A parametric model order reduction (MOR) approach for simulating the high dimensional models arising in financial risk analysis is proposed on the basis of the proper orthogonal decomposition (POD) approach to generate small model approximations for the high dimensional parametric convection-diffusion reaction partial differential equations (PDE). The proposed technique uses an adaptive greedy sampling approach based on surrogate modeling to efficiently locate the most relevant training parameters, thus generating the optimal reduced basis. The best suitable reduced model is procured such that the total error is less than a user-defined tolerance. The three major errors considered are the discretization error associated with the full model obtained by discretizing the PDE, the model order reduction error, and the parameter sampling error. The developed technique is analyzed, implemented, and tested on industrial data of a puttable steepener under the two-factor Hull-White model. The results illustrate that the reduced model provides a significant speedup with excellent accuracy over a full model approach, demonstrating its potential applications in the historical or Monte Carlo value at risk calculations.
翻译:为了模拟金融风险分析中产生的高维模型,建议了一种模拟金融风险分析中产生的高维模型的模型减少(MOR)法,其依据是适当的正方形分解(POD)法,为高维对数分解(PDE)部分偏差方程生成小型模型近似值;拟议的技术使用一种基于代用模型的适应性贪婪抽样法,以便有效确定最相关的培训参数,从而产生最佳的减少基础; 采购了最合适的减少模型,使总误差低于用户定义的耐受度; 所考虑的三个主要错误是,与通过分解PDE获得的完整模型有关的离散错误、减少命令模型错误和参数取样错误; 开发的技术在两个方位的Hull-White模型下,对可调高的陡峭壁的工业数据进行了分析、实施和测试; 结果表明,降低的模型为整个模型提供了非常精准的快速的速度,显示了其在历史或蒙特卡洛风险计算中的潜在应用。