DocumentCode
699536
Title
Non asymptotic efficiency of a Maximum Likelihood estimator at finite number of samples
Author
Renaux, Alexandre ; Forster, Philippe ; Boyer, Eric
Author_Institution
SATIE, Ecole Normale Super. de Cachan, Cachan, France
fYear
2004
fDate
6-10 Sept. 2004
Firstpage
2247
Lastpage
2250
Abstract
In 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.
Keywords
array signal processing; maximum likelihood estimation; stochastic processes; SML estimates; SML estimator; SNR; estimation theory; maximum likelihood estimator; nonGaussiannity; nonasymptotic efficiency; signal to noise ratio; stochastic ML estimator; Abstracts; Maximum likelihood estimation;
fLanguage
English
Publisher
ieee
Conference_Titel
Signal Processing Conference, 2004 12th European
Conference_Location
Vienna
Print_ISBN
978-320-0001-65-7
Type
conf
Filename
7080066
Link To Document