Sherman–Morrison formula
In mathematics, in particular linear algebra, the Sherman–Morrison formula,[1][2][3] named after Jack Sherman and Winifred J. Morrison, computes the inverse of the sum of an invertible matrix 
and the outer product, 
, of vectors 
 and 
. The Sherman–Morrison formula is a special case of the Woodbury formula.  
Though named after Sherman and Morrison, it appeared already in earlier publications.[4]
Statement
Suppose 
 is an invertible square matrix and 
, 
 are column vectors. Suppose furthermore that 
. Then the Sherman–Morrison formula states that
Here, 
 is the outer product of two vectors 
 and 
.  The general form shown here is the one published by Bartlett.[5]
Application
If the inverse of 
 is already known, the formula provides a
numerically cheap way
to compute the inverse of 
 corrected by the matrix 
(depending on the point of view, the correction may be seen as a 
perturbation or as a rank-1 update).
The computation is relatively cheap because the inverse of 
does not have to be computed from scratch (which in general is expensive),
but can be computed by correcting (or perturbing) 
.
Using unit columns (columns from the identity matrix) for 
 or 
, individual columns or rows of 
 may be manipulated
and a correspondingly updated inverse computed relatively cheaply in this way.[6] In the general case, where 
 is a 
-by-
 matrix
and 
 and 
 are arbitrary vectors of dimension 
, the whole matrix is updated[5] and the computation takes 
 scalar multiplications.[7] If 
 is a unit column, the computation takes only 
 scalar multiplications. The same goes if 
 is a unit column.  If both 
 and 
 are unit columns, the computation takes only 
 scalar multiplications.
Verification
We verify the properties of the inverse.
A matrix 
 (in this case the right-hand side of the Sherman–Morrison formula)
is the inverse of a matrix 
 (in this case 
)
if and only if 
.  
We first verify that the right hand side (
) satisfies 
.
Note that 
 is a scalar, so 
 can be factored out, leading to:
In the same way, it is verified that
Following is an alternate verification of the Sherman–Morrison formula using the easily verifiable identity
Let 
 and 
, then
Substituting 
 gives
See also
- The matrix determinant lemma performs a rank-1 update to a determinant.
 - Woodbury matrix identity
 - Quasi-Newton method
 - Binomial inverse theorem
 - Bunch–Nielsen–Sorensen formula
 
References
- ↑ Sherman, Jack; Morrison, Winifred J. (1949). "Adjustment of an Inverse Matrix Corresponding to Changes in the Elements of a Given Column or a Given Row of the Original Matrix (abstract)". Annals of Mathematical Statistics 20: 621. doi:10.1214/aoms/1177729959.
 - ↑ Sherman, Jack; Morrison, Winifred J. (1950). "Adjustment of an Inverse Matrix Corresponding to a Change in One Element of a Given Matrix". Annals of Mathematical Statistics 21 (1): 124–127. doi:10.1214/aoms/1177729893. MR 35118. Zbl 0037.00901.
 - ↑ Press, William H.; Teukolsky, Saul A.; Vetterling, William T.; Flannery, Brian P. (2007), "Section 2.7.1 Sherman–Morrison Formula", Numerical Recipes: The Art of Scientific Computing (3rd ed.), New York: Cambridge University Press, ISBN 978-0-521-88068-8
 - ↑ Hager, William W. (1989). "Updating the inverse of a matrix". SIAM Review 31 (2): 221–239. doi:10.1137/1031049. JSTOR 2030425. MR 997457.
 - 1 2 Bartlett, Maurice S. (1951). "An Inverse Matrix Adjustment Arising in Discriminant Analysis". Annals of Mathematical Statistics 22 (1): 107–111. doi:10.1214/aoms/1177729698. MR 40068. Zbl 0042.38203.
 - ↑ Langville, Amy N.; and Meyer, Carl D.; "Google's PageRank and Beyond: The Science of Search Engine Rankings", Princeton University Press, 2006, p. 156
 - ↑ Update of the inverse matrix by the Sherman–Morrison formula
 









