Uniqueness of prediction error estimates of multivariable moving average models
✍ Scribed by Petre Stoica; Torsten Söderström
- Publisher
- Elsevier Science
- Year
- 1982
- Tongue
- English
- Weight
- 303 KB
- Volume
- 18
- Category
- Article
- ISSN
- 0005-1098
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✦ Synopsis
Ai~truet--In prediction error (PE) identification of the parameter estimates is given by the global minimum of a scalar-valued function of the innovation sample covariance matrix. It may happen that the loss function has multiple local minimum points so that a numerical search routine can fail to find the global minimum. Such a situation, usually referred to as lack of uniqueness of the estimates, was experienced in practice and also theoretically examined for various model structures. A unique minimum of the criterion is also crucial for convergence of recursive PE algorithms. In this paper muitivariable moving average (MA) models are considered. It is proved that for such models any reasonable PE criterion has asymptotically a unique stationary point. Furthermore it is shown that this stationary point is a (global) minimum which corresponds to the true parameter vector. This extends the result known for univariate MA models to the multivariate case.
📜 SIMILAR VOLUMES
The direcr estimation of the k-step prediction models of ARMA processes is discussed. The emphasis is on the uniqueness properties of the parameter estimates of such models, obtained by using either a prediction error method (PEM) or a pseudo-linear regression (PLR) algorithm. The main result is th