# Ornstein-Uhlenbeck processes in Hilbert space with non-Gaussian stochastic volatility

@article{Benth2015OrnsteinUhlenbeckPI, title={Ornstein-Uhlenbeck processes in Hilbert space with non-Gaussian stochastic volatility}, author={Fred Espen Benth and Barbara Ruediger and Andr{\'e} Suess}, journal={arXiv: Probability}, year={2015} }

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