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May 18, 2021 at 14:16 comment added Yves You will find good material provided by Simo Särkkä on State-Space Representation of Gaussian Process near slide #17. This (Finnish) source is closely related to that linked in the answer of @Chango. Since the state equation is a (Continuous time) autoregression, the covariance kernel of the vector state process can be given in a closed form involving exponential of matrices.
May 18, 2021 at 12:55 comment added An old man in the sea. @Yves, and how would one derive the covariance kernel? Do you have any references?
May 18, 2021 at 11:50 comment added Yves The answer is yes if the (Contibous-Time) State Space is linear and if it involves Gaussian noise(s). One simply derive the covariance kernel. However the converse is not true beause some GP can have long memory. It is very interesting to represent a GP in State-Space form but I can not see the point at doing the opposite. Is this really what is wanted?
May 18, 2021 at 11:15 answer added Chango timeline score: 0
May 17, 2021 at 10:36 review Low quality posts
May 17, 2021 at 10:40
May 17, 2021 at 10:17 history asked An old man in the sea. CC BY-SA 4.0