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Creating a successful fraud solution from the ground up
技术
- 分析与建模 - 机器学习
适用行业
- 零售
适用功能
- 销售与市场营销
用例
- 欺诈识别
服务
- 数据科学服务
挑战
Wanelo, a global marketplace for Gen Z, was facing a significant challenge with spammers and scammers. As the company evolved from a social shopping site to a marketplace, it started experiencing payments fraud. The fraud showed up in the form of disputes, with both friendly and scammy customers demanding 'charge not authorized' chargebacks. Nearly 70% of their chargebacks could be attributed to friendly fraud, which was a unique challenge to address because such customers often look like good and valuable users – until they decide that they don’t want to pay. Wanelo’s job then was to convince the bank that the customer is committing chargeback fraud. As more fraudsters attempted bad activity and Wanelo’s chargeback rate crept up to 0.87% – including friendly fraud – Courtney Bode, Marketplace Operations Manager, turned to the system that had worked so effectively for the social side of the company.
关于客户
Wanelo is a shopping app built to connect people with merchants. Through the mobile-focused marketplace, consumers can connect, discover, and buy millions of fashion and lifestyle products directly from global sellers. Wanelo is where Generation Z shops, providing a unique shopping experience that is as much about community and conversation as it is about buying. What began as a social shopping site evolved into a marketplace last year and has seen the number of sellers grow 5x since its inception. The company is headquartered in San Francisco with 90% of its user base in the U.S., but Wanelo also has remote teams globally to support its marketplace around the clock. Currently, fraud falls under the Marketplace Operations team, which executes all manual order review and order disputes.
解决方案
Courtney decided to apply Sift’s machine learning solution to their new challenge. With the launch of the Sift Formulas feature, the Wanelo team adopted this automation tool and used it as the foundation of their fraud prevention system. As existing Sift users, Wanelo turned to their Sift Account Manager to assist with reshaping their business needs of the solution. In about one week, a pair of engineers fully integrated the additional APIs necessary to connect Sift Formulas with Wanelo’s internal order management system. After training with Sift’s Solution Engineers and overhauling their label history, Wanelo was able to immediately see useful and reliable Sift Scores.
运营影响
数量效益
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