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Case Study Financial Services

Reducing False Positives in Financial Crime Monitoring

A challenger bank's transaction monitoring system was generating tens of thousands of low-quality alerts per month, overwhelming the financial crime team.

Headline outcome

70% Fewer alerts to review
2.5x More true positives caught
£1.4M Annual savings
Reducing False Positives in Financial Crime Monitoring
01

The challenge

Investigators were drowning in false positives generated by rules-based monitoring, while genuinely suspicious activity sometimes slipped through unnoticed.

“Deployed an ML-based alert triage layer that scores legacy alerts and surfaces only the highest-risk cases to investigators.”
AIVION — Engagement summary
02

Our approach

  • 01

    Built supervised ML models on historical alert outcomes to score new alerts.

  • 02

    Retained the rules layer for regulatory comfort; ML acted as a triage layer on top.

  • 03

    Implemented full model risk governance and ongoing monitoring of detection rates.

03

The result

The financial crime team now focuses on the highest-risk activity, throughput more than doubled, and detection rates improved without breaching regulatory expectations.

70%

Fewer alerts to review

2.5x

More true positives caught

£1.4M

Annual savings

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