Credit Risk Analysis Models (2024)

Tools used to determine the probability of default of a potential borrower

Written byCFI Team

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Financial institutions used credit risk analysis models to determine the probability of default of a potential borrower. The models provide information on the level of a borrower’s credit risk at any particular time. If the lender fails to detect the credit risk in advance, it exposes them to the risk of default and loss of funds. Lenders rely on the validation provided by credit risk analysis models to make key lending decisions on whether or not to extend credit to the borrower and the credit to be charged.

Credit Risk Analysis Models (1)

With the continuous evolution of technology, banks are continually researching and developing effective ways of modeling credit risk. A growing number of financial institutions are investing in new technologies and human resources to make it possible to create credit risk models using machine learning languages, such as Python and other analytics-friendly languages. It ensures that the models created produce data that are both accurate and scientific.

Summary

  • Credit risk modeling is a technique used by lenders to determine the level of credit risk associated with extending credit to a borrower.
  • Credit risk analysis models can be based on either financial statement analysis, default probability, or machine learning.
  • High levels of credit risk can impact the lender negatively by increasing collection costs and disrupting the consistency of cash flows.

What is Credit Risk?

Credit risk arises when a corporate or individual borrower fails to meet their debt obligations. It is the probability that the lender will not receive the principal and interest payments of a debt required to service the debt extended to a borrower.

On the side of the lender, credit risk will disrupt its cash flows and also increase collection costs, since the lender may be forced to hire a debt collection agency to enforce the collection. The loss may be partial or complete, where the lender incurs a loss of part of the loan or the entire loan extended to the borrower.

The interest rate charged on a loan serves as the lender’s reward for accepting to bear credit risk. In an efficient market system, banks charge a high interest rate for high-risk loans as a way of compensating for the high risk of default. For example, a corporate borrower with a steady income and a good credit history can get credit at a lower interest rate than what high-risk borrowers would be charged.

Conversely, when transacting with a corporate borrower with a poor credit history, the lender can decide to charge a high interest rate for the loan or reject the loan application altogether. Lenders can use different methods to assess the level of credit risk of a potential borrower in order to mitigate losses and avoid delayed payments.

Types of Credit Risk

The following are the main types of credit risks:

1. Credit default risk

Credit default risk occurs when the borrower is unable to pay the loan obligation in full or when the borrower is already 90 days past the due date of the loan repayment. The credit default risk may affect all credit-sensitive financial transactions such as loans, bonds, securities, and derivatives.

The level of default risk can change due to a broader economic change. It can also be due because of a change in a borrower’s economic situation, such as increased competition or recession, which can affect the company’s ability to set aside principal and interest payments on the loan.

2. Concentration risk

Concentration risk is the level of risk that arises from exposure to a single counterparty or sector, and it offers the potential to produce large amounts of losses that may threaten the lender’s core operations. The risk results from the observation that more concentrated portfolios lack diversification, and therefore, the returns on the underlying assets are more correlated.

For example, a corporate borrower who relies on one major buyer for its main products has a high level of concentration risk and has the potential to incur a large amount of losses if the main buyer stops buying their products.

3. Country risk

Country risk is the risk that occurs when a country freezes foreign currency payments obligations, resulting in a default on its obligations. The risk is associated with the country’s political instability and macroeconomic performance, which may adversely affect the value of its assets or operating profits. The changes in the business environment will affect all companies operating within a particular country.

Factors Affecting Credit Risk Modeling

In order to minimize the level of credit risk, lenders should forecast credit risk with greater accuracy. Listed below are some of the factors that lenders should consider when assessing the level of credit risk:

1. Probability of Default (POD)

The probability of default, sometimes abbreviated as POD, is the likelihood that a borrower will default on their loan obligations. For individual borrowers, POD is based on a combination of two factors, i.e., credit score and debt-to-income ratio.

The POD for corporate borrowers is obtained from credit rating agencies. If the lender determines that a potential borrower demonstrates a lower probability of default, the loan will come with a low interest rate and low or no down payment on the loan. The risk is partly managed by pledging collateral against the loan.

2. Loss Given Default (LGD)

Loss given default (LGD) refers to the amount of loss that a lender will suffer in case a borrower defaults on the loan. For example, assume that two borrowers, A and B, with the same debt-to-income ratio and an identical credit score. Borrower A takes a loan of $10,000 while B takes a loan of $200,000.

The two borrowers present with different credit profiles, and the lender stands to suffer a greater loss when Borrower B defaults since the latter owes a larger amount. Although there is no standard practice of calculating LGD, lenders consider an entire portfolio of loans to determine the total exposure to loss.

3. Exposure at Default (EAD)

Exposure at Default (EAD) evaluates the amount of loss exposure that a lender is exposed to at any particular time, and it is an indicator of the risk appetite of the lender. EAD is an important concept that references both individual and corporate borrowers. It is calculated by multiplying each loan obligation by a specific percentage that is adjusted based on the particulars of the loan.

More Resources

Thank you for reading CFI’s guide to Credit Risk Analysis Models. To keep learning and developing your knowledge base, please explore the additional relevant resources below:

  • Credit Risk Analyst
  • Credit Score Analysis
  • Loan Features
  • Poor Credit Warning Signs
  • Sales Risk
  • See all commercial lending resources
Credit Risk Analysis Models (2024)

FAQs

What are credit risk analysis models? ›

Credit risk modeling is the application of risk models to creditor practices to help create strategies that maximize return (interest) and minimize risk (defaults). Credit risk models are used to quantify the probability of default or prepayment on a loan.

What are PD, LGD, and EAD models? ›

Loss given default (LGD), probability of default (PD), and exposure at default (EAD) are calculations that help banks quantify their potential losses.

What are the 5 components of credit risk analysis? ›

The 5 Cs of Credit analysis are – Character, Capacity, Capital, Collateral, and Conditions. They are used by lenders to evaluate a borrower's creditworthiness and include factors such as the borrower's reputation, income, assets, collateral, and the economic conditions impacting repayment.

What are the 5 Cs of credit analysis? ›

Called the five Cs of credit, they include capacity, capital, conditions, character, and collateral. There is no regulatory standard that requires the use of the five Cs of credit, but the majority of lenders review most of this information prior to allowing a borrower to take on debt.

What are the four types of credit risk? ›

What are the four main types of credit risk for banks and fintechs?
  • Fraud risk.
  • Default risk.
  • Credit spread risk.
  • Concentration risk.
Oct 17, 2023

What is the CCR risk model? ›

Counterparty credit risk (CCR) is the risk that the counterparty to a transaction could default before the final settlement of the transaction's cash flows. An economic loss would occur if the transactions or portfolio of transactions with the counterparty has a positive economic value at the time of default.

What are ECL models? ›

ECL are a probability-weighted estimate of credit losses. A credit loss is the difference between the cash flows that are due to an entity in accordance with the contract and the cash flows that the entity expects to receive discounted at the original effective interest rate.

What is the EAD model of credit risk? ›

What is Exposure at Default (EAD)? EAD is the amount of loss that a bank may face due to default. Since default occurs at an unknown future date, this loss is contingent upon the amount to which the bank was exposed to the borrower at the time of default. This is commonly expressed as exposure at default (EAD).

What are the different types of LGD models? ›

List of Statistical Loss Given Default Models
Model NameSimple / CompositeDynamic Factors
Censored Gamma RegressionSimpleObserved Covariates
Two-Tiered Gamma RegressionMixtureObserved Covariates
Beta RegressionSimpleObserved Covariates
Inflated Beta RegressionMixtureObserved Covariates
5 more rows
Sep 16, 2021

What are the 5 pillars of credit risk? ›

The five Cs of credit are character, capacity, capital, collateral, and conditions.

What are the four 4 Cs of the credit analysis process? ›

Standards may differ from lender to lender, but there are four core components — the four C's — that lenders will evaluate in determining whether they will make a loan: capacity, capital, collateral and credit.

Which technique is used in credit risk analysis? ›

Statistical techniques have been used in building credit models. Below are some of the most common techniques like regression, linear programming, logistic regression, k-nearest neighbor, random forest trees etc.

What are the frameworks of credit analysis? ›

The “4 Cs” of credit—capacity, collateral, covenants, and character—provide a useful framework for evaluating credit risk. Credit analysis focuses on an issuer's ability to generate cash flow.

How does a lender determine a person's credit risk? ›

Credit risk is determined by various financial factors, including credit scores and debt-to-income (DTI) ratio. The lower risk a borrower is determined to be, the lower the interest rate and more favorable the terms they might be offered on a loan.

What is the 5C analysis? ›

5C Analysis is a marketing framework to analyze the environment in which a company operates. It can provide insight into the key drivers of success, as well as the risk exposure to various environmental factors. The 5Cs are Company, Collaborators, Customers, Competitors, and Context.

What is the four types of risk assessment models? ›

There are four main types of risk assessments that organisations commonly utilize: qualitative, quantitative, subjective, and objective. In this article, we will explore each type of risk assessment in-depth, discussing their importance, processes, benefits, and limitations.

What are the different types of credit analysis? ›

There are two main types of credit analysis: quantitative credit analysis and qualitative credit analysis. Quantitative Credit Analysis: Quantitative credit analysis involves analyzing financial statements, cash flows, and other financial metrics to determine the borrower's creditworthiness.

What are the three types of risk analysis? ›

Risk analysis can include risk benefit, needs assessment, or root cause analysis.

Which out of these models can be used to build a credit risk model? ›

There are several machine learning models that can be used to build an effective credit risk model: Logistic Regression: A statistical model that predicts the probability of a binary outcome. It is commonly used in credit risk modeling to predict the likelihood of default.

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