Difference between revisions of "Equivariant estimator"
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A statistical point estimator that preserves the structure of the problem of statistical estimation relative to a given group of one-to-one transformations of a sampling space. | A statistical point estimator that preserves the structure of the problem of statistical estimation relative to a given group of one-to-one transformations of a sampling space. | ||
− | Suppose that in the realization of a random vector | + | Suppose that in the realization of a random vector $ X = ( X _ {1} \dots X _ {n} ) $, |
+ | the components $ X _ {1} \dots X _ {n} $ | ||
+ | of which are independent, identically distributed random variables taking values in a sampling space $ ( \mathfrak X , {\mathcal B} , {\mathsf P} _ \theta ) $, | ||
+ | $ \theta \in \Theta \subseteq \mathbf R ^ {k} $, | ||
+ | it is necessary to estimate the unknown true value of the parameter $ \theta $. | ||
+ | Next, suppose that on $ \mathfrak X $ | ||
+ | acts a group of one-to-one transformations $ G = \{ g \} $ | ||
+ | such that | ||
− | + | $$ | |
+ | g \mathfrak X = \mathfrak X \ \textrm{ and } \ g {\mathcal B} _ {\mathfrak X } = {\mathcal B} _ {\mathfrak X } \ \ | ||
+ | \textrm{ for all } g \in G . | ||
+ | $$ | ||
− | In turn, the group | + | In turn, the group $ G $ |
+ | generates on the parameter space $ \Theta $ | ||
+ | a so-called induced group of transformations $ \overline{G}\; = \{ \overline{g}\; \} $, | ||
+ | the elements of which are defined by the formula | ||
− | + | $$ | |
+ | {\mathsf P} _ \theta ( B) = {\mathsf P} _ {\overline{g}\; \theta } | ||
+ | ( g B ) \ \textrm{ for all } g \in G ,\ | ||
+ | B \in {\mathcal B} _ {\mathfrak X } . | ||
+ | $$ | ||
− | Let | + | Let $ \overline{G}\; $ |
+ | be a group of one-to-one transformations on $ \Theta $ | ||
+ | such that | ||
− | + | $$ | |
+ | \overline{g}\; \Theta = \Theta \ \textrm{ for all } \ | ||
+ | \overline{g}\; \in \overline{G}\; . | ||
+ | $$ | ||
− | Under these conditions it is said that a point estimator | + | Under these conditions it is said that a point estimator $ \widehat \theta = \widehat \theta ( X) $ |
+ | of $ \theta $ | ||
+ | is an equivariant estimator, or that it preserves the structure of the problem of statistical estimation of the parameter $ \theta $ | ||
+ | with respect to the group $ G $, | ||
+ | if | ||
− | + | $$ | |
+ | \widehat \theta ( g X ) = \overline{g}\; \widehat \theta ( X) \ \ | ||
+ | \textrm{ for all } g \in G . | ||
+ | $$ | ||
− | The most interesting results in the theory of equivariant estimators have been obtained under the assumption that the loss function is invariant with respect to | + | The most interesting results in the theory of equivariant estimators have been obtained under the assumption that the loss function is invariant with respect to $ G $. |
====References==== | ====References==== | ||
<table><TR><TD valign="top">[1]</TD> <TD valign="top"> S. Zachs, "The theory of statistical inference" , Wiley (1971)</TD></TR><TR><TD valign="top">[2]</TD> <TD valign="top"> E.L. Lehmann, "Testing statistical hypotheses" , Wiley (1986)</TD></TR></table> | <table><TR><TD valign="top">[1]</TD> <TD valign="top"> S. Zachs, "The theory of statistical inference" , Wiley (1971)</TD></TR><TR><TD valign="top">[2]</TD> <TD valign="top"> E.L. Lehmann, "Testing statistical hypotheses" , Wiley (1986)</TD></TR></table> |
Latest revision as of 19:37, 5 June 2020
A statistical point estimator that preserves the structure of the problem of statistical estimation relative to a given group of one-to-one transformations of a sampling space.
Suppose that in the realization of a random vector $ X = ( X _ {1} \dots X _ {n} ) $, the components $ X _ {1} \dots X _ {n} $ of which are independent, identically distributed random variables taking values in a sampling space $ ( \mathfrak X , {\mathcal B} , {\mathsf P} _ \theta ) $, $ \theta \in \Theta \subseteq \mathbf R ^ {k} $, it is necessary to estimate the unknown true value of the parameter $ \theta $. Next, suppose that on $ \mathfrak X $ acts a group of one-to-one transformations $ G = \{ g \} $ such that
$$ g \mathfrak X = \mathfrak X \ \textrm{ and } \ g {\mathcal B} _ {\mathfrak X } = {\mathcal B} _ {\mathfrak X } \ \ \textrm{ for all } g \in G . $$
In turn, the group $ G $ generates on the parameter space $ \Theta $ a so-called induced group of transformations $ \overline{G}\; = \{ \overline{g}\; \} $, the elements of which are defined by the formula
$$ {\mathsf P} _ \theta ( B) = {\mathsf P} _ {\overline{g}\; \theta } ( g B ) \ \textrm{ for all } g \in G ,\ B \in {\mathcal B} _ {\mathfrak X } . $$
Let $ \overline{G}\; $ be a group of one-to-one transformations on $ \Theta $ such that
$$ \overline{g}\; \Theta = \Theta \ \textrm{ for all } \ \overline{g}\; \in \overline{G}\; . $$
Under these conditions it is said that a point estimator $ \widehat \theta = \widehat \theta ( X) $ of $ \theta $ is an equivariant estimator, or that it preserves the structure of the problem of statistical estimation of the parameter $ \theta $ with respect to the group $ G $, if
$$ \widehat \theta ( g X ) = \overline{g}\; \widehat \theta ( X) \ \ \textrm{ for all } g \in G . $$
The most interesting results in the theory of equivariant estimators have been obtained under the assumption that the loss function is invariant with respect to $ G $.
References
[1] | S. Zachs, "The theory of statistical inference" , Wiley (1971) |
[2] | E.L. Lehmann, "Testing statistical hypotheses" , Wiley (1986) |
Equivariant estimator. Encyclopedia of Mathematics. URL: http://encyclopediaofmath.org/index.php?title=Equivariant_estimator&oldid=15622