Artificial intelligence and machine learning technologies support the risk-based approach (RBA) to AML compliance by enhancing an institution’s ability to identify, assess, and prioritize financial crime risks. Regulatory guidance emphasizes that these technologies should augment—not replace—human judgment.
One key benefit is advanced customer risk assessment. AI and ML can synthesize large volumes of customer data, including background information, transaction behavior, and external risk indicators, allowing institutions to develop more accurate and dynamic risk profiles.
AI and ML also enable the identification of complex networks among seemingly unrelated clients. Through network analytics and pattern recognition, these tools can uncover hidden relationships used in layering and structuring activities.
Additionally, AI-driven systems excel at detecting complex money laundering patterns within transaction data that may not trigger traditional rule-based alerts, improving effectiveness and efficiency.
Automatically generating SARs or adapting thresholds without human oversight is inconsistent with regulatory expectations. Human review and governance remain essential components of AML compliance.