Proposal on ELBE and LGD In-Default: Tackling Capital Requirements after the Financial Crisis

M. Ramos Gonzalez, A. Partal-Ureña, Pilar Gómez-Fernández-Aguado
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Abstract

Following the financial crisis, the share of non-performing loans has significantly increased, while the regulatory guidelines on the Internal-Ratings Based (IRB) approach for capital adequacy calculation related to defaulted exposures remains too general. As a result, the high-risk nature of these portfolios is clearly in danger of being managed in a heterogeneous and inappropriate manner by those financial institutions permitted to use the IRB system, with the consequent undue variability of Risk-Weighted Assets (RWA). This paper presents a proposal to construct Advanced IRB models for defaulted exposures, in line with current regulations, that preserve the risk sensitivity of capital requirements. To do so, both parameters Expected Loss Best Estimate (ELBE) and Loss Given Default (LGD) in-default are obtained, backed by an innovative indicator (Mixed Adjustment Indicator) that is introduced to ensure an appropriate estimation of expected and unexpected losses. The methodology presented has low complexity and is easily applied to the databases commonly used at these institutions, as illustrated by two examples.
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关于ELBE和LGD违约的建议:应对金融危机后的资本要求
在金融危机之后,不良贷款的比例显著增加,而与违约风险相关的资本充足率计算的基于内部评级(IRB)方法的监管指导方针仍然过于笼统。因此,这些投资组合的高风险性质显然有被允许使用内部审查制度的金融机构以异质和不适当的方式管理的危险,从而造成风险加权资产(RWA)的过度变化。本文提出了一项建议,为违约敞口构建高级IRB模型,符合现行法规,保留资本要求的风险敏感性。为此,获得了预期损失最佳估计(ELBE)和违约损失(LGD)参数,并引入了一个创新指标(混合调整指标),以确保对预期和意外损失进行适当估计。所提出的方法复杂性低,易于应用于这些机构常用的数据库,如两个例子所示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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