How eCommerce Providers Can Remove ATO from Their Carts

Fraud
Management/mitigation
Multi-factor Authentication
Account Takeover
Angie White -- iovation
Feb 27, 2019
Webinars
Data breaches frequently employ weak or stolen passwords, and contribute to the billions of dollars lost annually to takeovers of customer accounts. In this webinar, iovation looks at the impact account takeovers have on online retailers, along with common ATO attack methods and symptoms. The focus then shifts to device-based multi-factor authentication and how eCommerce companies can use it to simultaneously achieve a low friction, low risk purchasing experience. The broadcast concludes with a brief Q&A session.

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