We consider the problem of non-asymptotical confidence estimation of linear parameters in multidimensional dynamical systems defined by general regression models with discrete time and conditionally Gaussian noises under the assumption that the number of unknown parameters does not exceed the dimension of the observed process. We develop a non-asymptotical sequential procedure for constructing a confidence region for the vector of unknown parameters with a given diameter and given confidence coefficient that uses a special rule for stopping the observations. A key role in the procedure is played by a novel property established for sequential least squares point estimates earlier proposed by the authors. With a numerical modeling example of ...
The object of this paper is to present results on the sequential detection of known signals, and of ...
AbstractLeast squares estimation of the parameters of a single input-single output linear autonomous...
AbstractWe show that if an appropriate stopping rule is used to determine the sample size when estim...
We consider the problem of non-asymptotical confidence estimation of linear parameters in multidimen...
The article considers the problem of estimating linear parameters in stochastic regression models wi...
The article considers the problem of estimating linear parameters in stochastic regression models wi...
International audienceThe quality of the prediction of dynamical system evolution is determined by t...
AbstractWe give the asymptotic statistical theory (strong consistency and asymptotic normality) of a...
The paper considers the estimation problem of the autoregressive parameter in th
The quality of the prediction of the dynamical system evolutionis determined by the accuracy to whic...
This paper first strictly proved that the growth of the second moment of a large class of Gaussian p...
Caption title.Includes bibliographical references (p. 23-25).Supported by the U.S. Air Force Office ...
We consider the problem of estimating the parameters of an autoregressive process based on observati...
This thesis examines the basic asymptotic properties of various stochastic adaptive systems for iden...
This thesis examines the basic asymptotic properties of various stochastic adaptive systems for iden...
The object of this paper is to present results on the sequential detection of known signals, and of ...
AbstractLeast squares estimation of the parameters of a single input-single output linear autonomous...
AbstractWe show that if an appropriate stopping rule is used to determine the sample size when estim...
We consider the problem of non-asymptotical confidence estimation of linear parameters in multidimen...
The article considers the problem of estimating linear parameters in stochastic regression models wi...
The article considers the problem of estimating linear parameters in stochastic regression models wi...
International audienceThe quality of the prediction of dynamical system evolution is determined by t...
AbstractWe give the asymptotic statistical theory (strong consistency and asymptotic normality) of a...
The paper considers the estimation problem of the autoregressive parameter in th
The quality of the prediction of the dynamical system evolutionis determined by the accuracy to whic...
This paper first strictly proved that the growth of the second moment of a large class of Gaussian p...
Caption title.Includes bibliographical references (p. 23-25).Supported by the U.S. Air Force Office ...
We consider the problem of estimating the parameters of an autoregressive process based on observati...
This thesis examines the basic asymptotic properties of various stochastic adaptive systems for iden...
This thesis examines the basic asymptotic properties of various stochastic adaptive systems for iden...
The object of this paper is to present results on the sequential detection of known signals, and of ...
AbstractLeast squares estimation of the parameters of a single input-single output linear autonomous...
AbstractWe show that if an appropriate stopping rule is used to determine the sample size when estim...