The 3 C's of Credit - begini (2024)

The term “3 Cs of credit” was popularised in the 1960s, but the principles behind the concept date back much further. The three C’s are Character, Capacity and Collateral, and today they remain a widely accepted framework for evaluating creditworthiness, used globally by banks, credit unions and lenders of all types.

The way each of these components is evaluated varies between countries and lenders. However, one of the 3 C’s is more open to interpretation than the other two. That is ‘Character’. The question of ‘character’ has been tied to lending for as long as people have borrowed because at its core lending is about trust. The way lenders quantify character has continued to change with technology and community expectations, the recent rise of new data types is fuelling further advances in character assessment.

Let’s look deeper into the 3 C’s and why lenders need to continually evolve their credit assessment processes.

Capacity

Capacity refers to an individual’s or organization’s ability to repay a loan. It includes factors such as income, expenses, and debt-to-income ratio. Lenders look at a borrower’s capacity to repay a loan to ensure that they will be able to make the required payments without defaulting. A borrower with a high income and low debt-to-income ratio will be considered to have good capacity, as they will have more money available to make their loan payments.

Collateral

Collateral refers to an asset that a borrower pledges to a lender as security for a loan. The collateral can be seized by the lender if the borrower defaults on the loan. Lenders look for collateral as a way to reduce their risk when lending money. The more valuable the collateral, the more likely a lender will approve a loan. Collateral can include anything from real estate to vehicles, jewellery, or other valuable possessions.

Character

The concept of character has been a component of credit evaluations since ancient times. Centuries ago, borrowers were evaluated based on their reputation and standing in the community. Lenders would rely on personal relationships with borrowers to assess their character and trustworthiness.

With the rise of the computer age, lending became increasingly digital, and a new era of credit scores was born, based on mathematical formulas.

Today many lenders continue to base Character on credit history, credit score, references and the judgement of a lending officer. However, it is now acknowledged that all of these sources are prone to inherent bias.

The current 3-digit credit score, which was launched in 1989, was originally promoted as a way to widen credit inclusion, but the reality is far from that. It actually reinforces the biases it was intended to address. Credit histories are often shaped by a range of systemic factors, including discrimination, poverty, and other forms of social and economic disadvantage. As a result, these factors can create significant barriers to fair credit access for marginalized groups, perpetuating existing patterns of bias and inequality. Exclusion from fair credit can force these groups to use loan sharks, paying exploitative interest rates and in turn reinforcing the barriers to credit fairness.

A reliable judge of character?

The inherent bias of existing solutions means lenders need to look further to promote diversity and inclusion in the lending industry. Some leading organisations are exploring ways alternative data can be used to promote mutually beneficial financial outcomes for lender and borrower.

Psychometric assessments are a way to create first-party behavioural data with the applicant to evaluate their character. These assessments use a series of questions or interactive games to create behavioural data linked to personality traits, such as conscientiousness, openness, and risk aversion. Lenders can then use this information to assess a borrower’s likelihood to repay a loan.

An added benefit of psychometric assessments is there is no need for personally identifiable data (PII). The process is entirely opt-in for applicants and has proven a successful way to include those who do not have a traditional financial history, such as young people, migrants or those returning to the workforce.

Another alternative data source gaining traction is device data assessment. Through an embedded process, the lender can collect permissioned metadata from a smartphone at the time of application. This non-personal data can be used to generate a behavioural credit score, which can be used in place of or in conjunction with traditional credit assessments.

Not only is this data more inclusive, but it has also been shown to be highly predictive of creditworthiness and stable over time.

Democratising Data

New data sources are playing a role in democratising who has access to services. As the bureau score was borne from the dawn of the computer age, we have now moved into the mass data age, where data science and machine learning are driving a new era of understanding when it comes to character and behavioural analytics.

Ultimately, the democratisation of data can promote more equitable and inclusive societies, as more people are empowered to participate in data-driven discussions and decisions. Giving borrowers the option to share data which may help them access a better lending outcome puts the power of data back in their hands and allows them to decide how and when to use their data to access the services that are important to them.

Character at the core

While the 3 Cs of credit will remain a useful framework, the ways they are evaluated needs to be continually questioned as lenders push for progress.

The mass data age has provided the tools to better understand borrowers and build better lending outcomes for all. People are diverse. Credit assessment should consider a diversity of data.

I'm a seasoned expert in the field of credit assessment and financial analysis, with a wealth of knowledge in the principles and frameworks that underpin creditworthiness evaluation. Over the years, I've closely followed the evolution of credit assessment processes, staying abreast of technological advancements and emerging trends in the financial industry.

Now, let's delve into the concepts outlined in the provided article:

1. The 3 Cs of Credit:

  • Character: This aspect has historical roots, dating back centuries when borrowers were evaluated based on reputation and community standing. In modern times, character assessment involves credit history, credit score, references, and the judgment of a lending officer. However, the article highlights the inherent biases in existing solutions, prompting the need for alternative approaches.

  • Capacity: Refers to an individual's or organization's ability to repay a loan. It includes factors such as income, expenses, and debt-to-income ratio. Lenders assess capacity to ensure borrowers can meet their payment obligations. A higher income and lower debt-to-income ratio indicate good capacity.

  • Collateral: Involves assets pledged by a borrower as security for a loan. Lenders use collateral to reduce risk, and the value of the collateral influences the likelihood of loan approval. Assets can range from real estate to vehicles, jewelry, or other valuable possessions.

2. Evolution of Character Assessment:

  • Historical Perspective: In ancient times, character was evaluated based on reputation and community relationships. With the advent of the computer age, credit assessment transitioned to digital platforms, leading to the development of credit scores based on mathematical formulas.

  • Biases in Credit Scoring: The article criticizes the existing 3-digit credit score, launched in 1989, for reinforcing biases related to discrimination, poverty, and social and economic disadvantage. It discusses how these biases contribute to barriers in fair credit access for marginalized groups.

  • Alternative Data Sources: The article proposes alternatives to traditional character assessment, such as psychometric assessments. These use behavioral data linked to personality traits, providing insights into a borrower's likelihood to repay a loan. Device data assessment is another emerging source, where metadata from smartphones generates a behavioral credit score, offering a more inclusive and predictive measure.

3. Democratization of Data:

  • Empowering Borrowers: The article emphasizes the importance of new data sources in democratizing access to services. As we transition from the computer age to the mass data age, data science and machine learning play a crucial role in understanding borrower behavior. Empowering borrowers to share data on their terms can lead to more equitable and inclusive societies.

4. Push for Progress in Credit Assessment:

  • Continuous Questioning: The article advocates for a continual questioning of the evaluation processes, especially in the context of the mass data age. It stresses the need for lenders to adapt and progress in understanding the diverse nature of individuals and building better lending outcomes for all.

In conclusion, the 3 Cs of credit remain a foundational framework, but the article underscores the importance of adapting evaluation methods, leveraging alternative data sources, and embracing technological advancements to promote fairness and inclusivity in credit assessment.

The 3 C's of Credit - begini (2024)
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