The COVID-19 pandemic had a significant effect that ended previous credit cycles in most industries. As these industries slowly return to their normal activities, new credit cycles will start, offering unique and innovative lending firms a rare opportunity to enter credit markets and win industries like insurance firms, utilities, and other non-conventional lending firms to join the industry win market shares.
Although financial institutions provide solutions to important shares of the public, huge segments of customers are not served or underserved. New-to-market financial institutions can identify various lending coverage gaps and try to bridge these gaps.
A lot of potential consumers would like tailored and innovative solutions that are not always cost-effective and cost-efficient for conventional financial institutions. Companies new to this industry can design new and unique offerings a lot quicker and are burdened by legacy infrastructure and processes.
They can move from concepts to well-developed offerings in four to twelve weeks, compared to one to two years for previous systems. Unlike these previous systems, these new companies may not have lending operations, and there is a good chance that they will not serve clients with credit history.
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They likely do not have the necessary lending infrastructure, reference information, and credit-risk models. While they develop these abilities, they will need to take structured approaches to manage the risks that come with this business. New lenders could include conventional banks expanding their market share and nonbank financial institutions like credit unions and online lenders.
These companies need to actively manage their credit-risk decisions, as well as manage enabling technology. Firms can move a lot fasterand still taking the right credit risks by doing the necessary advanced work to establish credit-decision platforms. To that end, new lenders could follow this four-part framework.
Use information from various sources
To model credit risks, new lending companies need to aggregate information from various sources. They can make up for their lack of credit expertise by getting diverse information, including their own exclusive data. Some conventional credit demographic and behavior info classifications are readily available, especially for more established monetary institutions.
It includes loan info from financial institutions, deposit dates with conventional banks, current-account data, as well as POS or point-of-sale transaction info. Nonfinancial firms have other internal sources of their client information like website navigational data, customer feedback, email records, call records, interactions with the client-relationship management team, and product usage.
Respecting every applicable privacy guideline and regulation, lending firms can use data from other sources. It includes external info from sources like government agencies, traditional banks, utility providers, telecommunications firms, and retailers. Getting the needed info through partnerships may be a platform worth exploring for certain kinds of lenders.
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This strategy is a joint venture with organizations that have complementary info about client segments. It may be pretty suited to lending companies with a regional presence. An approach taken by telecommunication companies is instructive.
Firms can launch unsecured cash-loan products to serve their clients who have no access to formal credits. The challenge was that organizations have little to no credit info readily available to develop various offerings. In response, organizations turned to their customer-usage info – specifically to data on mobile bill payments of customers.
This info enabled organizations to device proxy target variables that they can use to train their credit models. When back-tested for development, these target variables performed the same way traditional credit-related info would for traditional banks. From this point, the organization will be able to extend credits to their prepaid clients through pilot models, which they can refine depending on real-world info.
Create a decision engine
The next big step is to create a decision engine. In this part, new entrants will have a huge advantage over existing financial institutions with legacy software that they don’t want to change. This latest decision engine can be built using machine learning, advanced analytics, and other relevant tools that capitalize on agility and speed.
By using a machine learning process, new-entrant organizations will be able to automate more or less 95% of underwriting procedures while making accurate credit decisions. Real-time machine-learning solutions can also improve limit and pricing settings, as well as help organizations monitor existing credit lines and clients through a smarter early-warning system.
Lending organizations can also use various straight-through processing to help them generate faster transactions, as well as a better customer experience. The design of these decision engines can be modular to achieve optimum flexibility. It will allow financial institutions to retain total control of their strategic processes while possibly outsourcing other components.
Modular formats can also facilitate various risk assessments. This approach involves some steps completely merged from the front to back end of the platform. It is designed for quick and objective decision-making. This type of approach to these assessment contrasts with these engines in place at most big organizations.
This conventional setup is usually a massive and single system incorporating all aspects of the process, from checking the client’s creditworthiness to important printing documents. It is increasingly outdated since it constrains incumbent lending organizations from adapting a lot quicker.
Depending on the company’s experience, applying faster implementation and development can minimize the launch time for credit engines to less than six months compared to almost one year for conventional approaches. For instance, one European bank wanted to launch an online lending unit. They were hindered by entrenched processes and legacy systems, which created a long development time for their new offering.
To manage this situation, financial institutions such as traditional banks, credit unions, or lending firms designed suitable modular credit-decision engines that can blend parts of their existing system, as well as enable their team to develop modules where they are needed. Because of this solution, the result was a faster time for the company to market their newly-launched online product or service.