Asymptotically-efficient estimator
A concept which extends the idea of an efficient estimator to the case of large samples (cf. Efficient estimator). An asymptotically-efficient estimator has not been uniquely defined. Thus, in its classical variant it concerns the asymptotic efficiency of an estimator in a suitably restricted class of estimators. In fact, let T_n be a consistent estimator of a one-dimensional parameter \theta constructed from a random sample of size n. Then T_n\in\mathfrak K if the variance \sigma^2(\sqrt nT_n) exists, and if it is bounded from below, as n\to\infty, by the inverse of the Fisher amount of information corresponding to one observation. An estimator T_n^*\in\mathfrak K which attains the lower bound just mentioned is asymptotically efficient. Under certain conditions this property is satisfied by the maximum-likelihood estimator for \theta, which makes the classical definition meaningful. If the asymptotically-efficient estimator T_n^* exists, the magnitude
\lim_{n\to\infty}\frac{\sigma^2(\sqrt nT_n^*)}{\sigma^2(\sqrt nT_n)}
is called the asymptotic relative efficiency of T_n. Certain variants of the concept of an asymptotically-efficient estimator are due to R.A. Fisher, C.R. Rao and others.
References
[1] | C.R. Rao, "Linear statistical inference and its applications" , Wiley (1965) |
Comments
More modern definitions of this concept are due to J. Hajek, L. LeCam and others.
References
[a1] | J.A. Ibragimov, "Statistical estimation: asymptotic theory" , Springer (1981) (Translated from Russian) |
Asymptotically-efficient estimator. Encyclopedia of Mathematics. URL: http://encyclopediaofmath.org/index.php?title=Asymptotically-efficient_estimator&oldid=14672