Machine Learning for Multiple Yield Curve Markets: Fast Calibration in the Gaussian Affine Framework

Sandrine Gümbel, Thorsten Schmidt
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引用次数: 1

Abstract

Calibration is a highly challenging task, in particular in multiple yield curve markets. This paper is a first attempt to study the chances and challenges of the application of machine learning techniques for this. We employ Gaussian process regression, a machine learning methodology having many similarities with extended Kálmán filtering, which has been applied many times to interest rate markets and term structure models. We find very good results for the single-curve markets and many challenges for the multi-curve markets in a Vasiček framework. The Gaussian process regression is implemented with the Adam optimizer and the non-linear conjugate gradient method, where the latter performs best. We also point towards future research.
多收益率曲线市场的机器学习:高斯仿射框架下的快速校准
校准是一项极具挑战性的任务,特别是在多个收益率曲线市场中。本文是第一次尝试研究机器学习技术在这方面应用的机遇和挑战。我们采用高斯过程回归,这是一种机器学习方法,与扩展Kálmán过滤有许多相似之处,该方法已多次应用于利率市场和期限结构模型。我们发现,在vasasiek框架下,单曲线市场取得了很好的结果,而多曲线市场则面临许多挑战。采用Adam优化器和非线性共轭梯度法实现高斯过程回归,其中后者的性能最好。我们还指出了未来的研究。
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