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Deep learning algorithms for hedging with frictions

机译:用于摩擦对冲的深度学习算法

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This work studies the deep learning-based numerical algorithms for optimal hedging problems in markets with general convex transaction costs. Our main focus is on how these algorithms scale with the length of the trading time horizon. Based on the comparison results of the FBSDE solver by Han, Jentzen, and E (2018) and the Deep Hedging algorithm by Buehler, Gonon, Teichmann, and Wood (2019), we propose a Stable-Transfer Hedging (ST-Hedging) algorithm, to aggregate the convenience of the leading-order approximation formulas and the accuracy of the deep learning-based algorithms. Our ST-Hedging algorithm achieves the same state-of-the-art performance in short and moderately long time horizon as FBSDE solver and Deep Hedging, and generalize well to long time horizon when previous algorithms become suboptimal. With the transfer learning technique, ST-Hedging drastically reduce the training time, and shows great scalability to high-dimensional settings. This opens up new possibilities in model-based deep learning algorithms in economics, finance, and operational research, which takes advantage of the domain expert knowledge and the accuracy of the learning-based methods.
机译:这项工作研究深度上优于数值算法最优套期保值问题在市场与一般凸交易成本。我们的主要重点是如何将这些算法交易时间范围的长度。基于FBSDE的比较结果解算器由汉、Jentzen和E(2018)和深套期保值算法比勒,Gonon,摄影师,木(2019),我们提出一个稳定移交套期保值(ST-Hedging)算法,聚合便利的领头阶近似公式和深度的准确性上优于算法。算法实现相同的最先进的在长和适度短时间的表现地平线FBSDE解算器和深对冲推广长时时间范围以前的算法成为次优。转移学习技术,ST-Hedging大大减少训练时间,并显示很好的可伸缩性高维设置。这在基于模型开辟了新的可能性深入学习算法在经济学、金融、运筹学,利用领域专家的知识和准确性基于的学习方法。

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