Still Crazy after All These Years: The Returns on Carry Trade

E. Colombo, Gianfranco Forte, Roberto Rossignoli
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Abstract

This paper proposes a novel approach to provide directional forecasts for carry trade strategies; this approach is based on Support VectorMachines (SVM), a learning algorithm which delivers extremely promising results. Building on recent findings of the literature on carry trade we condition the SVM on indicators of uncertainty and risk; we show that this provides a dramatic improvement of the performance of the strategy, in particular during periods of financial distress such as the recent financial crises. Disentangling between measures of risk we show that the best performances are obtained by conditioning the SVM on measures of liquidity risk rather than on market volatility.
多年后依然疯狂:套息交易的回报
本文提出了一种为套息交易策略提供方向性预测的新方法;该方法基于支持向量机(SVM),这是一种学习算法,可以提供非常有希望的结果。基于最近关于套利交易的文献发现,我们将支持向量机条件化为不确定性和风险指标;我们表明,这为该战略的绩效提供了显着改善,特别是在财务困境期间,如最近的金融危机。通过对风险度量的分离,我们发现通过将支持向量机调节为流动性风险度量而不是市场波动度量来获得最佳性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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