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Exact Fit of Simple Finite Mixture Models?

机译:简单有限混合模型的精确拟合?

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Abstract How to forecast next year’s portfolio-wide credit default rate based on last year’s default observations and the current score distribution? A classical approach to this problem consists of fitting a mixture of the conditional score distributions observed last year to the current score distribution. This is a special (simple) case of a finite mixture model where the mixture components are fixed and only the weights of the components are estimated. The optimum weights provide a forecast of next year’s portfolio-wide default rate. We point out that the maximum-likelihood (ML) approach to fitting the mixture distribution not only gives an optimum but even an exact fit if we allow the mixture components to vary but keep their density ratio fixed. From this observation we can conclude that the standard default rate forecast based on last year’s conditional default rates will always be located between last year’s portfolio-wide default rate and the ML forecast for next year. As an application example, cost quantification is then discussed. We also discuss how the mixture model based estimation methods can be used to forecast total loss. This involves the reinterpretation of an individual classification problem as a collective quantification problem. View Full-Text
机译:摘要如何根据去年的违约观察和当前得分分布预测明年的投资组合范围内的信用违约率?解决此问题的经典方法是将去年观察到的条件得分分布的混合拟合为当前得分分布。这是有限混合模型的一种特殊(简单)情况,其中混合成分固定,并且仅估计成分的权重。最佳权重可预测明年投资组合范围内的违约率。我们指出,如果我们允许混合物成分变化但保持其密度比固定不变,则最大似然(ML)方法不仅可以拟合混合物,而且可以提供最佳拟合,甚至可以精确拟合。从该观察结果可以得出结论,基于去年的有条件违约率的标准违约率预测将始终位于去年投资组合范围的违约率和明年的ML预测之间。作为一个应用示例,然后讨论了成本量化。我们还将讨论如何使用基于混合模型的估计方法来预测总损失。这涉及将个体分类问题重新解释为集体量化问题。查看全文

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