International audienceIn estimation theory, the asymptotic (in the number of samples) efficiency of the Maximum Likelihood (ML) estimator is a well known result [1]. Nevertheless, in some scenarios, the number of snapshots may be small. We recently investigated the asymptotic behavior of the Stochastic ML (SML) estimator at high Signal to Noise Ratio (SNR) and finite number of samples [2] in the array processing framework: we proved the non-Gaussiannity of the SML estimator and we obtained the analytical expression of the variance for the single source case. In this paper, we generalize these results to multiple sources, and we obtain variance expressions which demonstrate the non-efficiency of SML estimates
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
AbstractIt is shown, under mild regularity conditions on the random information matrix, that the max...
Traditional signal processing architectures are usually de-signed to perform well in large sample si...
International audienceIn estimation theory, the asymptotic (in the number of samples) efficiency of ...
International audienceIn estimation theory, the asymptotic efficiency of the Maximum Likelihood (ML)...
International audienceIn the field of asymptotic performance characterization of the conditional max...
IEEE In the field of asymptotic performance characterization of Conditional Maximum Likelihood (CML)...
International audienceThis correspondence deals with the problem of estimating signal parameters usi...
Stochastic Maximum Likelihood (SML) is a popular direction of arrival (DOA) estimation technique in ...
It is well known that the maximum-likelihood estimator (MLE) under a misspecified model converges to...
International audienceIn this paper, the performance of a maximum likelihood estimator (MLE) for a s...
Detecting the number of sources is a well-known and a well-investigated problem. In this problem, th...
This paper addresses subspace-based estimation and its pur-pose is to complement previously availabl...
After decades of research in Direction of Arrival (DoA) estimation, today Maximum Likelihood (ML) al...
For estimating the integrated volatility and covariance by using high frequency data, Kunitomo and S...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
AbstractIt is shown, under mild regularity conditions on the random information matrix, that the max...
Traditional signal processing architectures are usually de-signed to perform well in large sample si...
International audienceIn estimation theory, the asymptotic (in the number of samples) efficiency of ...
International audienceIn estimation theory, the asymptotic efficiency of the Maximum Likelihood (ML)...
International audienceIn the field of asymptotic performance characterization of the conditional max...
IEEE In the field of asymptotic performance characterization of Conditional Maximum Likelihood (CML)...
International audienceThis correspondence deals with the problem of estimating signal parameters usi...
Stochastic Maximum Likelihood (SML) is a popular direction of arrival (DOA) estimation technique in ...
It is well known that the maximum-likelihood estimator (MLE) under a misspecified model converges to...
International audienceIn this paper, the performance of a maximum likelihood estimator (MLE) for a s...
Detecting the number of sources is a well-known and a well-investigated problem. In this problem, th...
This paper addresses subspace-based estimation and its pur-pose is to complement previously availabl...
After decades of research in Direction of Arrival (DoA) estimation, today Maximum Likelihood (ML) al...
For estimating the integrated volatility and covariance by using high frequency data, Kunitomo and S...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
AbstractIt is shown, under mild regularity conditions on the random information matrix, that the max...
Traditional signal processing architectures are usually de-signed to perform well in large sample si...