We consider quasi maximum likelihood (QML) estimation for general non-Gaussian discrete-time
linear state space models and equidistantly observed multivariate Lévy-driven continuous-time autoregressive
moving average (MCARMA) processes. In the discrete-time setting, we prove strong consistency and asymptotic
normality of the QML estimator under standard moment assumptions and a strong-mixing condition
on the output process of the state space model. In the second part of the paper, we investigate probabilistic
and analytical properties of equidistantly sampled continuous-time state space models and apply our results
from the discrete-time setting to derive the asymptotic properties of the QML estimator of discretely recorded
MCARMA processes. Under natural identifiability conditions, the estimators are again consistent and asymptotically
normally distributed for any sampling frequency. We also demonstrate the practical applicability of
our method through a simulation study and a data example from econometrics.
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We consider quasi maximum likelihood (QML) estimation for general non-Gaussian discrete-time
linear state space models and equidistantly observed multivariate Lévy-driven continuous-time autoregressive
moving average (MCARMA) processes. In the discrete-time setting, we prove strong consistency and asymptotic
normality of the QML estimator under standard moment assumptions and a strong-mixing condition
on the output process of the state space model. In the second part of the paper, we investi...
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