An efficient compression technique based on hierarchical tensors for popular option pricing methods is presented. It is shown that the "curse of dimensionality" can be alleviated for the computation of Bermudan option prices with the Monte Carlo least-squares approach as well as the dual martingale method, both using high-dimensional tensorized polynomial expansions. This discretization allows for a simple and computationally cheap evaluation of conditional expectations. Complexity estimates are provided as well as a description of the optimization procedures in the tensor train format. Numerical experiments illustrate the favourable accuracy of the proposed methods. The dynamical programming method yields results comparable to recent Neural Network based methods.
翻译:介绍了一种基于按等级分类的压强法的高效压缩技术,用于采用流行的备选定价方法,显示在计算Monte Carlo最低方位法和双马丁格尔法的百慕大选择价格时,可以减少“维度诅咒”,这两种方法都使用高维度多元多米扩张法,这种分散化使得可以对有条件的预期进行简单和计算便宜的评价;提供了复杂度估计数,并描述了以抗压列车格式的优化程序;数字实验显示了拟议方法的有利准确性;动态编程法产生的结果与最近的神经网络方法相似。