Exploring the Future of Stock Market Prediction through Machine Learning: An Extensive Review and Outlook

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Sourabh Jain
Dr. Navdeep Kaur Saluja
Dr. Anil Pimplapure
Dr. Rani Sahu

Abstract

A thorough analysis of trends and future directions reveals how machine learning is revolutionizing stock market forecasting. The most recent research on machine learning applications for stock market prediction during the previous 20 years is methodically reviewed in this article. Artificial neural networks, support vector machines, genetic algorithms in conjunction with other methodologies, and hybrid or alternative AI approaches were the categories used to group journal articles. Every category was examined to identify trends, distinct perspectives, constraints, and areas that needed more research. The results provide insightful analysis and suggestions for further study in this developing topic.

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Exploring the Future of Stock Market Prediction through Machine Learning: An Extensive Review and Outlook. (2024). International Journal of Innovative Science and Modern Engineering (IJISME), 12(4), 1-10. https://doi.org/10.35940/ijisme.E9837.12040424
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How to Cite

Exploring the Future of Stock Market Prediction through Machine Learning: An Extensive Review and Outlook. (2024). International Journal of Innovative Science and Modern Engineering (IJISME), 12(4), 1-10. https://doi.org/10.35940/ijisme.E9837.12040424

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