Discover the power of alternative data in credit scoring to enhance financial inclusion.
For decades, lending organizations have relied on credit history to assess borrowers.
This approach has shown clear weaknesses, such as limited financial inclusion, low predictive accuracy, and weak anti-fraud performance.
The solution is to use alternative data for credit scoring.
At RiskSeal, we focus on gathering alternative credit data using digital footprint analysis. So in this article, we’d like to share insights on the potential of alternative credit scoring based on our experience in the field.
Alternative data in the context of credit scoring is non-traditional information that is used to assess a person's creditworthiness.
Alternative data may include:
Cases of alternative credit data use by financial organizations:
To learn more about what is alternative data, check out one of our previous articles.
A digital footprint is a set of data that remains on the web as a result of a user's online activity.
Accounts, location data, and profile photos are digital footprints that lenders can use to get a clearer picture of an applicant.
How can digital footprint analysis help with credit scoring?
It gives lenders access to a variety of information about a borrower:
Solvency. Specific details can reveal a borrower's financial standing. For instance, using premium services, paid email hosts, or iOS devices can be positive indicators.
Behavioral insights. By analyzing digital footprints, lenders can understand behavioral patterns that may indicate a risk of default.
For example, irregular subscription payments suggest financial indiscipline. Signing up for gambling platforms indicates a tendency toward high-risk behavior. Making frequent online purchases late at night may signal impulsive spending habits.
Reliability of the data provided. Digital footprint analysis enables you to detect subtle inconsistencies between the information submitted in the application and actual data.
For instance, multiple online identities linked to the same user may signal potential data falsification. Similarly, a mismatch between the stated place of residence and the device's IP address could indicate suspicious behavior.
These alternative credit data sources are highly productive in assessing credit risk.
Through digital footprint analysis, lenders have access to these types of alternative data:
With just an applicant's email address, lenders can perform email lookup and access valuable insights:
The phone number lookup can be done using the applicant’s phone number. It allows lenders to:
IP address lookup provides additional alternative credit data into the applicant’s geolocation and online behavior:
Social networks offer valuable data on the borrower:
With 2.7 billion people shopping online, e-commerce activity data covers about 33% of the global population:
Paid subscriptions are a positive indicator for lenders, but further analysis is needed to understand the borrower’s financial situation:
Modern alternative credit data providers perform Name Matching to verify consistency across different sources:
Face match technology uses facial biometrics to compare multiple photos of the borrower:
No doubt analyzing digital footprint data brings many benefits to credit organizations. However, the process can be challenging.
Collecting customer data entails the challenge of ensuring its confidentiality.
The lender must implement strict security measures to prevent their misuse or leakage.
Each jurisdiction has its legal regulations regarding the protection of personal data.
For example, in Europe, lenders must meet GDPR compliance requirements. This allows them to comply with fair lending regulations and use customers' personal information lawfully.
Digital footprint data can introduce algorithmic bias.
This must be taken into account to avoid unintentionally discriminating against certain demographic groups.
It is important for lenders to respect the accuracy of alternative credit scores.
To do this, the consistency, reliability, and relevance of digital footprint data should be monitored.
Digital footprint data from different sources are often not standardized. This makes them difficult to integrate and interpret.
Alternative credit scoring models are typically “black box” in nature. That is, their solutions are impossible to understand and interpret.
Firstly, it contradicts the regulatory requirements of the regulators. Second, it reduces stakeholder and borrower confidence.
Many applicants do not fully understand the ways and purposes of processing their data. This may raise ethical concerns about the transparency of their use.
The RiskSeal Digital Credit Scoring system provides its clients with all types of alternative credit data discussed in this article.
With their help, it is possible to achieve the following results:
1. Financial inclusion. You can lend to people even if there's no information about them in credit bureaus. Our clients have doubled their approval rates within the first three months of using the data.
2. Improved predictive power of credit models. Using alternative data allows us to accurately identify unreliable customers. Our clients see a 25% reduction in defaults.
3. Improved customer experience. We gather over 300 data points for each borrower and provide a ready-to-use Digital Credit Score in just 5 seconds.