论文标题
量子风格的张量神经网络用于期权定价
Quantum-Inspired Tensor Neural Networks for Option Pricing
论文作者
论文摘要
深度学习的最新进展使我们能够通过解决更高维度的问题来解决维度(COD)的诅咒。解决COD的这种方法的一部分使我们解决了高维PDE。这导致了解决从数学金融到工业应用的随机控制的各种现实世界问题的开头。尽管可行,但这些深度学习方法仍然受到训练时间和记忆的限制。解决这些缺点,张量神经网络(TNN)表明,与经典密集神经网络(DNN)相比,它们可以提供明显的参数节省,同时获得与经典密集的神经网络相同的准确性。此外,我们还展示了如何以相同的准确性来比DNN更快地训练TNN。除TNN外,我们还引入了张量网络初始化器(TNN INIT),这是一种权重初始化方案,与DNN相比,相当于等效的参数计数,导致更快的收敛性与较小的方差。我们通过应用它们来解决与Heston模型相关的抛物线PDE来基于TNN和TNN的启动,该模型广泛用于金融定价理论。
Recent advances in deep learning have enabled us to address the curse of dimensionality (COD) by solving problems in higher dimensions. A subset of such approaches of addressing the COD has led us to solving high-dimensional PDEs. This has resulted in opening doors to solving a variety of real-world problems ranging from mathematical finance to stochastic control for industrial applications. Although feasible, these deep learning methods are still constrained by training time and memory. Tackling these shortcomings, Tensor Neural Networks (TNN) demonstrate that they can provide significant parameter savings while attaining the same accuracy as compared to the classical Dense Neural Network (DNN). In addition, we also show how TNN can be trained faster than DNN for the same accuracy. Besides TNN, we also introduce Tensor Network Initializer (TNN Init), a weight initialization scheme that leads to faster convergence with smaller variance for an equivalent parameter count as compared to a DNN. We benchmark TNN and TNN Init by applying them to solve the parabolic PDE associated with the Heston model, which is widely used in financial pricing theory.