风险中性生成网络

Zhonghao Xian, Xing Yan, Cheuk Hang Leung, Qi Wu
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引用次数: 0

摘要

我们提出了一种从期权市场价格中提取风险中性密度的函数生成方法。具体来说,我们将到期时间连续体的对数收益率建模为由标准正态驱动的随机曲线。我们使用神经网络来表示位置、规模和高阶矩的期限结构,并对学习过程施加了严格的条件,以确保基于神经网络的曲线表示不存在静态套利。这种规范结构清晰,因为它将随机性建模与参数项结构建模分开。它是数据自适应的,因为我们使用神经网络来表示随机曲线的形状。它还具有生成性,因为随机曲线的函数形式虽然是由神经网络参数化的,但却是标准正态分布的显式确定函数。这种明确性允许在不影响数据适应性的情况下,有效生成样本,为不同行权价和到期日的期权定价。我们将这种方法与一套全面的基线模型进行比对,验证了它的有效性。实验表明,提取的风险中性密度可以适应各种不同的形状。在准确性和稳定性方面,它的准确性明显优于大量基线模型--包括三个参数模型和九个随机过程模型。这种方法的成功归功于它能够为风险中性偏度和峰度提供灵活的期限结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Risk-Neutral Generative Networks
We present a functional generative approach to extract risk-neutral densities from market prices of options. Specifically, we model the log-returns on the time-to-maturity continuum as a stochastic curve driven by standard normal. We then use neural nets to represent the term structures of the location, the scale, and the higher-order moments, and impose stringent conditions on the learning process to ensure the neural net-based curve representation is free of static arbitrage. This specification is structurally clear in that it separates the modeling of randomness from the modeling of the term structures of the parameters. It is data adaptive in that we use neural nets to represent the shape of the stochastic curve. It is also generative in that the functional form of the stochastic curve, although parameterized by neural nets, is an explicit and deterministic function of the standard normal. This explicitness allows for the efficient generation of samples to price options across strikes and maturities, without compromising data adaptability. We have validated the effectiveness of this approach by benchmarking it against a comprehensive set of baseline models. Experiments show that the extracted risk-neutral densities accommodate a diverse range of shapes. Its accuracy significantly outperforms the extensive set of baseline models--including three parametric models and nine stochastic process models--in terms of accuracy and stability. The success of this approach is attributed to its capacity to offer flexible term structures for risk-neutral skewness and kurtosis.
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