Credit Kudos, the Open Banking credit reference agency, has launched Signal, a highly accurate, explainable Open Banking credit score to help lenders serve more customers, reduce defaults and evidence risk decisions.
Available now, the score enables lenders to move beyond the limitations of traditional credit data, allowing them to accurately score all applicants, not just those with credit history. Signal helps lenders quickly and accurately predict risk using highly relevant and up-to-date financial behaviour data, as well as using machine learning with clear explainability – so lenders can understand the rationale for compliance purposes and the risk profile of their population.
Signal uses a combination of machine learning and Open Banking-gathered transaction data to accurately predict an individual’s likelihood of repayment. The model has been trained on transaction data and loan outcomes, collected for more than six years. It ensures the data is highly accurate and more detailed than what lenders have access to through traditional credit data.
nd evidence the decisions driven by machine learning, allowing them to fulfill regulatory requirements around transparency and fairness. It does this by surfacing the five features that most contributed to the person’s score.
One lender using the Signal credit score for those previously declined found that it could accept a third more applicants, while maintaining its default rate – showing there was no additional risk to taking on more applicants that they would previously have declined based on traditional, non-Open Banking credit scores. When used for all decisions they found it could reduce overall default rates from 11.7% to 9.7%, whilst increasing acceptances from 17.5% to 29.8%.
Freddy Kelly, CEO of Credit Kudos said “Credit scores based on traditional credit data is not only limited but can lead to lenders wrongly declining those who are creditworthy. Our new Open Banking-powered credit score, Signal, allows lenders to accurately assess all applicants – including those with thin files – meaning they can safely increase acceptances without increasing risk or defaults. It is highly accurate, fast, and wholly explainable, all of which are integral features to helping lenders make better, more informed and responsible decisions.”