Revision as of 16:57, 18 November 2014 editLegendre17 (talk | contribs)55 editsm →Complete proof: added missing space← Previous edit | Revision as of 19:26, 17 February 2015 edit undo91.195.72.14 (talk) →General case: corrected formulaNext edit → | ||
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: <math>\operatorname{Cov}(X_i Y_i, X_j Y_j) = \langle X_i Y_i X_j Y_j \rangle - \langle X_i Y_i \rangle \langle X_j Y_j \rangle</math> | : <math>\operatorname{Cov}(X_i Y_i, X_j Y_j) = \langle X_i Y_i X_j Y_j \rangle - \langle X_i Y_i \rangle \langle X_j Y_j \rangle</math> | ||
Using ] to develop | Using ] to develop | ||
: <math>\langle X_i Y_i X_j Y_j \rangle = \langle X_i X_j \rangle \langle Y_i Y_j \rangle + \langle X_i Y_i \rangle \langle |
: <math>\langle X_i Y_i X_j Y_j \rangle = \langle X_i X_j \rangle \langle Y_i Y_j \rangle + \langle X_i Y_i \rangle \langle X_j Y_j \rangle + \langle X_i Y_j \rangle \langle X_j Y_i \rangle</math> | ||
and also using the independence of <math>X</math> and <math>Y</math>, we have | and also using the independence of <math>X</math> and <math>Y</math>, we have | ||
: <math>\operatorname{Cov}(X_i Y_i, X_j Y_j) = \langle X_i X_j \rangle \langle Y_i Y_j \rangle = M_{ij} N_{ij}</math> | : <math>\operatorname{Cov}(X_i Y_i, X_j Y_j) = \langle X_i X_j \rangle \langle Y_i Y_j \rangle = M_{ij} N_{ij}</math> |
Revision as of 19:26, 17 February 2015
In mathematics, particularly in linear algebra, the Schur product theorem states that the Hadamard product of two positive definite matrices is also a positive definite matrix. The result is named after Issai Schur (Schur 1911, p. 14, Theorem VII) (note that Schur signed as J. Schur in Journal für die reine und angewandte Mathematik.)
Proof
Proof using the trace formula
It is easy to show that for matrices and , the Hadamard product considered as a bilinear form acts on vectors as
where is the matrix trace and is the diagonal matrix having as diagonal entries the elements of .
Since and are positive definite, we can consider their square-roots and and write
Then, for , this is written as for and thus is positive. This shows that is a positive definite matrix.
Proof using Gaussian integration
Case of M = N
Let be an -dimensional centered Gaussian random variable with covariance . Then the covariance matrix of and is
Using Wick's theorem to develop we have
Since a covariance matrix is positive definite, this proves that the matrix with elements is a positive definite matrix.
General case
Let and be -dimensional centered Gaussian random variables with covariances , and independt from each other so that we have
- for any
Then the covariance matrix of and is
Using Wick's theorem to develop
and also using the independence of and , we have
Since a covariance matrix is positive definite, this proves that the matrix with elements is a positive definite matrix.
Proof using eigendecomposition
Proof of positivity
Let and . Then
Each is positive (but, except in the 1-dimensional case, not positive definite, since they are rank 1 matrices) and , thus the sum giving is also positive.
Complete proof
To show that the result is positive definite requires further proof. We shall show that for any vector , we have . Continuing as above, each , so it remains to show that there exist and for which the inequality is strict. For this we observe that
Since is positive definite, there is a for which is not 0 for all , and then, since is positive definite, there is an for which is not 0 for all . Then for this and we have . This completes the proof.
References
- Attention: This template ({{cite doi}}) is deprecated. To cite the publication identified by doi:10.1515/crll.1911.140.1, please use {{cite journal}} (if it was published in a bona fide academic journal, otherwise {{cite report}} with
|doi=10.1515/crll.1911.140.1
instead. - Attention: This template ({{cite doi}}) is deprecated. To cite the publication identified by doi:10.1007/b105056, please use {{cite journal}} (if it was published in a bona fide academic journal, otherwise {{cite report}} with
|doi=10.1007/b105056
instead., page 9, Ch. 0.6 Publication under J. Schur - Attention: This template ({{cite doi}}) is deprecated. To cite the publication identified by doi:10.1112/blms/15.2.97, please use {{cite journal}} (if it was published in a bona fide academic journal, otherwise {{cite report}} with
|doi=10.1112/blms/15.2.97
instead.
External links
- Bemerkungen zur Theorie der beschränkten Bilinearformen mit unendlich vielen Veränderlichen at EUDML