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eISSN: 2581-9615 || CODEN (USA): WJARAI || Impact Factor: 8.2 || ISSN Approved Journal

Reinforcement Learning-Based Risk Optimization: Automating Strategic Responses in Uncertain Business Landscapes

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  • Reinforcement Learning-Based Risk Optimization: Automating Strategic Responses in Uncertain Business Landscapes

Adam Swidan *

Faculty of Engineering and Business, Al Zaytona University of Science and Technology, Palestine.

Research Article

World Journal of Advanced Research and Reviews, 2025, 28(02), 023–036

Article DOI: 10.30574/wjarr.2025.28.2.3690

DOI url: https://doi.org/10.30574/wjarr.2025.28.2.3690

Received on 22 September 2025; revised on 27 October 2025; accepted on 30 October 2025

Organizations today are facing growing challenges within a volatile, interconnected business risk landscape. Standard risk optimization models supported by static systems or algorithms with fixed decisions rules are limited by their inability to respond to continuous uncertainty and incremental changes that may be nonlinear. This study proposes a risk optimization framework based on reinforcement learning (RL) to address the automatic, strategic response challenge associated with uncertain business conditions. To add value to risk management as a repeatable process supported by sequential decision-making, the model utilizes Q-learning and Deep Q-Network (DQN) architectures to enable an intelligent agent to learn the most ideal risk mitigation strategies based on interactions and feedback in real-time. Simulated observations that included financial volatility, operational disruptions, and supply chain uncertainties in risk response that moderate the ability of an organization to be responsive, the RL-based operational, online model exhibited improved adaptability, speed of convergence, and overall robustness than standard optimization models. This evidence highlighted the degree that RL can adaptively learn dynamic systems balancing exploration and exploitation to optimize decisions under fluctuating risk scenarios. In addition to the modeling contributions, the importance of highly autonomous learning systems as proactive risk management solutions was underscored, particularly in improving forecast accuracies, lessening loss probabilities, and improving strategic enduring resilience. While the consideration of these adaptive AI systems into enterprise risk management is differentiation in this study, and opens the area toward advancing the research agenda critical to an R system approach.

Reinforcement Learning; Risk Optimization; Decision Automation; Uncertainty Modeling; Adaptive Systems; Deep Q-Network; Enterprise Risk Management; Strategic Resilience

https://journalwjarr.com/sites/default/files/fulltext_pdf/WJARR-2025-3690.pdf

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Adam Swidan. Reinforcement Learning-Based Risk Optimization: Automating Strategic Responses in Uncertain Business Landscapes. World Journal of Advanced Research and Reviews, 2025, 28(02), 023–036. Article DOI: https://doi.org/10.30574/wjarr.2025.28.2.3690.

Copyright © 2025 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0

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