AtData, a leading innovator in email address intelligence and digital trust solutions, is introducing Gibberish Detection, a new machine learning-driven model in its fraud prevention suite that surfaces a fast, high-confidence indicator of likely bot or synthetic addresses.
According to the company, the capability identifies AI-generated, nonsensical, or otherwise low-intent email inputs at the point of capture—helping fraud and risk teams prioritize accuracy and speed while cutting operational costs
“Stopping automated and synthetic accounts at the first touchpoint is one of the most cost-efficient ways to lower fraud exposure,” said Diarmuid Thoma, head of fraud and data strategy at AtData. “Gibberish Detection converts messy email input into a structured signal that boosts model accuracy, keeps review queues focused on real risk, and slows fraudsters instead of valuable customers.”
Gibberish Detection analyzes the text of an email address to classify the likelihood of randomness or automation using indicators such as pattern anomalies and likely bot behavior.
The resulting real-time, confidence-weighted signal strengthens identity verification, fraud screening, and risk decisioning workflows by offering:
- Faster decisions, less friction: Provides an instant blocking or scoring signal to prevent low-value registrations without adding multi-step verification that annoys legitimate users.
- Higher accuracy, fewer false positives: Adds a purpose-built signal for automated patterns, reducing reliance on rules that can misclassify legitimate users.
- Lower operational costs: Reduces manual review volume—one of the largest expenses in fraud programs—by filtering low-value registrations at the start.
Gibberish Detection is available now through AtData’s Fraud API endpoint.
For more information about this news, visit https://atdata.com.