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A

Adaptive Fraud Models

Adaptive fraud models use machine learning to evolve in real time as new fraud patterns emerge. Hellgate®’s Specter module employs adaptive algorithms trained on live transaction data to detect anomalies and recalibrate risk scores automatically. This continuous learning ensures merchants stay ahead of emerging fraud tactics and regulatory expectations.

Related

T

Token Vault

N

Network Tokenisation

P

PCI DSS Compliance

R

Real-Time Payments

E

Embedded Finance

Latest News

Press Release

Feb 2, 2026

Vitality by Design: The New Hellgate® Identity

Press Release

Feb 2, 2026

Vitality by Design: The New Hellgate® Identity

Fraud Prevention

Jan 23, 2026

Transforming Fraud Prevention with Visa Decision Manager and Hellgate Specter

Fraud Prevention

Jan 23, 2026

Transforming Fraud Prevention with Visa Decision Manager and Hellgate Specter

Vaulting

Jan 15, 2026

Tokenization as a Service: The Infrastructure-First Approach to Data Security

Vaulting

Jan 15, 2026

Tokenization as a Service: The Infrastructure-First Approach to Data Security

Product of starfish.team

Hellgate® CPA

Composable Payments Architecture

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Specter

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Product of starfish.team

Hellgate® CPA

Composable Payments Architecture

Commerce

Hub

Guardian

Specter

Link

Pulse

Company

About

Careers

News

Partners

Trustcenter

Terms & Conditions

Data Protection

Imprint

Solutions

FAQ

Glossary

Book a demo

© 2026 All rights reserved

Docs

Login

Product of starfish.team

Hellgate® CPA

Composable Payments Architecture

Commerce

Hub

Guardian

Specter

Link

Pulse

Company

About

Careers

News

Partners

Trustcenter

Terms & Conditions

Data Protection

Imprint

Solutions

FAQ

Glossary

Book a demo

© 2026 All rights reserved

Docs

Login