Deep Smoothing of the Implied Volatility Surface

Damien Ackerer, Natasa Tagasovska, Thibault Vatter
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引用次数: 21

Abstract

We present a neural network (NN) approach to fit and predict implied volatility surfaces (IVSs). Atypically to standard NN applications, financial industry practitioners use such models equally to replicate market prices and to value other financial instruments. In other words, low training losses are as important as generalization capabilities. Importantly, IVS models need to generate realistic arbitrage-free option prices, meaning that no portfolio can lead to risk-free profits. We propose an approach guaranteeing the absence of arbitrage opportunities by penalizing the loss using soft constraints. Furthermore, our method can be combined with standard IVS models in quantitative finance, thus providing a NN-based correction when such models fail at replicating observed market prices. This lets practitioners use our approach as a plug-in on top of classical methods. Empirical results show that this approach is particularly useful when only sparse or erroneous data are available. We also quantify the uncertainty of the model predictions in regions with few or no observations. We further explore how deeper NNs improve over shallower ones, as well as other properties of the network architecture. We benchmark our method against standard IVS models. By evaluating our method on both training sets, and testing sets, namely, we highlight both their capacity to reproduce observed prices and predict new ones.
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隐含波动率表面的深度平滑
提出了一种拟合和预测隐含波动率曲面的神经网络方法。典型的标准神经网络应用,金融行业从业者同样使用这些模型来复制市场价格和评估其他金融工具。换句话说,低训练损失与泛化能力同样重要。重要的是,IVS模型需要产生现实的无套利期权价格,这意味着没有投资组合可以带来无风险的利润。我们提出了一种利用软约束对损失进行惩罚以保证不存在套利机会的方法。此外,我们的方法可以与定量金融中的标准IVS模型相结合,从而在这些模型无法复制观察到的市场价格时提供基于神经网络的修正。这使得从业者可以将我们的方法作为经典方法之上的插件来使用。经验结果表明,当只有稀疏或错误的数据可用时,这种方法特别有用。我们还量化了在观测很少或没有观测的地区模式预测的不确定性。我们进一步探讨了深层神经网络如何比浅层神经网络改进,以及网络架构的其他属性。我们将我们的方法与标准IVS模型进行基准测试。通过在训练集和测试集上评估我们的方法,也就是说,我们强调了它们再现观察价格和预测新价格的能力。
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