Exact fit of simple finite mixture models
This provides an incremental improvement for financial risk management in credit default forecasting, offering a more precise method for practitioners.
The paper tackles the problem of forecasting portfolio-wide credit default rates by fitting a simple finite mixture model with fixed components and estimated weights, showing that the maximum-likelihood approach yields an exact fit under certain conditions and that standard forecasts fall between last year's default rate and the ML forecast.
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 fix. 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, then cost quantification is 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.