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A discussion of model accuracy in system identification. (English) Zbl 0782.93029

The author of the article discusses a number of techniques by which the accuracy of an estimated model can be judged. He deals with the two components that model error has in practical applications (a bias error as well as a random error) and points out the role of model validation procedures for assessing these errors.
Reviewer: G.Dimitriu (Iaşi)

MSC:

93B30 System identification
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