krigedge: Delta套期保值的高斯过程替代品

Q3 Mathematics
M. Ludkovski, Y. Saporito
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引用次数: 4

摘要

我们研究了一种基于高斯过程(GP)代理的选项希腊近似的机器学习方法。我们的动机是在直接计算非常昂贵的情况下实现Delta套期保值,比如在局部波动模型中,或者只能近似地完成。该方法采用噪声观测的期权价格,拟合非参数输入-输出映射,然后对后者进行解析微分,得到不同的价格敏感性。因此,一个代理会产生多个自洽的希腊人。我们详细分析了GP代理的许多方面,包括核族的选择、仿真设计、趋势函数的选择和噪声的影响。此外,我们将Delta近似的质量与由此产生的离散时间套期损失联系起来。结果用两个广泛的案例研究来说明,这些案例研究考虑了Delta, Theta和Gamma的估计以及使用各种统计度量的基准近似质量和不确定性量化。我们的主要结论是建议使用mat核,包括虚拟训练点捕获边界条件的好处,以及在基于股票路径的数据集上训练时保真度的显著损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KrigHedge: Gaussian Process Surrogates for Delta Hedging
We investigate a machine learning approach to option Greeks approximation based on Gaussian Process (GP) surrogates. Our motivation is to implement Delta hedging in cases where direct computation is expensive, such as in local volatility models, or can only ever be done approximately. The proposed method takes in noisily observed option prices, fits a non-parametric input-output map and then analytically differentiates the latter to obtain the various price sensitivities. Thus, a single surrogate yields multiple self-consistent Greeks. We provide a detailed analysis of numerous aspects of GP surrogates, including choice of kernel family, simulation design, choice of trend function and impact of noise. We moreover connect the quality of the Delta approximation to the resulting discrete-time hedging loss. Results are illustrated with two extensive case studies that consider estimation of Delta, Theta and Gamma and benchmark approximation quality and uncertainty quantification using a variety of statistical metrics. Among our key take-aways are the recommendation to use Matérn kernels, the benefit of including virtual training points to capture boundary conditions, and the significant loss of fidelity when training on stock-path-based datasets.
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来源期刊
Applied Mathematical Finance
Applied Mathematical Finance Economics, Econometrics and Finance-Finance
CiteScore
2.30
自引率
0.00%
发文量
6
期刊介绍: The journal encourages the confident use of applied mathematics and mathematical modelling in finance. The journal publishes papers on the following: •modelling of financial and economic primitives (interest rates, asset prices etc); •modelling market behaviour; •modelling market imperfections; •pricing of financial derivative securities; •hedging strategies; •numerical methods; •financial engineering.
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