Please use this identifier to cite or link to this item: https://hdl.handle.net/10953/1366
Title: Forecasting for regulatory credit loss derived from the COVID-19 pandemic: A machine learning approach
Authors: Ramos González, M.
Partal Ureña, A.
Gómez Fernández-Aguado, P.
Abstract: The economic onslaught of the COVID-19 pandemic has compromised the risk management of financial institutions. The consequences related to such an unprecedented situation are difficult to foresee with certainty using traditional methods. The regulatory credit loss attached to defaulted mortgages, so-called expected loss best estimate (ELBE), is forecasted using a machine learning technique. The projection of two ELBEs for 2022 and their comparison are presented. One accounts for the outbreak’s impact, and the other presumes the nonexistence of the pandemic. Then, it is concluded that the referred crisis surely adversely affects said high-risk portfolios. The proposed method has excellent performance and may serve to estimate future expected and unexpected losses amidst any event of extraordinary magnitude
Keywords: Machine learning, COVID-19, Internal-rating-based, Credit risk Defaulted exposures
Issue Date: 2023
Publisher: Elsevier
Appears in Collections:DEFC-Artículos

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