Learn how AUC (Area Under the Curve) helps assess credit models, ensuring accurate borrower classification.
To assess the creditworthiness of potential borrowers, financial institutions use various credit scoring models tailored to their unique needs.
But how can you ensure that the chosen model objectively determines the probability of default? In other words, how can its discriminatory power be evaluated?
To achieve this, creditors often turn to the metric known as the Area Under the Curve (AUC).
What is the Area Under the Curve (AUC)? This is a metric widely used in credit risk assessment. It evaluates the discriminatory power of a credit scoring model, i.e., how accurately the model distinguishes reliable borrowers from those prone to default.
The Area Under the Curve is closely linked to another concept — the ROC (Receiver Operating Characteristic) curve.
The ROC curve visualizes the model's performance at various threshold levels. It takes into account the True Positive Rate (TPR) and the False Positive Rate (FPR).
The area under the ROC curve (AUC) demonstrates the likelihood that the model will assign a higher score to TPR compared to FPR.
In the context of lending, this can be interpreted as follows: AUC reflects the objective ability of a scoring model to correctly classify defaulters and reliable applicants.
In practice, it looks like this:
Area Under the Curve is expressed as a numerical value from 0 to 1. It can take the following values:
Based on the obtained values, creditors rank scoring model effectiveness as follows:
Credit organizations strive to achieve the most accurate assessment of applicants. To do this, it is necessary to enhance the efficiency of the credit scoring models in use.
So, how to boost predictive power of your credit model?
It is advisable to assess potential borrowers using not only traditional data (such as credit history) but also alternative data.
Consumer digital footprints are deservedly considered the most informative in this situation. For example, their activity on various web resources, online payments, and so on.
This approach to risk assessment positively impacts the scorecards predictive power. This is demonstrated by the RiskSeal’s diagram below:
Here, the following trend is observed:
It can be concluded that using alternative credit scoring platforms that assess applicants' creditworthiness based on a combination of data is most effective for the lender.
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