In this paper we consider the problem of constructing confidence regions for the parameters of identified models of dynamical systems. Taking a major departure from the previous literature on the subject, we introduce a new approach called ‘Leaveout Sign-dominant Correlation Regions’ (LSCR) which delivers confidence regions with guaranteed probability. All results hold rigorously true for any finite number of data points and no asymptotic theory is involved. Moreover, prior knowledge on the noise affecting the data is reduced to a minimum. The approach is illustrated on several simulation examples, showing that it delivers practically useful confidence sets with guaranteed probabilities
Sign-Perturbed Sums (SPS) is a system identification method that constructs non-asymptotic confidenc...
Recently, a new inferential models approach has been proposed for statistics. Specifically, this app...
accepté à AutomaticaIn parameter estimation, it is often desirable to supplement the estimates with ...
In this paper we consider the problem of constructing confidence regions for the parameters of nonl...
© 2020 Masoud Moravej KhorasaniSystem identification deals with the problem of building mathematical...
Abstract — In this paper we consider the problem of con-structing confidence regions for the paramet...
We propose two refinements to the LSCR (Leave-Out Sign-Dominant Correlation Regions) method to impro...
Abstract We propose a new finite sample system identification method, called Sign-Perturbed Sums (SP...
In 2005, with the publication of the LSCR algorithm (Leave-out Sign-dominant Correlation Regions), a...
Finite-sample system identification algorithms can be used to build guaranteed confidence regions fo...
Finite-sample system identification algorithms can be used to build guaranteed confidence regions fo...
Abstract — In this paper we propose an algorithm for con-structing non-asymptotic confidence regions...
In this paper we propose an algorithm for constructing non-asymptotic confidence regions for paramet...
In parameter estimation, it is often desirable to supplement the estimates with an assessment of the...
Sign-Perturbed Sums (SPS) is a system identification method that constructs non-asymptotic confidenc...
Sign-Perturbed Sums (SPS) is a system identification method that constructs non-asymptotic confidenc...
Recently, a new inferential models approach has been proposed for statistics. Specifically, this app...
accepté à AutomaticaIn parameter estimation, it is often desirable to supplement the estimates with ...
In this paper we consider the problem of constructing confidence regions for the parameters of nonl...
© 2020 Masoud Moravej KhorasaniSystem identification deals with the problem of building mathematical...
Abstract — In this paper we consider the problem of con-structing confidence regions for the paramet...
We propose two refinements to the LSCR (Leave-Out Sign-Dominant Correlation Regions) method to impro...
Abstract We propose a new finite sample system identification method, called Sign-Perturbed Sums (SP...
In 2005, with the publication of the LSCR algorithm (Leave-out Sign-dominant Correlation Regions), a...
Finite-sample system identification algorithms can be used to build guaranteed confidence regions fo...
Finite-sample system identification algorithms can be used to build guaranteed confidence regions fo...
Abstract — In this paper we propose an algorithm for con-structing non-asymptotic confidence regions...
In this paper we propose an algorithm for constructing non-asymptotic confidence regions for paramet...
In parameter estimation, it is often desirable to supplement the estimates with an assessment of the...
Sign-Perturbed Sums (SPS) is a system identification method that constructs non-asymptotic confidenc...
Sign-Perturbed Sums (SPS) is a system identification method that constructs non-asymptotic confidenc...
Recently, a new inferential models approach has been proposed for statistics. Specifically, this app...
accepté à AutomaticaIn parameter estimation, it is often desirable to supplement the estimates with ...