AbstractThis paper deals with autoregressive (AR) models of singular spectra, whose corresponding transfer function matrices can be expressed in a stable AR matrix fraction description D−1(q)B with B a tall constant matrix of full column rank and with the determinantal zeros of D(q) all stable, i.e. in |q|>1,q∈C. To obtain a parsimonious AR model, a canonical form is derived and a number of advantageous properties are demonstrated. First, the maximum lag of the canonical AR model is shown to be minimal in the equivalence class of AR models of the same transfer function matrix. Second, the canonical form model is shown to display a nesting property under natural conditions. Finally, an upper bound is provided for the total number of real par...
Sample auto-covariance matrix plays a crucial role in high dimensional times series analysis. In thi...
We consider generalized linear dynamic factor models. These models have been developed recently and ...
International audienceConsider the empirical autocovariance matrix at a given non-zero time lag base...
This paper deals with autoregressive models of singular spectra. The starting point is the assumptio...
Autoregressive (AR) models are commonly obtained from the linear autocorrelation of a discrete-time ...
We consider Generalized Linear Dynamic Factor Models in a stationary context, where the latent varia...
AbstractAn autoregressive type approximation is determined from an AR.MA model of physical process b...
Time series modeling as the sum of an autoregressive (AR) process and sinusoids is proposed. When th...
This article is concerned with the spectral behavior of p-dimensional linear processes in the modera...
Time series modeling as the sum of an autoregressive (AR) process and sinusoids is proposed. When th...
Time series modeling as the sum of an autoregressive (AR) process and sinusoids is proposed. When th...
Time series modeling as the sum of an autoregressive (AR) process and sinusoids is proposed. When th...
This article is concerned with the spectral behavior of p-dimensional linear processes in the modera...
This paper is devoted to the estimation of the minimal dimension P of the state-space realizations o...
A method of performing out conditioned spectral analysis without the drawbacks of traditional Fourie...
Sample auto-covariance matrix plays a crucial role in high dimensional times series analysis. In thi...
We consider generalized linear dynamic factor models. These models have been developed recently and ...
International audienceConsider the empirical autocovariance matrix at a given non-zero time lag base...
This paper deals with autoregressive models of singular spectra. The starting point is the assumptio...
Autoregressive (AR) models are commonly obtained from the linear autocorrelation of a discrete-time ...
We consider Generalized Linear Dynamic Factor Models in a stationary context, where the latent varia...
AbstractAn autoregressive type approximation is determined from an AR.MA model of physical process b...
Time series modeling as the sum of an autoregressive (AR) process and sinusoids is proposed. When th...
This article is concerned with the spectral behavior of p-dimensional linear processes in the modera...
Time series modeling as the sum of an autoregressive (AR) process and sinusoids is proposed. When th...
Time series modeling as the sum of an autoregressive (AR) process and sinusoids is proposed. When th...
Time series modeling as the sum of an autoregressive (AR) process and sinusoids is proposed. When th...
This article is concerned with the spectral behavior of p-dimensional linear processes in the modera...
This paper is devoted to the estimation of the minimal dimension P of the state-space realizations o...
A method of performing out conditioned spectral analysis without the drawbacks of traditional Fourie...
Sample auto-covariance matrix plays a crucial role in high dimensional times series analysis. In thi...
We consider generalized linear dynamic factor models. These models have been developed recently and ...
International audienceConsider the empirical autocovariance matrix at a given non-zero time lag base...