A General Linear Non-Gaussian State-Space Model:
Identifiability, Identification, and Applications
K. Zhang & A. Hyvärinen; JMLR W&CP
20:113–128, 2011.
Abstract
State-space modeling provides a powerful tool for system identification and
prediction. In linear state-space models the data are usually assumed to be Gaussian and the
models have certain structural constraints such that they are identifiable. In this paper we
propose a non-Gaussian state-space model which does not have such constraints. We prove that
this model is fully identifiable. We then propose an efficient two-step method for parameter
estimation: one first extracts the subspace of the latent processes based on the temporal
information of the data, and then performs multichannel blind deconvolution, making
use of both the temporal information and non-Gaussianity. We conduct a series of
simulations to illustrate the performance of the proposed method. Finally, we apply
the proposed model and parameter estimation method on real data, including major
world stock indices and magnetoencephalography (MEG) recordings. Experimental
results are encouraging and show the practical usefulness of the proposed model and
method.
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