April 12, 2021 Blog
Enterprise-wide Risk Management (ERM) is the holistic approach to managing an organization’s upside and downside risks towards meeting its objectives. Its primary aim is to maximize risk-adjusted returns by giving consideration to the organization’s risks and their dependencies.
Some of the traditional approaches used in risk management have been impeded by challenges such as dealing with unstructured data which limits risk management capabilities. In a bid to advance the goal of ERM, therefore, Artificial Intelligence (AI) based solutions have been increasingly deployed such as for risk identification, risk assessment and risk management. Using AI, current unstructured data is used to identify patterns and behaviours that then provide indications of future actions such as through advanced predictive analytics.
The increasing trend in the deployment of AI in risk management can be found in areas such as Credit Risk where the use of machine learning algorithms are used to conduct better assessments of customers’ credit histories and identify other vulnerabilities or patterns that may not have been captured. This capability through AI aids more reliable credit scoring and the achievement of better default rates for lending institutions.
Also for Market Risk, the deployment of AI has aided the reduction of the risks in trading while increasing returns. Also, for Fraud Risk, AI models are able to analyze large data volumes, observe patterns across channels and catch potentially fraudulent activity across numerous clients all at the same time.
Major benefits accruing to organizations from deploying AI in risk management include:
- Increased focus on analytics and more proactive mitigation of losses as against the normal tendency to expend time managing the risks in operational processes
- Better identification of new and hidden risks
- Faster and more accurate risk assessments using financial and non-financial data
- New risk management approaches
- Better model risk management including back-testing and model validation
- Better risk oversight and monitoring
- Quicker and more cost-effective predictive analytics-based fraud detection across multiple channels