We investigate solving partial integro-differential equations (PIDEs) using unsupervised deep learning in this paper. To price options, assuming underlying processes follow Levy processes, we require to solve PIDEs. In supervised deep learning, pre-calculated labels are used to train neural networks to fit the solution of the PIDE. In an unsupervised deep learning, neural networks are employed as the solution, and the derivatives and the integrals in the PIDE are calculated based on the neural network. By matching the PIDE and its boundary conditions, the neural network gives an accurate solution of the PIDE. Once trained, it would be fast for calculating options values as well as option Greeks.
翻译:我们利用本文中未经监督的深层学习来调查部分内分化方程式(PIDEs)的解决方案。对于价格选项,假设基本流程遵循Levy流程,我们要求解决PIDE。在有监督的深层学习中,预先计算的标签被用于培养神经网络以适应PIDE的解决方案。在未经监督的深层学习中,神经网络被用作解决方案,而PIDE的衍生物和整体体则根据神经网络计算。通过匹配PIDE及其边界条件,神经网络为PIDE提供了准确的解决方案。一旦经过培训,将快速计算选项值和希腊人选项值。