AI-based Decision Making Process in the Finance Sector

Authors

DOI:

https://doi.org/10.62802/rz706w81

Keywords:

Artificial Intelligence, financial decision-making, machine learning, risk assessment, portfolio management, fraud detection, algorithmic trading, ethical AI, predictive analytics, financial technology

Abstract

The integration of Artificial Intelligence (AI) into the finance sector is revolutionizing decision-making processes, enabling data-driven insights and automation at an unprecedented scale. This research explores the transformative potential of AI in financial decision-making, focusing on its applications in risk assessment, portfolio management, fraud detection, and algorithmic trading. AI technologies, such as machine learning, natural language processing, and predictive analytics, empower financial institutions to process vast amounts of data efficiently, uncover patterns, and generate actionable insights. By enhancing precision and reducing human biases, AI-driven systems contribute to more informed and timely decisions. However, the adoption of AI in finance also raises concerns about transparency, ethical considerations, and regulatory compliance. This study aims to analyze the benefits and challenges of AI-driven decision-making, evaluate case studies of successful implementation, and propose frameworks for integrating AI ethically and effectively into financial operations. The findings emphasize the necessity of balancing innovation with accountability, ensuring that AI technologies enhance rather than compromise financial stability.

References

Ahmadi, S. (2024). A comprehensive study on integration of big data and AI in financial industry and its effect on present and future opportunities. International Journal of Current Science Research and Review, 7(01), 66-74.

Artene, A. E., Domil, A. E., & Ivascu, L. (2024). Unlocking Business Value: Integrating AI-Driven Decision-Making in Financial Reporting Systems. Electronics (2079-9292), 13(15).

Balaji, K. (2024). Harnessing AI for Financial Innovations: Pioneering the Future of Financial Services. In Modern Management Science Practices in the Age of AI (pp. 91-122). IGI Global.

BaniHani, I., Alawadi, S., & Elmrayyan, N. (2024). AI and the decision-making process: a literature review in healthcare, financial, and technology sectors. Journal of Decision Systems, 1-11.

Bouchetara, M., Zerouti, M., & Zouambi, A. R. (2024). Leveraging artificial intelligence (AI) in public sector financial risk management: Innovations, challenges, and future directions. EDPACS, 69(9), 124-144.

Farahani, M. S., & Ghasemi, G. (2024). How AI Changes the Game in Finance Business Models. International Journal of Innovation in Management, Economics and Social Sciences, 4(1), 35-46.

Ju, C., & Zhu, Y. (2024). Reinforcement Learning‐Based Model for Enterprise Financial Asset Risk Assessment and Intelligent Decision‐Making.

Rane, J., Mallick, S. K., Kaya, O., & Rane, N. L. (2024). Enhancing black-box models: advances in explainable artificial intelligence for ethical decision-making. Future Research Opportunities for Artificial Intelligence in Industry 4.0 and, 5, 2.

Sarioguz, O., & Miser, E. (2024). Integrating AI in financial risk management: Evaluating the effects of machine learning algorithms on predictive accuracy and regulatory compliance.

Zhan, X., Ling, Z., Xu, Z., Guo, L., & Zhuang, S. (2024). Driving efficiency and risk management in finance through AI and RPA.

frontpage

Published

2024-12-10