Article section
Examining the Potential of Artificial Intelligence and Machine Learning in Predicting Trends and Enhancing Investment Decision-Making
Abstract
This research explores the vast potential of Artificial Intelligence (AI) and Machine Learning (ML) in predicting trends and enhancing investment decision-making. The financial market is highly complex and dynamic, making it challenging for investors to make accurate and timely decisions. Through the application of AI and ML techniques, this research aims to harness the power of data-driven approaches for trend identification and prediction. The research not only investigates the predictive capabilities of AI and ML in the financial domain but also explores the potential for risk assessment and portfolio optimization. The findings from this research have significant implications for various stakeholders within the financial sector, including individual investors, fund managers, and financial institutions. The potential benefits include improved decision-making, enhanced risk management, and optimized portfolio performance.
Overall, this research aims to shed light on the potential of AI and ML in predicting trends and improving investment decision-making. By combining the power of these advanced technologies with human expertise, investors can gain a competitive edge in navigating the dynamic and often unpredictable financial landscape.
Keywords:
Artificial Intelligence Machine Learning Predicting Trends Decision-Making
Article information
Journal
Scientific Journal of Engineering, and Technology
Volume (Issue)
1(1), (2024)
Pages
15-20
Published
Copyright
Copyright (c) 2024 Asere Gbenga Femi, Nuga Kehinde Adetayo (Author)
Open access

This work is licensed under a Creative Commons Attribution 4.0 International License.
How to Cite
References
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