操作员深度平滑隐含波动率

Lukas Gonon, Antoine Jacquier, Ruben Wiedemann
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引用次数: 0

摘要

我们设计了一种基于神经操作器的隐含波动率平滑新方法。隐含波动率平滑法的目标是构建一个平滑曲面,将特定时刻在给定期权市场上观察到的价格集合联系起来。这种价格数据是在不断变化的空间配置中高度动态产生的,这给使用经典神经网络的基础机器学习方法带来了很大的限制。语言和图像处理领域的大型模型在大量原始数据的基础上取得了突破性的成果,而在金融工程领域,由于需要进行大量的数据预处理,从大型历史数据集中进行归纳的工作受到了阻碍。特别是隐含波动率的平滑处理,对于基于神经网络的策略和传统参数策略来说,仍然是一个逐个实例的实践过程。而我们的通用算子深度平滑方法可以直接将观察到的数据映射到平滑表面。我们调整了图神经算子架构,使用单组权重对十年的标准普尔 500 指数日内原始期权数据进行了高精度处理。训练有素的算子遵守无套利约束条件,对输入的子采样(在去除离群值的实践中经常出现)具有鲁棒性。我们提供了广泛的历史基准,并通过与 SVI(一种用于预测波动率的行业标准参数)的比较,展示了我们方法的泛化能力。因此,算子深度平滑方法开启了神经网络在金融工程大型历史数据集上的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Operator Deep Smoothing for Implied Volatility
We devise a novel method for implied volatility smoothing based on neural operators. The goal of implied volatility smoothing is to construct a smooth surface that links the collection of prices observed at a specific instant on a given option market. Such price data arises highly dynamically in ever-changing spatial configurations, which poses a major limitation to foundational machine learning approaches using classical neural networks. While large models in language and image processing deliver breakthrough results on vast corpora of raw data, in financial engineering the generalization from big historical datasets has been hindered by the need for considerable data pre-processing. In particular, implied volatility smoothing has remained an instance-by-instance, hands-on process both for neural network-based and traditional parametric strategies. Our general operator deep smoothing approach, instead, directly maps observed data to smoothed surfaces. We adapt the graph neural operator architecture to do so with high accuracy on ten years of raw intraday S&P 500 options data, using a single set of weights. The trained operator adheres to critical no-arbitrage constraints and is robust with respect to subsampling of inputs (occurring in practice in the context of outlier removal). We provide extensive historical benchmarks and showcase the generalization capability of our approach in a comparison with SVI, an industry standard parametrization for implied volatility. The operator deep smoothing approach thus opens up the use of neural networks on large historical datasets in financial engineering.
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