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Credit Model Financial Institutions 2016

A State-of-the-Art Scoring Model for Banks and Insurance Companies


Developing a statistical model to assess the credit risk of financial institutions is a formidable challenge mainly because:

  • Financial institutions tend to be highly heterogeneous from a credit risk point of view
  • The sector exhibits low default frequency
  • The sector’s default frequency is volatile over time

Therefore it is common belief that the assessment of credit risk for such companies can only be conducted using an expert-judgement framework, such as that employed by rating agencies, or a scorecard methodology that is usually inspired by and/or benchmarked with credit ratings.

At S&P Global Market Intelligence, we have managed to bridge this gap by developing a cutting-edge statistical model that is trained on S&P Global Ratings
Expert-judgement approaches are usually very successful in quantifying counterparty credit risk, but suffer from inherent operational limitations. Ratings tend to cover only a limited number of financial institutions; scorecards require a significant amount of time and resources for the generation of a single assessment and each counterparty needs to be assessed individually. 

A statistical model, that combines the advantages of an expert-judgement approach driven by ratings with an automated engine, was not available up to now, but is highly desirable in order to:

  • Assess the credit risk of financial institutions, expanding the universe of scored companies beyond what is normally covered by rating agencies
  • Accelerate and scale the credit assessment process

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At S&P Global Market Intelligence, we have managed to bridge this gap by developing a cutting-edge statistical model that is trained on S&P Global Ratings and uses company financials, macroeconomic and industry-specific factors to generate a letter-grade credit score, for public and private banks and insurance companies, globally, representing a purely statistical view of the credit strength of a financial institution. 1

1 S&P Global Ratings does not contribute to or participate in the creation of credit scores generated by S&P Global Market Intelligence.