Financial Fraud Detection
The Problem
Financial fraud detection requires monitoring billions of transactions, devices and users in real-time for suspect behaviors without false positives that alienate customers when service is denied in the middle of a foreign vacation or late night business event.
The Solution
What is needed is a system that do four things:
- detect complex patterns of behavior
- combine multiple sources and scale up to millions of events/sec
- take the appropriate, user-specified action when patterns are detected
- do all of this in real time
Quine can monitor device and user behavior over extended time periods to detect expected exploit behaviors and new, novel, threat actions. By including categorical data such as store names, item types or sizes, geo locations, device versions, and day of the week, Quine understands the full context of behavior, eliminating false-positives. Additionally, Quine alerts provide a comprehensive view of past and current behavior for a device or user as supporting data for investigations.
Key Value Take Away
- Behavior modeling for billions/trillions of users, devices and transactions
- High-confidence risk scoring by leveraging the rich behavior context provided by categorical data analysis
- Human-understandable alert information to support analysts investigations
- Cost effective at scale with on premise licensing
- Integrates with existing Apache Kafka, AWS Kinesis, data lake, and API event sources.
Use Cases
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Real-time Blockchain Fraud Detection
The Problem Real-time linking of transactions, accounts, wallets, and blocks within and across blockchains is not possible with current solutions. Instead, the user must either rely on batch…
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Authentication Fraud
The Problem Metered attacks that generate low volume log-in attempts, from diverse IPs and across extended time frames, are designed to avoid the “3 strikes in 24 hours”…
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Financial Fraud Detection
The Problem Financial fraud detection requires monitoring billions of transactions, devices and users in real-time for suspect behaviors without false positives that alienate customers when service is denied…
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