In this paper, we introduce two methods to solve the American-style option pricing problem and its dual form at the same time using neural networks. Without applying nested Monte Carlo, the first method uses a series of neural networks to simultaneously compute both the lower and upper bounds of the option price, and the second one accomplishes the same goal with one global network. The avoidance of extra simulations and the use of neural networks significantly reduce the computational complexity and allow us to price Bermudan options with frequent exercise opportunities in high dimensions, as illustrated by the provided numerical experiments. As a by-product, these methods also derive a hedging strategy for the option, which can also be used as a control variate for variance reduction.
翻译:在本文中,我们引入了两种方法来解决美国式选择定价问题,同时使用神经网络解决其双重形式。 这种方法不使用嵌套的蒙特卡洛(Monte Carlo ), 第一种方法使用一系列神经网络来同时计算选项价格的下限和上限,而第二种方法则用一个全球网络实现同一目标。 避免额外模拟和使用神经网络会大大降低计算的复杂性,并使我们能够以频繁的大型活动机会来为百慕大选项定价,正如所提供的数字实验所说明的那样。 作为一种副产品,这些方法也为选项制定了套期战略,也可以用作差异减少的控制变量。</s>