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Accuracy of deep learning in calibrating HJM forward curves

机译:在校准HJM深度学习的准确性提出了曲线

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We price European-style options written on forward contracts in a commodity market, which we model with an infinite-dimensional Heath-Jarrow-Morton (HJM) approach. For this purpose, we introduce a new class of state-dependent volatility operators that map the square integrable noise into the Filipovic space of forward curves. For calibration, we specify a fully parametrized version of our model and train a neural network to approximate the true option price as a function of the model parameters. This neural network can then be used to calibrate the HJM parameters based on observed option prices. We conduct a numerical case study based on artificially generated option prices in a deterministic volatility setting. In this setting, we derive closed pricing formulas, allowing us to benchmark the neural network based calibration approach. We also study calibration in illiquid markets with a large bid-ask spread. The experiments reveal a high degree of accuracy in recovering the prices after calibration, even if the original meaning of the model parameters is partly lost in the approximation step.
机译:我们欧式期权价格写在前进合同在大宗商品市场,我们的模型一个无限维度Heath-Jarrow-Morton(HJM)的方法。新类的依赖波动运营商地图平方可积的噪音进入Filipovic前进的空间曲线。校准,我们指定一个完全参数化我们的模型和训练一个神经网络价格作为一个近似真实的选项模型参数的函数。网络可以被用来校准HJM基于观察到的期权价格参数。进行数值案例研究的基础上人工生成的期权价格确定性波动。设置,我们推导出封闭的定价公式,让我们基准为基础的神经网络校准方法。在流动性不足的市场有一个很大的买卖价差。实验揭示了高度的准确性在校准后的价格回升,甚至如果原始模型参数的意义部分是迷失在逼近一步。

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