Detecting Financial Fraud in Real-Time: A Guide to ML Monitoring
Financial fraud is a significant challenge for businesses and financial institutions. Machine learning (ML) models are used to detect and prevent fraud, but they must be properly monitored and maintained to ensure accuracy and reliability. ML monitoring involves tracking the performance of data and ML models over time, validating data quality, and comparing model performance. Implementing a robust model monitoring system offers several benefits for fraud detection, including improved accuracy, minimizing false positives, faster detection of fraud, and improved operational efficiency. The WhyLabs Observatory platform can identify data quality issues/changes in a data's distribution, detect anomalies, and send notifications to help businesses stay ahead of fraudsters and protect themselves from financial losses and reputational damage.
Company
WhyLabs
Date published
March 7, 2023
Author(s)
Kelsey Olmeim
Word count
1262
Hacker News points
None found.
Language
English