The main aim of this study is to introduce a 2-layered Artificial Neural Network (ANN) for solving the Black-Scholes partial differential equation (PDE) of either fractional or ordinary orders. Firstly, a discretization method is employed to change the model into a sequence of Ordinary Differential Equations (ODE). Then each of these ODEs is solved with the aid of an ANN. Adam optimization is employed as the learning paradigm since it can add the foreknowledge of slowing down the process of optimization when getting close to the actual optimum solution. The model also takes advantage of fine tuning for speeding up the process and domain mapping to confront infinite domain issue. Finally, the accuracy, speed, and convergence of the method for solving several types of Black-Scholes model are reported.
翻译:这项研究的主要目的是引入一个两层人工神经网络(ANN),以解决分数或普通单数的黑分数部分偏差方程(PDE)问题。首先,采用了一种分解方法将模型转换成普通差异等量的序列(ODE),然后在ANN的帮助下解决了其中的每一个代码。将亚当优化用作学习范例,因为它可以增加在接近实际最佳解决方案时减缓优化过程的先见之明。模型还利用微调来加快进程和域图绘制,以应对无限域问题。最后,报告了解决多种黑人模式的方法的准确性、速度和趋同性。