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Quantile regression for modelling distributions of profit and loss

机译:分位数回归,用于建模损益分布

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Quantile regression is applied in two retail credit risk assessment exercises exemplifying the power of the technique to account for the diverse distributions that arise in the financial service industry. The first application is to predict loss given default for secured loans, in particular retail mortgages. This is an asymmetric process since where the security (such as a property) value exceeds the loan balance the banks cannot retain the profit, whereas when the security does not cover the value of the defaulting loan then the bank realises a loss. In the light of this asymmetry it becomes apparent that estimating the low tail of the house value is much more relevant for estimating likely losses than estimates of the average value where in most cases no loss is realised. In our application quantile regression is used to estimate the distribution of property values realised on repossession that is then used to calculate loss given default estimates. An illustration is given for a mortgage portfolio from a European mortgage lender. A second application is to revenue modelling. While credit issuing organisations have access to large databases, they also build models to assess the likely effects of new strategies for which, by definition, there is no existing data. Certain strategies are aimed at increasing the revenue stream or decreasing the risk in specific market segments. Using a simple artificial revenue model, quantile regression is applied to elucidate the details of subsets of accounts, such as the least profitable, as predicted from their covariates. The application uses standard linear and kernel smoothed quantile regression. (c) 2006 Elsevier B.V. All rights reserved.
机译:在两个零售信用风险评估练习中应用了分位数回归,证明了该技术解决金融服务行业中出现的各种分布的能力。第一个应用是预测有抵押贷款(特别是零售抵押贷款)违约给定的损失。这是一个不对称过程,因为抵押(如财产)价值超过贷款余额时,银行无法保留利润,而当抵押不能覆盖违约贷款的价值时,银行就会蒙受损失。鉴于这种不对称性,很明显,与大多数情况下未实现损失的平均值估计相比,估计房屋价值的低尾部与估计可能的损失更为相关。在我们的应用程序中,分位数回归用于估计收回后实现的属性值的分布,然后用于计算给定的默认估计值的损失。给出了欧洲抵押贷款人的抵押贷款投资组合的示例。第二个应用是收益建模。虽然信贷发行组织可以访问大型数据库,但它们也可以建立模型来评估新策略的可能效果,根据定义,新策略的定义是不存在现有数据。某些策略旨在增加收入流或降低特定市场领域的风险。使用简单的人工收入模型,应用分位数回归来阐明帐户子集的详细信息,例如根据其协变量预测的利润最低的子集。该应用程序使用标准的线性和核平滑分位数回归。 (c)2006 Elsevier B.V.保留所有权利。

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