Archives

Socure Launches Newest Sigma Synthetic Fraud Model Adding Unrivaled Precision to its Identity Fraud Suite

Socure Launches Newest Sigma Synthetic Fraud Model Adding Unrivaled Precision to its Identity Fraud Suite

Socure, the leading provider of digital identity verification and fraud solutions, announced the debut of its newest Sigma Synthetic Fraud model, a synthetic identity fraud detection solution that identifies manipulated and fabricated identities with unmatched precision. Core to the precision of Sigma Synthetic Fraud is the integration of two critical fraud-fighting features: powerful machine learning technology (ML) and expert fraud investigators. The Department of Justice has said that synthetic identity fraud is the country’s fastest growing financial crime.

Socure combines the knowledge and expertise of fraud investigators with the computational and statistical capabilities of advanced ML, making its solution highly effective in detecting synthetic identity fraud. A human-in-the-loop approach alleviates concerns about bias in the ML model and simultaneously enhances model performance.

Also Read: Entertainment Technology Company StoryFit Closes $5.5 Million in Series A Funding

With Sigma Synthetic Fraud, Socure fraud investigators provide clean, corrected, and properly classified fraud labels for unlabeled or mislabeled raw data. The labeled data, based on actual synthetic incidents and patterns, becomes training data. Thus, the model is trained to think like a fraudster and applies this intelligence to become smarter at detecting evolving synthetic threats. This unique machine-human intelligence can be used to identify synthetic identities at onboarding, account changes and uncover “sleepers” hiding within portfolios.

Additional enhancements include new sources of credit header and inquiry data, which when combined with existing data sources and internal velocity data, helps with risk signaling and identifying anomalous synthetic patterns. This synthetic-enriched data enables the creation of over 4,000 new synthetic-specific features, including patterns distinguishing between typographical errors and international manipulations on names, Social Security numbers (SSNs), and date of births (DOBs). These new features train the ML algorithms to generate synthetic-specific patterns which inform the fraud score and result in a state-of-the-art interpretable ML model.

Synthetic identities are cobbled together by fraudsters using a mixture of factual and falsified identity information—often with great care over months and years—to create the appearance of a credit-worthy consumer, small business or gig worker. Typically, these synthetic identities enable criminals to open demand deposit accounts (DDAs), which they then use to perpetrate nefarious activities like money laundering, drug or human trafficking and P2P scams. This is one reason why Zelle scams, now at the center of an investigation by U.S. lawmakers, have become so costly and difficult to stamp out.