Jan. 1, 2022, midnight | Michaël Allouche, Stéphane Girard, Emmanuel Gobet

JMLR www.jmlr.org

Feedforward neural networks based on Rectified linear units (ReLU) cannot efficiently approximate quantile functions which are not bounded, especially in the case of heavy-tailed distributions. We thus propose a new parametrization for the generator of a Generative adversarial network (GAN) adapted to this framework, basing on extreme-value theory. An analysis of the uniform error between the extreme quantile and its GAN approximation is provided: We establish that the rate of convergence of the error is mainly driven by the second-order …

ev events gan networks neural networks relu simulation

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