This paper is devoted to the estimation of the minimal dimension P of the state-space realizations of a high-dimensional time series y, defined as a noisy version (the noise is white and Gaussian) of a useful signal with low rank rational spectral density, in the high-dimensional asymptotic regime where the number of available samples N and the dimension of the time series M converge towards infinity at the same rate. In the classical low-dimensional regime, P is estimated as the number of significant singular values of the empirical autocovariance matrix between the past and the future of y, or as the number of significant estimated canonical correlation coefficients between the past and the future of y. Generalizing large random matrix ...
22 pages, presentation of the main results and of the hypotheses slightly modified.In this paper, we...
22 pages, presentation of the main results and of the hypotheses slightly modified.In this paper, we...
This article is concerned with the spectral behavior of $p$-dimensional linear processes in...
A number of recent works proposed to use large random matrix theory in the context of high-dimension...
A number of recent works proposed to use large random matrix theory in the context of high-dimension...
A number of recent works proposed to use large random matrix theory in the context of high-dimension...
Sample auto-covariance matrix plays a crucial role in high dimensional times series analysis. In thi...
We present a general method to detect and extract from a finite time sample statistically meaningful...
Consider the empirical autocovariance matrix at a given non-zero time lag based on observations from...
International audienceConsider the empirical autocovariance matrix at a given non-zero time lag base...
This article is concerned with the spectral behavior of p-dimensional linear processes in the modera...
International audienceConsider the empirical autocovariance matrix at a given non-zero time lag base...
International audienceWe address the detection of a low rank nxn matrix X0 from the noisy observatio...
International audienceWe address the detection of a low rank nxn matrix X0 from the noisy observatio...
This article is concerned with the spectral behavior of p-dimensional linear processes in the modera...
22 pages, presentation of the main results and of the hypotheses slightly modified.In this paper, we...
22 pages, presentation of the main results and of the hypotheses slightly modified.In this paper, we...
This article is concerned with the spectral behavior of $p$-dimensional linear processes in...
A number of recent works proposed to use large random matrix theory in the context of high-dimension...
A number of recent works proposed to use large random matrix theory in the context of high-dimension...
A number of recent works proposed to use large random matrix theory in the context of high-dimension...
Sample auto-covariance matrix plays a crucial role in high dimensional times series analysis. In thi...
We present a general method to detect and extract from a finite time sample statistically meaningful...
Consider the empirical autocovariance matrix at a given non-zero time lag based on observations from...
International audienceConsider the empirical autocovariance matrix at a given non-zero time lag base...
This article is concerned with the spectral behavior of p-dimensional linear processes in the modera...
International audienceConsider the empirical autocovariance matrix at a given non-zero time lag base...
International audienceWe address the detection of a low rank nxn matrix X0 from the noisy observatio...
International audienceWe address the detection of a low rank nxn matrix X0 from the noisy observatio...
This article is concerned with the spectral behavior of p-dimensional linear processes in the modera...
22 pages, presentation of the main results and of the hypotheses slightly modified.In this paper, we...
22 pages, presentation of the main results and of the hypotheses slightly modified.In this paper, we...
This article is concerned with the spectral behavior of $p$-dimensional linear processes in...