A time-stepping deep gradient flow method for option pricing in (rough) diffusion models

Antonis Papapantoleon, Jasper Rou
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Abstract

We develop a novel deep learning approach for pricing European options in diffusion models, that can efficiently handle high-dimensional problems resulting from Markovian approximations of rough volatility models. The option pricing partial differential equation is reformulated as an energy minimization problem, which is approximated in a time-stepping fashion by deep artificial neural networks. The proposed scheme respects the asymptotic behavior of option prices for large levels of moneyness, and adheres to a priori known bounds for option prices. The accuracy and efficiency of the proposed method is assessed in a series of numerical examples, with particular focus in the lifted Heston model.
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用于(粗略)扩散模型期权定价的时间步进深梯度流方法
我们为欧式期权扩散模型的定价开发了一种新颖的深度学习方法,它可以高效地处理粗糙波动率模型的马尔可夫近似所产生的高维问题。期权定价偏微分方程被重新表述为能量最小化问题(energy minimizationproblem),并通过深度人工神经网络以时间步进的方式对其进行逼近。所提出的方案尊重了期权价格在较大货币性水平下的渐近行为,并遵守了期权价格的先验已知边界。我们在一系列数值示例中评估了所提方法的准确性和效率,并特别关注了提升的赫斯顿模型。
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