Skip to main content

AML: Reducing False Positive to improve regulatory reporting

article banner

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

12-113-1

 

Bring us your challenge.

Let’s Coforge your next success story.

Related reads.

WHAT WE DO.

Explore our wide gamut of digital transformation capabilities and our work across industries.

Explore