Search

Workshop

The signature-based GAN model for time series generation

  • Hao Ni (University College London, London, United Kingdom)
Live Stream MPI für Mathematik in den Naturwissenschaften Leipzig (Live Stream)

Abstract

The time series generation is a challenging problem, as existing generative adversarial networks (GANs) usually cannot capture the temporal dynamics well. Besides, the training of GAN models is computationally expensive and not stable. In this talk, I will present our recent work on a novel GAN framework for time series generation, which uses the principled and universal (log)-signature feature of time series to extract the temporal dependence of time series and design a more compact generator and discriminator. Numerical results show that our method improves the stability and of training computational efficiency while capturing the temporal dynamics of the observed time series.

conference
8/11/20 8/14/20

Geometry of curves in time series and shape analysis

MPI für Mathematik in den Naturwissenschaften Leipzig Live Stream

Saskia Gutzschebauch

Max-Planck-Institut für Mathematik in den Naturwissenschaften Contact via Mail

Joscha Diehl

University of Greifswald

Michael Ruddy

Max Planck Institute for Mathematics in the Sciences

Max von Renesse

Leipzig University