What Is Synthetic Identity Fraud?
Synthetic identity fraud is a type of fraud that involves creating a fictitious identity by combining fake and real personal information. Criminals use these identities to defraud businesses, bypass KYC checks, exploit promotions, obtain credit, make purchases with stolen cards, and launder money. This type of fraud is difficult to detect because it blends authentic and fake data, making the synthetic identity seem legitimate, posing a significant and growing threat to the financial sector and other industries reliant on accurate identity verification.
Fraudsters create synthetic identities by altering genuine ID data, such as changing birth dates or social security numbers, combining real personal information from various sources, or fabricating entirely new identity elements, like randomized social security numbers. Regardless of their makeup, it is crucial for businesses to quickly identify synthetic identities. Early detection is essential because these fraudulent identities often lead to more complex fraud schemes.
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How Are Synthetic IDs Created?
Synthetic ID creation typically follows these 4 steps:
- Identity Creation: The fraudster blends stolen, manipulated, or entirely fabricated data to create a synthetic identity. For instance, they might use a real but inactive social security number stolen from a child.
- Credit Application: Initially, the fraudster applies for credit to establish a credit history for the synthetic identity. This often requires multiple attempts as lenders are cautious with new, unproven identities.
- Building Credit: Once approved for a small line of credit, the fraudster meticulously builds a positive credit history by making regular payments. This improves the synthetic identity’s credit score over time.
- Exploiting Credit: With an enhanced credit score, the fraudster applies for larger lines of credit, eventually withdrawing funds and disappearing. This process can span months or even years, but offers significant financial gain for the criminal.
Variations of synthetic identity fraud include paying individuals with good credit to link their accounts to the synthetic identity, creating fake digital footprints on social media, and using fake checks to temporarily repay credit lines before maxing them out again.
Dangers of Synthetic Identity Fraud
One of the biggest dangers of synthetic identity fraud is that it is hard to catch. As reported by Forbes, synthetic identity fraud could cost businesses nearly $5 billion by 2024.
More often than not, the end goal is to bypass KYC screening, which may damage your business in numerous ways, including:
- KYC and compliance fines
- Loss of trust and brand reputation
- Legal issues with the rightful ID holders
Synthetic identity fraud, responsible for 80% of credit card fraud losses and nearly 20% of chargebacks, significantly impacts both payments and consumers. Particularly in countries relying on static PII like Social Security numbers, victims may face fraudulent loans, damaged credit scores, and legal issues. Clearing one’s name can be a long, costly process, taking up to 200 hours, according to the SANS Institute.
Synthetic Identity Fraud Detection
Synthetic identity fraud is notoriously hard to detect, as it is specifically designed to fool anti-fraud measures. However, companies can deploy a number of powerful features to identify users beyond the standard KYC checks.
1. Leverage Digital Footprint Analysis
Online digital footprint analysis is designed to identify people without relying on ID documents or biometrics. It’s a fantastic way to pre-screen for KYC checks, but also to instantly flag potential synthetic ID fraud.
Digital footprint analysis includes email and phone number analysis, which also lets you link data to social media profiles. This has a number of positive results for companies as you can:
- Use social media profiles to confirm identities.
- Flag users with no social presence
- Mark high-risk customers based on the kind of social networks they have joined.
Similarly, customers who sign up with virtual SIM cards, fake phone numbers or invalid email addresses should at least be considered high risk for your business.
2. Extract More Data With IP and BIN Lookups
Another way to spot suspicious identities is to find red flags in user’s alternative data, such as IP addresses or card numbers. In fact, you could even combine both tools to spot inconsistencies, such as a card issued in one country, and an IP pointing to another.
As is always the case with this kind of granular data, it’s not enough to claim an identity is fraudulent. You have to combine as many data points as possible to create a user profile and flag the suspicious ones accordingly.
3. Deploy Device and Browser Fingerprinting
If fraudsters are successful once, they tend to target the same companies multiple times. The challenge for them isn’t to create hundreds or thousands of synthetic IDs; it’s to make it look like each of these is connecting to your site as a new and legitimate user.
A device fingerprinting module can identify the tools that a fraudster relies on to spoof different users and devices. This is done by extracting data relating to their configuration of software and hardware, allowing you to spot:
- unique browser setups
- suspicious hardware configurations
- emulators and virtual machines
Moreover, device fingerprinting lets you create hashes for each unique configuration, which lets you spot connections between users and instantly flag repeat offenders.
4. Identify Fraudulent Behavior via Velocity Rules
In fraud prevention, velocity rules help identify user behavior, especially in sophisticated attacks or those involving money mules using real IDs. These rules analyze various data points, such as how quickly a user completes KYC or authentication, whether a social security number is entered in one keystroke, or how often a similar browser setup appears. This allows detection of suspicious behaviors, even from fraudsters already infiltrating a platform.
5. Enable Machine Learning Suggestions
A whitebox machine learning system is particularly adept at spotting patterns that point to synthetic ID fraud. By extracting all the data mentioned in the points above (device, IP, card, behavior) and feeding it to the system with the right labels, you can expect insights that no analysts could have extracted.
If you are consistent in your reporting and use enough feedback mechanisms, you can begin getting suggestions that may point to the most undercover and sophisticated fraud. Best of all, the efficiency will improve over time, and the rules are based on your own historical business data.
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How to Prevent Synthetic Identity Fraud
While there is very little you can do about a data leak (except minimize the amount of personal information you give out to third-party companies), all of the other exploits can be mitigated with common sense and basic security measures. These include:
- Creating unique, complex passwords: you may use a password manager or browser feature designed to create hard-to-guess passwords. Avoiding reusing the same passwords is key to reducing risk.
- Be suspicious of online/phone interactions: it’s a sad reality, but any kind of online interaction with strangers could potentially link to social engineering. Exercise due diligence, whether you’re using a dating app, selling items on an online marketplace, or making a payment to a new online store for the first time.
- Deploy cybersecurity and fraud prevention tools: antivirus, 2FA, encryption… These tools are easier to leverage than you might think, even for the less tech-savvy.
- Regularly review your credit reports: one of the earliest signs of identity theft will be suspicious financial activity. Credit monitoring can help flag inaccuracies and prevent further damage before it’s too late.
- Be mindful when handing out PII: any online or offline interaction that requires you to submit personally identifiable information (PII) should be carefully considered, whether it’s a social security number (SSN) or a copy of your passport, or even your full name on social media.
- Consider your relatives’ ID: criminals have been known to stoop as low as to steal children’s IDs to open credit lines in their name. Some parents take preventive action by freezing child credit reports.
Conclusion
Criminals have access to a growing number of resources to create synthetic IDs. For targeted companies, it’s not enough to simply implement static ID checks and fraud rules, and leave them to run on autopilot.
However, you don’t have to waste all your resources on intensive manual reviews for identity proofing. Using sophisticated risk tech, you can combine tools to create a net that will filter out bad users, and only allow in those who will help your company reach its goals.
Frequently Asked Questions
If you notice strange payments on your statement or start receiving suspicious emails, it’s possible some of your ID documents have been stolen and used for synthetic IDs.
To create a synthetic identity, you need some kind of real document to begin with. It could be a name, address or social security number. The fraudster then modifies or tweaks the information for their need.
Synthetic IDs are harder to detect than made-up, completely fake IDs because they contain an element of truth (the person’s ID documents). This is why fraudsters use them to bypass KYC checks or for fraudulent transactions, among others.
Fraudsters rely on any identifiable information they can find, including tax-related information, medical records, social security numbers, and even children’s identity records.
You might also be interested in reading about:
- SEON: Best Fraud Detection Tools & Software
- SEON: KYC Software and Tools in 2024
- SEON: Fraud Detection: Its Importance & How to Choose the Right System
Learn more about:
Digital Footprinting | Device Fingerprinting | Fraud Scoring | Fraud Detection with Machine Learning & AI
Related Source for this article:
- BBC: I was a teenage ‘money mule’
- Federal Reserve: Synthetic ID Fraud in the US Payment System
- Comparitech: Identity theft facts & statistics: 2019-2022
- Experian: Experian’s 2023 Future of Fraud
- IEEE: DeepFake Detection for Human Face Images and Videos: A Survey
- Forbes: Socure Report Examines Rise Of Synthetic Identity Fraud