LexisNexis® Risk Solutions Enables NewDay to Increase Fraudulent Application Detection to 70%
公司规模
1,000+
地区
- Europe
国家
- United Kingdom
产品
- LexisNexis® ThreatMetrix®
- LexisNexis® Digital Identity Network®
- ThreatMetrix Smart ID
技术栈
- Digital Identity Intelligence
- Proxy Piercing Technology
- Deep Connection Analysis
实施规模
- Enterprise-wide Deployment
影响指标
- Cost Savings
- Customer Satisfaction
- Productivity Improvements
技术
- 分析与建模 - 预测分析
- 应用基础设施与中间件 - 数据交换与集成
- 网络安全和隐私 - 身份认证管理
适用行业
- 金融与保险
适用功能
- 商业运营
- 质量保证
用例
- 欺诈识别
服务
- 软件设计与工程服务
- 系统集成
关于客户
NewDay is a major financial services company, providing millions of customers with products and services in the Near Prime and Co-Brand credit market sectors. Its proprietary risk management models and segmented approach enable them to tailor products to meet the specific needs of their customers. Some of NewDay’s partners in the Co-Brand sector, which provide loyalty rewards and special offers, include established retailers such as Amazon, Debenhams, House of Fraser, Arcadia Group, and Laura Ashley. NewDay also operates three brands in the Near Prime sector – Aqua, Marbles, and Opus. NewDay’s innovative credit offerings include an instant spend service in which customers can purchase credit cards online that are then instantly activated for immediate use.
挑战
As the largest non-bank card issuer, NewDay faced significant challenges from fraudsters exploiting stolen identity credentials to open credit cards online. At one point, up to 70% of NewDay applications were fraudulent, making it overwhelmingly difficult to identify good customers with established credit history from fraudsters attempting to impersonate them. Relying solely on static identity verification methods such as external bureau data proved to be ineffective, as millions of credentials have been compromised in data breaches and sold on the dark web. NewDay needed a more holistic approach to differentiate legitimate customers from fraudsters, enabling them to verify a user’s true identity in near real time.
解决方案
Leveraging LexisNexis® ThreatMetrix® digital identity intelligence, NewDay can reliably detect fraudsters attempting to apply for new credit cards using stolen identity credentials that compromise good customers’ established credit. NewDay can also differentiate good customers from fraudsters in near real time, reducing friction for customers utilizing their instant spend service. The LexisNexis® Digital Identity Network® collects and processes global shared intelligence from millions of daily consumer interactions including logins, payments, and new account applications. Using this information, the ThreatMetrix solution creates a unique digital identity for each user by analyzing the myriad connections between devices, locations, and anonymized personal information. Behavior that deviates from this trusted digital identity can be reliably identified in near real time, alerting NewDay to potential fraud. Suspicious behavior can be detected and flagged for review, step-up authentication or rejection before a transaction is processed, creating a frictionless experience for trusted users.
运营影响
数量效益
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