12.
8. Kanade, P. A., Singh, S., Rajoria, S., Veer, P., & Wandile, N. (2020). Machine learning model for stock market prediction. International Journal for Research in Applied Science and Engineering Technology, 8(6), 209-216.
9. Gandhmal, D. P., & Kumar, K. (2019). Systematic analysis and review of stock market prediction techniques. Computer Science Review, 34, 100190.
10. Usmani, M., Adil, S. H., Raza, K., & Ali, S. S. A. (2016, August). Stock market prediction using machine learning techniques. In 2016 3rd international conference on computer and information sciences (ICCOINS) (pp. 322-327). IEEE.
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Copyright (c) 2024 Manoj Kumar Reddy Bacham, Shaik Riyasatullah Baig, Kovvuri Sai Surya Avinash Reddy, Dudekula Saleem, D Mythrayee (Author)

This work is licensed under a Creative Commons Attribution 4.0 International License.
The article is distributed under the Creative Commons Attribution 4.0 License. Unless otherwise stated, associated published material is distributed under the same licence.