Abstract:
The paper is concerned with parametric identification of linear plants represented as a regression model. Algorithms are obtained which should not satisfy the assumption of zero mean noise, a typical requirement for a priori specification of expectation. The underlying conception of the algorithms is common in theory of statistical solutions, viz. that optimization problems are regarded with the minimal empirical estimate of the mean risk as the criterion.