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Sift > Case Studies > How Curve slashed chargebacks and streamlined fraud review
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How Curve slashed chargebacks and streamlined fraud review

Technology Category
  • Analytics & Modeling - Machine Learning
Applicable Industries
  • Finance & Insurance
Applicable Functions
  • Sales & Marketing
Use Cases
  • Fraud Detection
Services
  • Data Science Services
The Challenge
Curve, a company that offers a smart bank card that combines all your cards in one, was facing a growing threat of fraud due to its rapidly expanding customer base. The ability to quickly add new cards with the Curve app and then use them within moments was of particular interest to malicious users who tried to circumvent Curve’s many layers of account authentication. This resulted in expensive manual resources for fraud reviews and chargeback management. As the business was growing at a fast pace, Curve needed a solution to preemptively knock out the growing threat of fraud.
About The Customer
Curve is a company that offers a smart bank card that combines all your cards in one. The Curve app, paired with the smart bank card, works like a normal bank card anywhere in the world that accepts MasterCard. Users don’t need to open a new bank account and don’t need to wait for weeks — after a few taps and a new Curve card in the post, they’re ready to go. With Curve, customers benefit from simpler spending across all their cards, saving money on currency exchange, a smarter and faster way to manage expenses, instant cashback rewards at over 50 leading UK retailers, plus a host of additional security features. Curve users have so far spent £50 million in over 100 currencies, worldwide.
The Solution
Curve decided to implement a machine learning solution to avoid having to spend precious resources on building an in-house rules engine from scratch. After reviewing several vendor options, Curve decided to go with Sift and quickly integrated the solution. Curve first implemented the basic Sift Score API, and soon began using Sift’s findings to assess real-time transactional data. Within weeks of training the models and learning how to use Sift effectively, Curve began to trust the accuracy of Sift Scores. Now, Curve takes a layered approach to fraud management, relying on an in-house rules engine to weed out the hard-and-fast business blacklist while utilizing Sift to spot the trickier fraudsters, ideally before they even get a Curve card.
Operational Impact
  • Streamlined fraud workflows with a single platform for automation, review, and investigation.
  • Fraud management no longer requires a whole team.
  • More time and better data for in-depth investigations on the fraud cases they encounter.
Quantitative Benefit
  • 80% Drop in chargebacks
  • Only had to add one full-time fraud resource despite business booming

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