The Role of Machine Learning in Enhancing Risk Management Strategies in Financial Institutions

Mary Mwangi
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Abstract

Purpose: The aim of the study was to examine the role of machine learning in enhancing risk management strategies in financial institutions. Methodology: This study adopted a desk methodology. A desk study research design is commonly known as secondary data collection. This is basically collecting data from existing resources preferably because of its low cost advantage as compared to a field research. Our current study looked into already published studies and reports as the data was easily accessed through online journals and libraries. Findings: The study revealed that integration of machine learning into risk management strategies within financial institutions has demonstrated significant potential for enhancing decision-making processes and mitigating various risks. The study have consistently shown that machine learning algorithms outperform traditional statistical methods in areas such as credit risk assessment, fraud detection, market risk management, and loan portfolio optimization. These advancements have led to improved accuracy, efficiency, and timeliness in risk assessment, enabling financial institutions to make more informed decisions while reducing losses and enhancing overall performance. Unique Contribution to Theory, Practice and Policy: Modern Portfolio Theory (MPT), Efficient Market Hypothesis (EMH) & Agency Theory may be used to anchor future studies on role of machine learning in enhancing risk management strategies in financial institutions. Invest in building robust data infrastructure and governance frameworks to support the implementation of machine learning models in risk management practices. High-quality data is crucial for training accurate and reliable machine learning algorithms. Establish regulatory guidelines and standards for the responsible use of machine learning in risk management within the financial industry. These guidelines should address issues such as model transparency, fairness, and accountability to ensure ethical and responsible practices.
机器学习在加强金融机构风险管理战略中的作用
目的:本研究旨在探讨机器学习在加强金融机构风险管理策略方面的作用。研究方法:本研究采用案头研究法。案头研究设计通常被称为二手数据收集。这基本上是从现有资源中收集数据,因为与实地研究相比,它具有成本低的优势。我们目前的研究调查了已经出版的研究和报告,因为这些数据很容易通过在线期刊和图书馆获取。研究结果研究表明,将机器学习融入金融机构的风险管理策略,在增强决策过程和降低各种风险方面具有巨大潜力。研究一致表明,在信用风险评估、欺诈检测、市场风险管理和贷款组合优化等领域,机器学习算法优于传统统计方法。这些进步提高了风险评估的准确性、效率和及时性,使金融机构能够做出更明智的决策,同时减少损失并提高整体绩效。对理论、实践和政策的独特贡献:现代投资组合理论(MPT)、有效市场假说(EMH)和代理理论可用于未来关于机器学习在加强金融机构风险管理策略中的作用的研究。投资建设强大的数据基础设施和管理框架,以支持在风险管理实践中实施机器学习模型。高质量的数据对于训练准确可靠的机器学习算法至关重要。制定监管指南和标准,以便在金融业风险管理中负责任地使用机器学习。这些准则应解决模型透明度、公平性和问责制等问题,以确保道德和负责任的做法。
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