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Predicting bank loan recovery rates with a mixed continuous-discrete model

机译:使用混合连续离散模型预测银行贷款回收率

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To represent the high concentration of recovery rates at the boundaries, we propose to consider the recovery rate as a mixed random variable, obtained as the mixture of a Bernoulli random variable and a beta random variable. We suggest to estimate the mixture weights and the Bernoulli parameter by two logistic regression models. For the recovery rates belonging to the interval (0,1), we model, jointly, the mean and the dispersion by using two link functions, so we propose the joint beta regression model that accommodates skewness and heteroscedastic errors. This methodological proposal is applied to a comprehensive survey on loan recovery process of Italian banks. In the regression model, we include some macroeconomic variables because they are relevant to explain the recovery rate and allow to estimate it in downturn conditions, as Basel II requires.
机译:为了表示边界处的高浓度回收率,我们建议将回收率视为混合随机变量,由伯努利随机变量和 beta 随机变量混合而成。我们建议通过两个逻辑回归模型来估计混合物权重和伯努利参数。对于属于区间 (0,1) 的回收率,我们使用两个链接函数对均值和离散度进行联合建模,因此我们提出了适应偏度和异方差误差的联合 beta 回归模型。该方法建议适用于对意大利银行贷款回收过程的全面调查。在回归模型中,我们纳入了一些宏观经济变量,因为它们与解释回收率相关,并允许在经济低迷条件下估计回收率,正如巴塞尔协议II所要求的那样。

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