Transitioning from legacy fraud solutions like Kount may be easier than you think.
Fraud solution offerings have come a long way. Decision accuracy took priority in the mid-2000s and early 2010s, giving any provider that offered flexible custom rule builders an edge over the competition. Companies like Kount did a good job meeting market expectations at the time—but things started to shift when Sift entered the fraud prevention market with advanced, authentic machine learning (ML).
Machine learning was already being used to fight fraud in financial services, albeit using less sophisticated models and data analysis. But it hadn’t been deployed at scale, or applied across different types of e-commerce businesses. In 2011, Sift entered the market and changed the game, bringing sophisticated ML capabilities to the trust and safety sector that could be effectively used across multiple industries and business types, even as they grew in size and expanded into new regions.
Over a decade later, many rules-first fraud solution providers are still scrambling to catch up by deploying machine learning models that overlap with rules, or that offer less clear decision explainability—in other words, it’s not easy to understand what specifically contributed to the recommendation provided by the solution.
In addition to decision engine challenges, legacy solutions have also fallen behind when it comes to user experience within case management tools. The vast amount of data generated in each customer interaction can be overwhelming and challenging to present meaningfully to analysts striving to uncover the story behind a transaction—a necessity for them to accurately assess it.
Legacy solutions like Kount tend to display data in a way that requires fraud analysts to go on a digital scavenger hunt, clicking around to look at different areas of the tool, and then comparing what they see in order to come to a conclusion. In contrast, Sift guides analysts to take specific actions by summarizing and displaying relevant signals that contributed to a Sift score. This reduces the time spent on each investigation, resulting in significant productivity gains.
Kount claims that they combine supervised and unsupervised machine learning insights into a single score that’s then delivered to risk analysts. However, Kount’s transaction details page (where fraud analysts perform reviews) displays the following:
Although more decision outputs may seem like an advantage, when they are cryptic and conflict with each other, they quickly become a disadvantage.
In contrast, Sift displays deeper insights that don’t require analysts to consistently reference product specs to decipher. Sift offers a comprehensive suite of fraud prevention tools, including step-up authentication, chargeback prevention, and account protection. Businesses that migrate to Sift can tap into all of these tools from a single, intuitive Console and apply them across the user journey. By simplifying the tech stack, and aligning and integrating fraud prevention efforts from account creation to dispute, digital risk teams get complete transparency into data and decisioning.
We differentiate ourselves in both backend decisioning technology and front-end user experience in a number of ways:
Moving from a collection of point solutions to a single platform also drives efficiency and accuracy—data from various sources can be seamlessly integrated and analyzed to identify complex fraud patterns that may have otherwise gone unnoticed by merchants using disparate systems.
See how Sift’s Digital Trust & Safety Platform stacks up against the competition.
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*** This is a Security Bloggers Network syndicated blog from Sift Blog authored by Coby Montoya. Read the original post at: https://blog.sift.com/securing-your-competitive-advantage-with-sift/?utm_source=rss&utm_medium=rss&utm_campaign=securing-your-competitive-advantage-with-sift