The problem of estimating the model parameters of a discrete-index reciprocal Gaussian random process from a limited number of noisy observations is addressed. The general case of a first-order multivariate process is analyzed, stating its basic properties and deriving a linear equation set that relates the model parameters (including the unknown variance of the observation noise) to the (generally nonstationary) autocorrelation function of the observed process. It generalizes to the reciprocal processes the so-called 'high-order Yule-Walker equations' for AR processes. Based on these results, a practical estimation algorithm is proposed
This paper considers GMM estimation of autoregressive processes. It is shown that, contrary to the c...
We propose a semi-nonparametric method of identification and estimation for Gaussian autoregressive ...
In this article, we consider two univariate random environment integer-valued autoregressive process...
A common approach in modeling signals in many engineering applications consists in adopting autoregr...
A common approach in modeling signals in many engineering applications consists in adopting autoregr...
none3A common approach in modeling signals in many engineering applications consists in adopting aut...
In this letter we propose an identification procedure of a sparse graphical model associated to a Ga...
This paper deals with the problem of identifying autoregressive models in presence of additive measu...
This paper deals with the problem of identifying autoregressive models in presence of additive measu...
In this paper we examine the characterization of multivariate reciprocal stationary Gaussian process...
none3This paper deals with the problem of identifying autoregressive models in presence of additive ...
Stationary reciprocal processes defined on a finite interval of the integer line can be seen as a sp...
In this paper we elaborate an algorithm to estimate p-order Random Coefficient Autoregressive Model ...
A reciprocal equation is a kind of descriptor linear discrete-index stochastic system which is well ...
A random coefficient autoregressive process for count data based on a generalized thinning operator ...
This paper considers GMM estimation of autoregressive processes. It is shown that, contrary to the c...
We propose a semi-nonparametric method of identification and estimation for Gaussian autoregressive ...
In this article, we consider two univariate random environment integer-valued autoregressive process...
A common approach in modeling signals in many engineering applications consists in adopting autoregr...
A common approach in modeling signals in many engineering applications consists in adopting autoregr...
none3A common approach in modeling signals in many engineering applications consists in adopting aut...
In this letter we propose an identification procedure of a sparse graphical model associated to a Ga...
This paper deals with the problem of identifying autoregressive models in presence of additive measu...
This paper deals with the problem of identifying autoregressive models in presence of additive measu...
In this paper we examine the characterization of multivariate reciprocal stationary Gaussian process...
none3This paper deals with the problem of identifying autoregressive models in presence of additive ...
Stationary reciprocal processes defined on a finite interval of the integer line can be seen as a sp...
In this paper we elaborate an algorithm to estimate p-order Random Coefficient Autoregressive Model ...
A reciprocal equation is a kind of descriptor linear discrete-index stochastic system which is well ...
A random coefficient autoregressive process for count data based on a generalized thinning operator ...
This paper considers GMM estimation of autoregressive processes. It is shown that, contrary to the c...
We propose a semi-nonparametric method of identification and estimation for Gaussian autoregressive ...
In this article, we consider two univariate random environment integer-valued autoregressive process...