LGPRMFMLJun 14, 2021

Random feature neural networks learn Black-Scholes type PDEs without curse of dimensionality

arXiv:2106.08900v151 citations
Originality Highly original
AI Analysis

This addresses the computational challenge of solving high-dimensional PDEs in finance, providing a provably efficient method for pricing options without exponential complexity.

The paper tackles learning solutions to Black-Scholes type PDEs using random feature neural networks, showing that these networks achieve error bounds without the curse of dimensionality, as validated numerically for basket options.

This article investigates the use of random feature neural networks for learning Kolmogorov partial (integro-)differential equations associated to Black-Scholes and more general exponential Lévy models. Random feature neural networks are single-hidden-layer feedforward neural networks in which only the output weights are trainable. This makes training particularly simple, but (a priori) reduces expressivity. Interestingly, this is not the case for Black-Scholes type PDEs, as we show here. We derive bounds for the prediction error of random neural networks for learning sufficiently non-degenerate Black-Scholes type models. A full error analysis is provided and it is shown that the derived bounds do not suffer from the curse of dimensionality. We also investigate an application of these results to basket options and validate the bounds numerically. These results prove that neural networks are able to \textit{learn} solutions to Black-Scholes type PDEs without the curse of dimensionality. In addition, this provides an example of a relevant learning problem in which random feature neural networks are provably efficient.

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