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The Future Of Credit Worthiness

Historically credit worthiness has been determined on a set of discretionary and sometimes nebulous criteria that help lenders determine the risk of a borrower defaulting on a loan. These models have traditionally been based on statistics that make general assumptions about borrowers. Data openness and advances in analytics are enabling fintech companies to devise more sophisticated and accurate methods to assess an individual or a business credit worthiness, creating greater transparency for lenders and borrowers alike.

By Chris Crespo

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You are being judged. Whether you like it or not, if you use financial products, you are regularly judged and scored by agencies and financial institutions on a set of discretionary criteria that defines whether you or your business is deemed worthy of financial services like a line of credit, a mortgage, or a personal loan.

Credit worthiness is typically assessed on five areas of financial activity: 1. Length of credit history 2. Amount of new credit available through credit cards or other financial products 3. Different types of credit owned, for example personal loans, car loans or mortgages 4. Past consistency in meeting payment obligations 5. Previous use of available credit

The idea behind a system that judges our credit worthiness is that our past financial behaviour is the best predictor of how we are likely to behave in the future, and this helps banks and other organizations, determine how much risk people, businesses and governments represent as a trading partner or a debtor. However, credit worthiness models are outmoded, based on gross generalizations and not entirely accurate. A perfect storm for disruption.

It’s all in the data Fintech companies have been able to deploy their technological prowess to develop new digital business models that run on data. It is the extraction, crunching and transfer of data that give Fintechs and edge and enable them to create delightfully seamless experiences for customers. But within the data are often hidden patterns of behavior that reveal much about an individual or a business purchasing habits, preferences and relationships to other businesses and institutions.

By combining multiple sources of data, Fintech companies are now able to identify broader patterns that more accurately predict our likelihood to honor our financial commitments. How long we’ve been with our mobile phone provider, how often we’ve been late on paying our bills and whether we overindulge in pizza at the end of the month are all likely to show up in our bank’s data. When aggregated into a higher fidelity score, banks and other financial organizations can make better judge-

Kim Lundberg

Country Manager, Ark Denmark ments on credit worthiness, reducing the incidence of non-performing loans, and helping customers make the right choices on their use of financial products.

Good for lenders and borrowers Danish fintech Subaio was founded in 2016 with the aim to empower bank customers to identify and manage recurrent payments. An unidentified charge in the founder’s bank statement, led him and his founding team to develop an entire solution optimized to easily find and cancel recurring payments originating from unwanted subscriptions. What Subaio have come to realize is that by finding the recurring payment data, they are also able to document exactly how much money a customer earns and spends, shedding more light into how much a customer should be able to get in a credit line.

“By building a credit worthiness assessment on the actual transactions, instead of statistics, which is what has been done historically, banks can give loans to people who have the ability to pay them back” says Soren Nielsen, COO at Subaio, “and that also goes for buy-now-pay-later companies, leasing companies, consumer finance companies and others” he adds.

By building a credit worthiness assessment on the actual transactions, instead of statistics, which is what has been done historically, banks can give loans to people who have the ability to pay them back.

Soren Nielsen, COO at Subaio

Transparency is the new currency of trust Banks and consumers are not the only ones benefiting from this trend, high growth technology startups are ripping the benefits from new credit worthiness data-based assessment models too. Swedish financial startup Ark Kapital is an intersection between a lending business and a data business that provides loans to technology companies with high growth potential. To assess the potential growth path and profitability of these companies, Ark plugs into their raw data and bring it into their loan assessment. That information is also made available to the companies through a live dashboard, that provides 24/7 transparency of the analysis and trends that Ark looks into.

“As a lender you ask for a business plan, and the complete financial model. We do that as well, but on top of that we collect data from the startups software services to see how they acquire customers, how their customers behave and engage. All that additional data provides us with another picture for us to have comfort in making long term loans which is what we do” says Kim Lundberg, Country Manager at Ark Denmark.

Only the beginning It’s fair to say that fintechs have only just started to scratch the surface of what’s possible to do with customer data. As more sophisticated insights and foresight models emerge, the possibility to have highly customized credit assessment models will become a reality. However, companies, regulators and customers will face the increasing challenge of determining, how much data is enough and how far into our personal lives we allow the companies we transact with to go, to deem us worthy of their services.

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