info:eu-repo/semantics/article
Asymptotic properties of statistical estimators using multivariate Chi-squared measurements
Fecha
2020-08Registro en:
Marelli, Damian Edgardo; Fu, Minyue; Asymptotic properties of statistical estimators using multivariate Chi-squared measurements; Academic Press Inc Elsevier Science; Digital Signal Processing; 103; 102754; 8-2020; 1-16
1051-2004
CONICET Digital
CONICET
Autor
Marelli, Damian Edgardo
Fu, Minyue
Resumen
This paper studies the problem of estimating a parameter vector from measurements having a multivariate chi-squared distribution. Maximum likelihood estimation in this setting is unfeasible because the multivariate chi-squared distribution has no closed form expression. The typical approach to go around this consists in considering a sub-optimal solution by replacing the chi-squared distribution with a normal one. We investigate the theoretical properties of this approximation as the number of measurements approach infinity. More precisely, we show that this approximation is strongly consistency, asymptotically normal and asymptotically efficient. We consider a source localization problem as a case study.