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1 - Common Elements in Validation of Risk Models Used in Financial Institutions

Published online by Cambridge University Press:  02 March 2023

David Lynch
Affiliation:
Federal Reserve Board of Governors
Iftekhar Hasan
Affiliation:
Fordham University Graduate Schools of Business
Akhtar Siddique
Affiliation:
Office of the Comptroller of the Currency
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Summary

This chapter provides a unified discussion of the framework for model validation. It describes how model validation developed over time across various disciplines. It then describes the various approaches that are applied for validation of risk management models at financial institutions.

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Publisher: Cambridge University Press
Print publication year: 2023

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