We present a novel computational approach for quadratic hedging in a high-dimensional incomplete market. This covers both mean-variance hedging and local risk minimization. In the first case, the solution is linked to a system of BSDEs, one of which being a backward stochastic Riccati equation (BSRE); in the second case, the solution is related to the F\"olmer-Schweizer decomposition and is also linked to a BSDE. We apply (recursively) a deep neural network-based BSDE solver. Thanks to this approach, we solve high-dimensional quadratic hedging problems, providing the entire hedging strategies paths, which, in alternative, would require to solve high dimensional PDEs. We test our approach with a classical Heston model and with a multi-dimensional generalization of it.
翻译:我们在一个高度不完全的市场中为四面对冲提出了一种新的计算方法,它既包括中度对冲,也包括地方风险最小化。在第一种情况下,解决方案与一个BSDE系统有关,其中一个是后向的SOPATI RICCATI 等式(BSRE);在第二种情况下,解决方案与F\"olmer-Schweizer分解法有关,也与BSDE有关。我们应用了一个深层神经网络基于BSDE的BSDE解析器。由于这一方法,我们解决了高度的二次对冲问题,提供了整个套套套套套套战略路径,作为替代,需要解决高度PDE。我们用典型的Heston模型测试我们的方法,并用多维的通用方法测试我们的方法。