Nowadays many financial derivatives, such as American or Bermudan options, are of early exercise type. Often the pricing of early exercise options gives rise to high-dimensional optimal stopping problems, since the dimension corresponds to the number of underlying assets. High-dimensional optimal stopping problems are, however, notoriously difficult to solve due to the well-known curse of dimensionality. In this work, we propose an algorithm for solving such problems, which is based on deep learning and computes, in the context of early exercise option pricing, both approximations of an optimal exercise strategy and the price of the considered option. The proposed algorithm can also be applied to optimal stopping problems that arise in other areas where the underlying stochastic process can be efficiently simulated. We present numerical results for a large number of example problems, which include the pricing of many high-dimensional American and Bermudan options, such as Bermudan max-call options in up to 5000 dimensions. Most of the obtained results are compared to reference values computed by exploiting the specific problem design or, where available, to reference values from the literature. These numerical results suggest that the proposed algorithm is highly effective in the case of many underlyings, in terms of both accuracy and speed.
翻译:目前,许多金融衍生物,如美国或百慕大的选项,都是早期操作型的。早期操作选项的定价往往会产生高维最佳停止问题,因为其维度与基本资产的数量相对应。然而,由于众所周知的多元性诅咒,高维最佳停止问题很难解决。在这项工作中,我们提出了一个解决此类问题的算法,其依据是早期操作选项定价的深度学习和计算,既近似于最佳操作策略,又符合所考虑选项的价格。拟议的算法还可用于最优化地制止在其它领域出现的问题,因为基础随机化过程可以有效地模拟。我们为大量的例子问题提供了数字结果,其中包括许多高维度的美国和百慕大选项的定价,例如百慕大最大呼应选项高达5000个层面。获得的结果大多与通过利用特定问题设计或现有文献参考值计算的参考值相比较。这些数字结果表明,拟议的算法对于许多基本要素而言,在准确性和速度方面都非常有效。