无套利的正则化

Anastasis Kratsios, Cody B. Hyndman
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引用次数: 7

摘要

我们引入了一种无监督和非预期的机器学习算法,该算法能够从各种各样的模型中检测和消除套利。在这个框架中,风险中性定价理论的基本结果和技术,如NFLVR、市场完备性和测度变化,被赋予了一个等效的公式,并扩展到可变形为无套利模型的模型中。我们使用该方案构建了一个元算法,该算法确保广泛的因子估计方案返回无套利的估计,并将这些附加信息纳入其估计过程。我们表明,使用我们的元算法,我们能够产生更准确的远期利率曲线估计,特别是在长端。然后使用模型与其无套利正则化之间的差来构建错误定价检测或分类算法,该算法反过来用于开发配对交易策略。我们的理论为风险中性定价理论提供了坚实的理论基础,该理论能够处理可能存在套利但可以变形为无套利模型的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Arbitrage-Free Regularization
We introduce an unsupervised and non-anticipative machine learning algorithm which is able to detect and remove arbitrage from a wide variety models. In this framework, fundamental results and techniques from risk-neutral pricing theory such as NFLVR, market completeness, and changes of measure are given an equivalent formulation and extended to models which are deformable into arbitrage-free models. We use this scheme to construct a meta-algorithm which ensures that a wide range of factor estimation schemes return arbitrage-free estimates and incorporate this additional information into their estimation procedure. We show that using our meta-algorithm we are able to produce more accurate estimates of forward-rate curves, specifically at the long-end. The spread between a model and its arbitrage-free regularization is then used to construct a mis-pricing detection or classification algorithm, which is in turn used to develop a pairs trading strategy. Our theory provides a sound theoretical foundation for a risk-neutral pricing theory capable of handling models which potentially admit arbitrage but which can which can be deformed into arbitrage-free models.
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