Difference between revisions of "Dispersion ellipsoid"
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− | + | An ellipsoid in the realization space of a random vector describing the concentration of its probability distribution around a certain prescribed vector in terms of the second-order moments. Let $ X $ | |
+ | be a random vector assuming values $ x = ( x _ {1}, \dots, x _ {n} ) ^ {T} $ | ||
+ | in the $ n $-dimensional Euclidean space $ \mathbf R ^ {n} $ | ||
+ | and having non-singular covariance matrix $ B $. | ||
+ | Then, for any fixed vector $ a $ | ||
+ | in the realization space $ \mathbf R ^ {n} $, | ||
+ | one can define an ellipsoid | ||
− | In the problem of the statistical estimation of an unknown | + | $$ |
+ | ( x - a) ^ {T} B ^ {- 1} ( x - a) = n + 2,\ \ | ||
+ | x \in \mathbf R ^ {n} , | ||
+ | $$ | ||
+ | |||
+ | called a dispersion ellipsoid of the probability distribution of $ X $ | ||
+ | with respect to $ a $, | ||
+ | or a dispersion ellipsoid of the random vector $ X $. | ||
+ | In particular, if $ a = {\mathsf E} X $, | ||
+ | then the dispersion ellipsoid is a geometric characteristic of the concentration of the probability distribution of $ X $ | ||
+ | around its mathematical expectation $ {\mathsf E} X $. | ||
+ | |||
+ | In the problem of the statistical estimation of an unknown $ n $-dimensional parameter $ \theta $, | ||
+ | the concept of a dispersion ellipsoid can be used to define a partial order on the set $ \tau = \{ T \} $ | ||
+ | of all unbiased estimators $ T $ | ||
+ | of $ \theta $ | ||
+ | having non-singular covariance matrices, in the following way: Given two estimators $ T _ {1} , T _ {2} \in \tau $, | ||
+ | the preferred one is $ T _ {1} $ | ||
+ | if the dispersion ellipsoid of $ T _ {1} $ | ||
+ | lies wholly inside that of $ T _ {2} $. | ||
+ | These unbiased efficient estimators of an unknown vector parameter are optimal in the sense that the dispersion ellipsoid of such an unbiased efficient estimator lies inside that of any other unbiased estimator. See [[Rao–Cramér inequality|Rao–Cramér inequality]]; [[Efficient estimator|Efficient estimator]]; [[Information, amount of|Information, amount of]]. | ||
====References==== | ====References==== | ||
<table><TR><TD valign="top">[1]</TD> <TD valign="top"> H. Cramér, M.R. Leadbetter, "Stationary and related stochastic processes" , Wiley (1967)</TD></TR><TR><TD valign="top">[2]</TD> <TD valign="top"> T.W. Anderson, "An introduction to multivariate statistical analysis" , Wiley (1958)</TD></TR><TR><TD valign="top">[3]</TD> <TD valign="top"> I.S. Ibragimov, "Statistical estimation: asymptotic theory" , Springer (1981) (Translated from Russian)</TD></TR></table> | <table><TR><TD valign="top">[1]</TD> <TD valign="top"> H. Cramér, M.R. Leadbetter, "Stationary and related stochastic processes" , Wiley (1967)</TD></TR><TR><TD valign="top">[2]</TD> <TD valign="top"> T.W. Anderson, "An introduction to multivariate statistical analysis" , Wiley (1958)</TD></TR><TR><TD valign="top">[3]</TD> <TD valign="top"> I.S. Ibragimov, "Statistical estimation: asymptotic theory" , Springer (1981) (Translated from Russian)</TD></TR></table> |
Latest revision as of 16:43, 20 January 2022
An ellipsoid in the realization space of a random vector describing the concentration of its probability distribution around a certain prescribed vector in terms of the second-order moments. Let $ X $
be a random vector assuming values $ x = ( x _ {1}, \dots, x _ {n} ) ^ {T} $
in the $ n $-dimensional Euclidean space $ \mathbf R ^ {n} $
and having non-singular covariance matrix $ B $.
Then, for any fixed vector $ a $
in the realization space $ \mathbf R ^ {n} $,
one can define an ellipsoid
$$ ( x - a) ^ {T} B ^ {- 1} ( x - a) = n + 2,\ \ x \in \mathbf R ^ {n} , $$
called a dispersion ellipsoid of the probability distribution of $ X $ with respect to $ a $, or a dispersion ellipsoid of the random vector $ X $. In particular, if $ a = {\mathsf E} X $, then the dispersion ellipsoid is a geometric characteristic of the concentration of the probability distribution of $ X $ around its mathematical expectation $ {\mathsf E} X $.
In the problem of the statistical estimation of an unknown $ n $-dimensional parameter $ \theta $, the concept of a dispersion ellipsoid can be used to define a partial order on the set $ \tau = \{ T \} $ of all unbiased estimators $ T $ of $ \theta $ having non-singular covariance matrices, in the following way: Given two estimators $ T _ {1} , T _ {2} \in \tau $, the preferred one is $ T _ {1} $ if the dispersion ellipsoid of $ T _ {1} $ lies wholly inside that of $ T _ {2} $. These unbiased efficient estimators of an unknown vector parameter are optimal in the sense that the dispersion ellipsoid of such an unbiased efficient estimator lies inside that of any other unbiased estimator. See Rao–Cramér inequality; Efficient estimator; Information, amount of.
References
[1] | H. Cramér, M.R. Leadbetter, "Stationary and related stochastic processes" , Wiley (1967) |
[2] | T.W. Anderson, "An introduction to multivariate statistical analysis" , Wiley (1958) |
[3] | I.S. Ibragimov, "Statistical estimation: asymptotic theory" , Springer (1981) (Translated from Russian) |
Dispersion ellipsoid. Encyclopedia of Mathematics. URL: http://encyclopediaofmath.org/index.php?title=Dispersion_ellipsoid&oldid=13969