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[1] (Schur 1911, p. 14, Theorem VII) (note that Schur signed as J. Schur in Journal für die reine und angewandte Mathematik.[2][3])
The converse of the theorem holds in the following sense: if
is a symmetric matrix and the Hadamard product
is positive definite for all positive definite matrices
, then
itself is positive definite.
Proof
For any 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
.
Suppose
and
are positive definite, and so Hermitian. We can consider their square-roots
and
, which are also Hermitian, and write

Then, for
, this is written as
for
and thus is strictly positive for
, which occurs if and only if
. 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 independent 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 positive semidefiniteness
Let
and
. Then

Each
is positive semidefinite (but, except in the 1-dimensional case, not positive definite, since they are rank 1 matrices). Also,
thus the sum
is also positive semidefinite.
Proof of definiteness
To show that the result is positive definite requires even 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 corresponding term above is nonzero. For this we observe that

Since
is positive definite, there is a
for which
(since otherwise
for all
), and likewise since
is positive definite there exists an
for which
However, this last sum is just
. Thus its square is positive. This completes the proof.
References
- ^ Schur, J. (1911). "Bemerkungen zur Theorie der beschränkten Bilinearformen mit unendlich vielen Veränderlichen". Journal für die reine und angewandte Mathematik. 1911 (140): 1–28. doi:10.1515/crll.1911.140.1. S2CID 120411177.
- ^ Zhang, Fuzhen, ed. (2005). The Schur Complement and Its Applications. Numerical Methods and Algorithms. Vol. 4. doi:10.1007/b105056. ISBN 0-387-24271-6., page 9, Ch. 0.6 Publication under J. Schur
- ^ Ledermann, W. (1983). "Issai Schur and His School in Berlin". Bulletin of the London Mathematical Society. 15 (2): 97–106. doi:10.1112/blms/15.2.97.
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