AML: Reducing False Positive to improve regulatory reporting
Overview.
The client is facing a growing number of Anti-Money Laundering (AML) activities and intricate customer behaviors are leading to a concerning trend - decreasing detection rates.
Challenges.
Increasing AML activities and complex customer behavioral events results into decreasing detection rates
Regulatory compliance needed to be adhered to and this involves a lot of manual efforts.
Need to monitor and check the compliance databases from OFAC and other sources to catch the anomalous behavior
Transaction rules are not sufficient as the behavior keeps on and generate a lot of false positive
Solution.
Algorithm Used: Soft clustering behavioral misalignment score
Aggregate banking transactions and build customer clusters
Suspicious customers are: not in any cluster, misaligned within the clusters and deviate from the cluster prototype
Use ML classification prediction model using historical False Positive alerts and related information as input.
Check against compliance databases using techniques like fuzzy and regex matching
Apply on any new input to get a classification score
The Impact.
Significant fall in false positives
Efficient fraud management and Improvement in fraud detection rates
Effective workload management
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