
Accertify, Inc., a leading provider of fraud solutions for merchants, airlines and financial institutions, today announced the launch of its latest proprietary machine learning capabilities that now include dynamic risk vectors – a technology which aggregates and transforms information from a diverse set of sources to identify emerging fraud risks and attacks.
These new risk vectors are a powerful extension to Accertify’s existing machine learning capabilities. The dynamic risk vectors leverage information from those members of Accertify’s client community that opt to participate in the service, in which new variables are created to identify fraud trends as they evolve. Variables include real-time fraud trends by location and with specific airline routes.
“This advanced capability aggregates and creates new predictive variables dynamically with fraud signals from transactions across participating Accertify customers,” said Randy Ruiz, Chief Technology Officer, Accertify. “We are constantly focused on developing new and innovative ways to leverage the billions of transactions we analyze to enhance our artificial intelligence capabilities and help deliver improved results for our customers. These dynamic risk vectors are the latest evolution of our approach.”
Accertify is expanding its enhanced machine learning models to the retail and digital marketplace verticals.


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