In mathematics, specifically linear algebra, the Woodbury matrix identity – named after Max A. Woodbury[1][2] – says that the inverse of a rank-k correction of some matrix can be computed by doing a rank-k correction to the inverse of the original matrix. Alternative names for this formula are the matrix inversion lemma, Sherman–Morrison–Woodbury formula or just Woodbury formula. However, the identity appeared in several papers before the Woodbury report.[3][4]
The Woodbury matrix identity is[5]
where A, U, C and V are conformable matrices: A is n×n, C is k×k, U is n×k, and V is k×n. This can be derived using blockwise matrix inversion.
While the identity is primarily used on matrices, it holds in a general ring or in an Ab-category.
The Woodbury matrix identity allows cheap computation of inverses and solutions to linear equations. However, little is known about the numerical stability of the formula. There are no published results concerning its error bounds. Anecdotal evidence[6] suggests that it may diverge even for seemingly benign examples (when both the original and modified matrices are well-conditioned).
To prove this result, we will start by proving a simpler one. Replacing A and C with the identity matrix I, we obtain another identity which is a bit simpler:
To recover the original equation from this reduced identity, replace by and by .
This identity itself can be viewed as the combination of two simpler identities. We obtain the first identity from
thus,
and similarly
The second identity is the so-called push-through identity[7]
that we obtain from
after multiplying by on the right and by on the left.
Putting all together,
where the first and second equality come from the first and second identity, respectively.
Special cases
When are vectors, the identity reduces to the Sherman–Morrison formula.
In the scalar case, the reduced version is simply
Inverse of a sum
If n = k and U = V = In is the identity matrix, then
Continuing with the merging of the terms of the far right-hand side of the above equation results in Hua's identity
Another useful form of the same identity is
which, unlike those above, is valid even if is singular, and has a recursive structure that yields
if the spectral radius of is less than one. That is, if the above sum converges then it is equal to .
This form can be used in perturbative expansions where B is a perturbation of A.
Variations
Binomial inverse theorem
If A, B, U, V are matrices of sizes n×n, k×k, n×k, k×n, respectively, then
provided A and B + BVA−1UB are nonsingular. Nonsingularity of the latter requires that B−1 exist since it equals B(I + VA−1UB) and the rank of the latter cannot exceed the rank of B.[7]
Since B is invertible, the two B terms flanking the parenthetical quantity inverse in the right-hand side can be replaced with (B−1)−1, which results in the original Woodbury identity.
A variation for when B is singular and possibly even non-square:[7]
Formulas also exist for certain cases in which A is singular.[8]
Pseudoinverse with positive semidefinite matrices
In general Woodbury's identity is not valid if one or more inverses are replaced by (Moore–Penrose) pseudoinverses. However, if and are positive semidefinite, and (implying that is itself positive semidefinite), then the following formula provides a generalization:[9][10]
where can be written as because any positive semidefinite matrix is equal to for some .
Direct proof
The formula can be proven by checking that times its alleged inverse on the right side of the Woodbury identity gives the identity matrix:
Alternative proofs
More information Algebraic proof ...
Algebraic proof |
First consider these useful identities,
Now,
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More information which is equivalent to ... Close
More information Derivation from LDU decomposition ...
Derivation from LDU decomposition |
We start by the matrix
By eliminating the entry under the A (given that A is invertible) we get
Likewise, eliminating the entry above C gives
Now combining the above two, we get
Moving to the right side gives
which is the LDU decomposition of the block matrix into an upper triangular, diagonal, and lower triangular matrices.
Now inverting both sides gives
We could equally well have done it the other way (provided that C is invertible) i.e.
Now again inverting both sides,
Now comparing elements (1, 1) of the RHS of (1) and (2) above gives the Woodbury formula
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This identity is useful in certain numerical computations where A−1 has already been computed and it is desired to compute (A + UCV)−1. With the inverse of A available, it is only necessary to find the inverse of C−1 + VA−1U in order to obtain the result using the right-hand side of the identity. If C has a much smaller dimension than A, this is more efficient than inverting A + UCV directly. A common case is finding the inverse of a low-rank update A + UCV of A (where U only has a few columns and V only a few rows), or finding an approximation of the inverse of the matrix A + B where the matrix B can be approximated by a low-rank matrix UCV, for example using the singular value decomposition.
This is applied, e.g., in the Kalman filter and recursive least squares methods, to replace the parametric solution, requiring inversion of a state vector sized matrix, with a condition equations based solution. In case of the Kalman filter this matrix has the dimensions of the vector of observations, i.e., as small as 1 in case only one new observation is processed at a time. This significantly speeds up the often real time calculations of the filter.
In the case when C is the identity matrix I, the matrix is known in numerical linear algebra and numerical partial differential equations as the capacitance matrix.[4]
Max A. Woodbury, Inverting modified matrices, Memorandum Rept. 42, Statistical Research Group, Princeton University, Princeton, NJ, 1950, 4pp MR38136
Max A. Woodbury, The Stability of Out-Input Matrices. Chicago, Ill., 1949. 5 pp. MR32564
Kurt S. Riedel, "A Sherman–Morrison–Woodbury Identity for Rank Augmenting Matrices with Application to Centering", SIAM Journal on Matrix Analysis and Applications, 13 (1992)659-662, doi:10.1137/0613040 preprint MR1152773
Bernstein, Dennis S. (2018). Scalar, Vector, and Matrix Mathematics: Theory, Facts, and Formulas (Revised and expanded ed.). Princeton: Princeton University Press. p. 638. ISBN 9780691151205.
Schott, James R. (2017). Matrix analysis for statistics (Third ed.). Hoboken, New Jersey: John Wiley & Sons, Inc. p. 219. ISBN 9781119092483.