Spanning Multi-Asset Payoffs With ReLUs

Sébastien BossuLPSM, UPCité, Stéphane CrépeyLPSM, UPCité, Hoang-Dung NguyenLPSM, UPCité
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Abstract

We propose a distributional formulation of the spanning problem of a multi-asset payoff by vanilla basket options. This problem is shown to have a unique solution if and only if the payoff function is even and absolutely homogeneous, and we establish a Fourier-based formula to calculate the solution. Financial payoffs are typically piecewise linear, resulting in a solution that may be derived explicitly, yet may also be hard to numerically exploit. One-hidden-layer feedforward neural networks instead provide a natural and efficient numerical alternative for discrete spanning. We test this approach for a selection of archetypal payoffs and obtain better hedging results with vanilla basket options compared to industry-favored approaches based on single-asset vanilla hedges.
用再循环单位跨越多资产报酬率
我们提出了虚值一篮子期权多资产报酬跨度问题的分布式表述。当且仅当报酬函数是偶数且绝对同质时,该问题才有唯一的解,我们建立了一个基于傅立叶的公式来计算该解。金融报酬通常是片断线性的,因此可以显式推导出解法,但也可能难以在数值上加以利用。而单隐层前馈神经网络则为离散跨度提供了一种自然高效的数值替代方法。我们对这一方法进行了测试,并选择了一些典型的报酬率,结果发现,与业界推崇的基于单一资产虚值对冲的方法相比,虚值一篮子期权的对冲效果更好。
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