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Discrete versus Continuous Parametrization of Bank Credit Rating Systems Optimization Using Differential Evolution

机译:基于差分演化的银行信用评级系统优化的离散与连续参数化

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Bank credit rating system is a clustering problem that aims to achieve the optimal classification of the clients' probability of defaults (PDs) into discrete buckets under a number of constraints. This global optimization problem can be parametrized either using continuous or discrete decision variables, and treated using basically the same differential evolution (DE) method that takes into account of real-world constraints imposed by the recent Basel Accord on Banking Supervision. This enables us to make interesting comparisons between continuous versus discrete parametrization of the same problem in terms of the efficiency, robustness and the rate of convergence. It turns out to be beneficial to use discrete parameters for all of these reasons. In addition we have also explored the use of the elitist as well as the classic strategies within the DE approach. The former choice turns out to perform better in terms of efficiency, robustness, and faster convergence, except when the number of required buckets is large.
机译:银行信用评级系统是一个聚类问题,旨在在许多约束条件下将客户的违约概率(PD)最佳分类为离散的存储桶。可以使用连续或离散决策变量对这一全局优化问题进行参数化,并使用与最近的《银行监管巴塞尔协议》强加的现实世界约束相同的差分演化(DE)方法进行基本处理。这使我们能够在效率,鲁棒性和收敛速度方面对同一问题的连续和离散参数化进行有趣的比较。事实证明,由于所有这些原因,使用离散参数是有益的。此外,我们还探讨了精英主义方法以及DE方法中经典策略的使用。事实证明,前一种选择在效率,健壮性和更快的收敛性方面表现更好,除非所需的存储桶数量很大。

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