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peaks2tails · 1 year
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peaks2tails · 1 year
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CREDIT RISK MODELLING - Scorecards | IFRS 9 | Basel | Stress Testing | Model Validation
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peaks2tails · 1 year
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Credit Risk Modelling: Understanding and Mitigating Financial Uncertainties
In the ever-changing landscape of the financial industry, one aspect remains constant: the importance of credit risk modelling. Financial institutions and lenders continuously face the challenge of assessing the creditworthiness of their clients to make informed lending decisions. This process is critical to maintain a healthy balance between maximizing profits and safeguarding against potential losses. In this blog, we will delve into the concept of credit risk modelling, its significance, and how it aids in mitigating financial uncertainties.
What is Credit Risk Modelling?
Credit risk modelling is a sophisticated analytical approach used by banks, credit card companies, and other financial institutions to quantify the likelihood of borrowers defaulting on their credit obligations. This predictive method involves a combination of statistical techniques, historical data analysis, and economic factors to calculate the probability of a borrower's default. It essentially helps lenders identify high-risk borrowers, make informed credit decisions, and set appropriate interest rates.
Significance of Credit Risk Modelling
Risk Assessment: Credit risk modelling provides a robust framework for assessing the creditworthiness of borrowers. By evaluating a range of factors like credit history, income, debt-to-income ratio, and other relevant variables, lenders can determine the level of risk associated with a particular borrower.
Optimal Pricing: Accurate credit risk assessment enables lenders to set interest rates that correspond to the level of risk posed by the borrower. Low-risk borrowers are offered lower interest rates, while high-risk borrowers may be subject to higher interest rates to compensate for the additional risk.
Portfolio Management: Financial institutions often manage a diverse portfolio of loans. Credit risk modelling helps in creating a well-balanced portfolio by diversifying credit exposure across various risk profiles, thus minimizing the overall risk of the portfolio.
Regulatory Compliance: Credit risk modelling plays a vital role in regulatory compliance. Many financial regulators mandate banks and other lending institutions to maintain a certain level of capital to cover potential losses from credit risk. Accurate credit risk assessment ensures compliance with these regulations.
Business Strategy: Understanding credit risk allows financial institutions to make strategic decisions regarding expanding or contracting their lending activities, entering new markets, or targeting specific customer segments.
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Types of Credit Risk Models
Probability of Default (PD): PD models estimate the likelihood of a borrower defaulting on their credit obligations over a specific time horizon, typically one year. It provides a probability score for each borrower, indicating the chance of default.
Loss Given Default (LGD): LGD models assess the potential loss a lender may incur if a borrower defaults. It considers the expected recovery rate on the outstanding loan amount after default.
Exposure at Default (EAD): EAD models estimate the outstanding exposure a lender faces at the time of default. It helps in determining the potential loss magnitude in the event of a borrower's default.
Stress Testing Models: Stress testing models evaluate the resilience of a financial institution's portfolio under adverse economic conditions. It helps in assessing the impact of severe economic downturns on credit risk.
Challenges in Credit Risk Modelling
While credit risk modelling offers significant advantages, it is not without challenges:
Data Quality: The accuracy of credit risk models heavily relies on the quality and relevance of historical data. Incomplete or outdated data can lead to inaccurate predictions.
Model Complexity: Advanced credit risk models can be complex, and their interpretation and implementation require specialized skills and expertise.
Black Swan Events: Credit risk models are typically based on historical data and may not account for extreme events or "black swan" occurrences that deviate significantly from historical patterns.
Regulatory Changes: Evolving regulatory requirements can necessitate constant updates to credit risk models, adding complexity to the modelling process.
Conclusion
Credit risk modelling is a fundamental aspect of risk management for financial institutions. It provides a quantitative framework for assessing and managing credit risk, enabling lenders to make well-informed decisions, optimize pricing, and maintain a healthy loan portfolio. However, it's essential to acknowledge the limitations and challenges associated with these models and continuously improve them to adapt to the dynamic financial landscape. By striking the right balance between risk and reward, credit risk modelling helps financial institutions navigate uncertainties, ensuring a stable and sustainable future in the world of finance.
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peaks2tails · 1 year
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Model Validation | Discriminatory Power | Calibration accuracy | ROC | CAP | peaks2tails
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peaks2tails · 1 year
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peaks2tails · 2 years
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Peak2Tails Provides full course on Credit Risk Modelling including Behavioral Scorecards, Basel, IFRS 9, CCAR, Structural Models etc. We provide sound mix of both theoretical and technical insights, with practical implementation of details in Excel.
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peaks2tails · 2 years
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Model Validation includes checking Discriminatory power of model and calibration accuracy. This video covers ROC Curve and CAP curve including accuracy ratio and gini coefficient to evaluate discriminatory power.
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peaks2tails · 2 years
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This video is a part of IFRS9 ECL Modelling and covers calculation of PIT PD using Vasicek Model aka Z score approach.
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peaks2tails · 2 years
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Machine Learning is the hottest skill of this decade. Join Machine Learning course by Peaks2Tails which includes comprehensive learning on Regression, Time Series analysis, Classification, Clustering, Dimension Reduction, Reinforcement learning, Deep Learning & Text mining.
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peaks2tails · 2 years
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Machine Learning: Finance Data Professional (FDP) Orientation Class includes registration details, important dates, exam format, and topics covered in the FDP exam by CAIA.
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peaks2tails · 2 years
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IFRS9: Peak2Tails Provides full course on Credit Risk Modelling including Behavioral Scorecards, Basel, IFRS 9, CCAR, Structural Models etc. We provide sound mix of both theoretical and technical insights, with practical implementation of details in Excel.
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peaks2tails · 2 years
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IFRS9: Peak2Tails Provides full course on Credit Risk Modelling including Behavioral Scorecards, Basel, IFRS 9, CCAR, Structural Models etc. We provide sound mix of both theoretical and technical insights, with practical implementation of details in Excel.
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peaks2tails · 2 years
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Model Validation includes checking Discriminatory power of model and calibration accuracy. This video covers ROC Curve and CAP curve including accuracy ratio and gini coefficient to evaluate discriminatory power.
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peaks2tails · 2 years
Video
youtube
Model Validation includes checking Discriminatory power of model and calibration accuracy. This video covers ROC Curve and CAP curve including accuracy ratio and gini coefficient to evaluate discriminatory power.
1 note · View note
peaks2tails · 2 years
Video
youtube
This video is a part of IFRS9 ECL Modelling and covers calculation of PIT PD using Vasicek Model aka Z score approach.
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peaks2tails · 2 years
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Credit risk stress testing is both top down and bottom up. This video discusses credit risk stress testing models under CCAR & DFAST framework.
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peaks2tails · 2 years
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The video discusses handling Low Default Portfolio using the famous Confdence Interval Method by Pluto Tasche.
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