International audienceThis paper presents a way to access both the multiple-order and parameters of a multidimensional complex number autoregressive (AR) model through matrix factorization. The principle of this technique consists of the transformation of the multidimensional model to a pseudo simple-input simple-output AR model, then performing factorization of the covariance matrix of the data. This factorization then leads to a recursive form of the parameter and order estimation. This paper makes two principal contributions. The first is a generalization of one dimensional factored form algorithm, and the second is that it makes it possible to access all the possible different orders and parameters of a multidimensional complex number A...
Tridiagonal parametrizations of linear state-space models are proposed for multivariable system iden...
In the present article, we are interested in the identification of canonical ARMA echelon form model...
International audienceInverse identification of complex fluid behaviors is a tricky task because som...
International audienceThis paper presents a way to access both the multiple-order and parameters of ...
International audienceThis paper presents a technique for accessing multidimensional complex number ...
In this paper we propose an innovative recursive learning algorithm to sequentially estimate multiva...
Abstract Multi-dimensional model order selection (MOS) techniques achieve an improved accuracy, reli...
The work on model-order estimation by Bayesian predictive densities of 1-D real autoregressive proce...
Abstract — R-dimensional parameter estimation problems are common in a variety of signal processing ...
115 p. : ill. ; 30 cmThis thesis is concerned with parametric system identification for linear multi...
Two algorithms are proposed to compute recursively the model order testing criteria and parameters s...
In this paper an algorithm is proposed to compute recursively the model order testing criteria and p...
AbstractLetX1, …, Xnbe observations from a multivariate AR(p) model with unknown orderp. A resamplin...
Simultaneous evaluation of the whole set of the model parameters of different orders together with a...
This paper discusses identification of systems of cointegrating relations in I(2) vector autoregress...
Tridiagonal parametrizations of linear state-space models are proposed for multivariable system iden...
In the present article, we are interested in the identification of canonical ARMA echelon form model...
International audienceInverse identification of complex fluid behaviors is a tricky task because som...
International audienceThis paper presents a way to access both the multiple-order and parameters of ...
International audienceThis paper presents a technique for accessing multidimensional complex number ...
In this paper we propose an innovative recursive learning algorithm to sequentially estimate multiva...
Abstract Multi-dimensional model order selection (MOS) techniques achieve an improved accuracy, reli...
The work on model-order estimation by Bayesian predictive densities of 1-D real autoregressive proce...
Abstract — R-dimensional parameter estimation problems are common in a variety of signal processing ...
115 p. : ill. ; 30 cmThis thesis is concerned with parametric system identification for linear multi...
Two algorithms are proposed to compute recursively the model order testing criteria and parameters s...
In this paper an algorithm is proposed to compute recursively the model order testing criteria and p...
AbstractLetX1, …, Xnbe observations from a multivariate AR(p) model with unknown orderp. A resamplin...
Simultaneous evaluation of the whole set of the model parameters of different orders together with a...
This paper discusses identification of systems of cointegrating relations in I(2) vector autoregress...
Tridiagonal parametrizations of linear state-space models are proposed for multivariable system iden...
In the present article, we are interested in the identification of canonical ARMA echelon form model...
International audienceInverse identification of complex fluid behaviors is a tricky task because som...