Industry
Online Lending
Use Cases
Credit scoring
Automation and efficiency
About
Solventa is the leading Fintech provider of immediate loans in Colombia, Peru and Mexico. It qualifies individuals and SMEs in minutes, facilitating greater financial inclusion across those countries
Before SEON
With SEON
Challenge
For Solventa and other companies in the consumer lending sector, the impact of fraud is widespread. Fraudsters are constantly attempting to steal IDs and impersonate customers to secure a loan they won’t repay.
Therefore, Solventa needed to identify potential fraudsters, without adding unnecessary onboarding friction which could slow down its rapid loan disbursements – a key factor in its service.
Solventa also knew there was a large market for under/unbanked individuals which alternative data would be able to provide a background for, along with data for determining risk/ratio of likelihood to default on payments.
Solution
By implementing SEON’s rapid real-time API module Solventa could check its customer’s social and digital footprint with only their phone, email, or IP address. With it, Solventa gained insight into its customer’s financial stability and therefore risk of default or fraud.
Solventa also applied SEON’s in-depth custom risk scoring system to its customers. Immediately opting to accept them for a loan, or to be reviewed if the likelihood of fraud or default was high.
We are currently implementing SEON into our Credit scoring flow as an added ID and security step. Other key variables, especially those associated with email registration and phone history dates, serve as credit predictors as well.
Lucrecia Vera
Partner at Solventa
By using alternative credit data from SEON’s email and phone lookup, Solventa can see whether a loan applicant has any of the 90+ social and digital accounts, such as LinkedIn, Facebook or AirBnB. This gives a strong indication of whether they are either a fraudster who is using fake details, or a legitimate person who has a lack financial means to repay the loan.
For example, while a fraudster is likely to have little to no digital footprint, accounts such as LinkedIn can be checked to assess a real applicant’s employment status and ability to repay a loan. Meaning Solventa can use this data to evaluate the size of the loan they are willing to offer,
Solventa further benefited from SEON’s capabilities and used SEON’s Machine Learning (ML) with the detailed labeling API to feedback data to the system. SEON’s whitebox ML then suggested new fraud prevention rules, based on locations, device fingerprinting and social signals.
Results
SEON’s support resulted in a 25% drop in fraudulent transactions, which in turn lowered the cost of non-payment.
Furthermore, Solventa improved its risk-scoring models. When layered with SEON’s machine learning data, accuracy then improved by a further 15%.
- 25% drop in fraudulent transactions
- 15% increase in the accuracy of the machine learning models in detecting fraud
- Fewer defaulting loan repayments
- Expansion into underbanked markets
- Savings on costly biometric and ID validations
- Increased productivity for manual reviews
75%
reduction in manual review time
95%
of fraud checks automated
15%
increase in the accuracy of the machine learning models in detecting fraud
In her final comments on the partnership with SEON, Lu mentioned the great collaboration with SEON’s customer support team:
For more information on Solventa, please visit www.solventa.co www.solventa.mx or www.solventa.pe