Open main menu
Home
Random
Recent changes
Special pages
Community portal
Preferences
About Wikipedia
Disclaimers
Incubator escapee wiki
Search
User menu
Talk
Dark mode
Contributions
Create account
Log in
Editing
Divide-and-conquer eigenvalue algorithm
Warning:
You are not logged in. Your IP address will be publicly visible if you make any edits. If you
log in
or
create an account
, your edits will be attributed to your username, along with other benefits.
Anti-spam check. Do
not
fill this in!
{{Short description|Algorithm on Hermitian matrices}} {{Multiple issues| {{No footnotes|date=May 2024}} {{More citations needed|date=May 2024}} }} '''Divide-and-conquer eigenvalue algorithms''' are a class of [[eigenvalue algorithm]]s for [[Hermitian matrix|Hermitian]] or [[real number|real]] [[Symmetric matrix|symmetric matrices]] that have recently (circa 1990s) become competitive in terms of [[Numerical stability|stability]] and [[Computational complexity theory|efficiency]] with more traditional algorithms such as the [[QR algorithm]]. The basic concept behind these algorithms is the [[Divide and conquer algorithm|divide-and-conquer]] approach from [[computer science]]. An [[eigenvalue]] problem is divided into two problems of roughly half the size, each of these are solved [[Recursion|recursively]], and the eigenvalues of the original problem are computed from the results of these smaller problems. This article covers the basic idea of the algorithm as originally proposed by Cuppen in 1981, which is not numerically stable without additional refinements. ==Background== As with most eigenvalue algorithms for Hermitian matrices, divide-and-conquer begins with a reduction to [[Tridiagonal matrix|tridiagonal]] form. For an <math>m \times m</math> matrix, the standard method for this, via [[Householder reflection]]s, takes <math>\frac{4}{3}m^{3}</math> floating point operations, or <math>\frac{8}{3}m^{3}</math> if [[eigenvector]]s are needed as well. There are other algorithms, such as the [[Arnoldi iteration]], which may do better for certain classes of matrices; we will not consider this further here. In certain cases, it is possible to ''deflate'' an eigenvalue problem into smaller problems. Consider a [[block diagonal matrix]] :<math>T = \begin{bmatrix} T_{1} & 0 \\ 0 & T_{2}\end{bmatrix}.</math> The eigenvalues and eigenvectors of <math>T</math> are simply those of <math>T_{1}</math> and <math>T_{2}</math>, and it will almost always be faster to solve these two smaller problems than to solve the original problem all at once. This technique can be used to improve the efficiency of many eigenvalue algorithms, but it has special significance to divide-and-conquer. For the rest of this article, we will assume the input to the divide-and-conquer algorithm is an <math>m \times m</math> real symmetric tridiagonal matrix <math>T</math>. The algorithm can be modified for Hermitian matrices. ==Divide== The ''divide'' part of the divide-and-conquer algorithm comes from the realization that a tridiagonal matrix is "almost" block diagonal. <!-- For original TeX, see image description page --> :[[Image:Almost block diagonal.png]] The size of submatrix <math>T_{1}</math> we will call <math>n \times n</math>, and then <math>T_{2}</math> is <math>(m - n) \times (m - n)</math>. <math>T</math> is almost block diagonal regardless of how <math>n</math> is chosen. For efficiency we typically choose <math>n \approx m/2</math>. We write <math>T</math> as a block diagonal matrix, plus a [[Rank (linear algebra)|rank-1]] correction: <!-- For original TeX, see image description page --> :[[Image:Block diagonal plus correction.png]] The only difference between <math>T_{1}</math> and <math>\hat{T}_{1}</math> is that the lower right entry <math>t_{nn}</math> in <math>\hat{T}_{1}</math> has been replaced with <math>t_{nn} - \beta</math> and similarly, in <math>\hat{T}_{2}</math> the top left entry <math>t_{n+1,n+1}</math> has been replaced with <math>t_{n+1,n+1} - \beta</math>. The remainder of the divide step is to solve for the eigenvalues (and if desired the eigenvectors) of <math>\hat{T}_{1}</math> and <math>\hat{T}_{2}</math>, that is to find the [[diagonalizable matrix|diagonalization]]s <math>\hat{T}_{1} = Q_{1} D_{1} Q_{1}^{T}</math> and <math>\hat{T}_{2} = Q_{2} D_{2} Q_{2}^{T}</math>. This can be accomplished with recursive calls to the divide-and-conquer algorithm, although practical implementations often switch to the QR algorithm for small enough submatrices. ==Conquer== The ''conquer'' part of the algorithm is the unintuitive part. Given the diagonalizations of the submatrices, calculated above, how do we find the diagonalization of the original matrix? First, define <math>z^{T} = (q_{1}^{T},q_{2}^{T})</math>, where <math>q_{1}^{T}</math> is the last row of <math>Q_{1}</math> and <math>q_{2}^{T}</math> is the first row of <math>Q_{2}</math>. It is now elementary to show that :<math>T = \begin{bmatrix} Q_{1} & \\ & Q_{2} \end{bmatrix} \left( \begin{bmatrix} D_{1} & \\ & D_{2} \end{bmatrix} + \beta z z^{T} \right) \begin{bmatrix} Q_{1}^{T} & \\ & Q_{2}^{T} \end{bmatrix}</math> The remaining task has been reduced to finding the eigenvalues of a diagonal matrix plus a rank-one correction. Before showing how to do this, let us simplify the notation. We are looking for the eigenvalues of the matrix <math>D + w w^{T}</math>, where <math>D</math> is diagonal with distinct entries and <math>w</math> is any vector with nonzero entries. In this case <math>w = \sqrt{|\beta|}\cdot z</math>. The case of a zero entry is simple, since if w<sub>i</sub> is zero, (<math>e_i</math>,d<sub>i</sub>) is an eigenpair (<math>e_i</math> is in the standard basis) of <math>D + w w^{T}</math> since <math>(D + w w^{T})e_i = De_i = d_i e_i</math>. If <math>\lambda</math> is an eigenvalue, we have: :<math>(D + w w^{T})q = \lambda q</math> where <math>q</math> is the corresponding eigenvector. Now :<math>(D - \lambda I)q + w(w^{T}q) = 0</math> :<math>q + (D - \lambda I)^{-1} w(w^{T}q) = 0</math> :<math>w^{T}q + w^{T}(D - \lambda I)^{-1} w(w^{T}q) = 0</math> Keep in mind that <math>w^{T}q</math> is a nonzero scalar. Neither <math>w</math> nor <math>q</math> are zero. If <math>w^{T}q</math> were to be zero, <math>q</math> would be an eigenvector of <math>D</math> by <math>(D + w w^{T})q = \lambda q</math>. If that were the case, <math>q</math> would contain only one nonzero position since <math>D</math> is distinct diagonal and thus the inner product <math>w^{T}q</math> can not be zero after all. Therefore, we have: :<math>1 + w^{T}(D - \lambda I)^{-1} w = 0</math> or written as a scalar equation, :<math>1 + \sum_{j=1}^{m} \frac{w_{j}^{2}}{d_{j} - \lambda} = 0.</math> This equation is known as the ''secular equation''. The problem has therefore been reduced to finding the roots of the [[rational function]] defined by the left-hand side of this equation. All general eigenvalue algorithms must be iterative,{{Citation needed|date=April 2024}} and the divide-and-conquer algorithm is no different. Solving the [[nonlinear]] secular equation requires an iterative technique, such as the [[Newton's method|Newton–Raphson method]]. However, each root can be found in [[Big O notation|O]](1) iterations, each of which requires <math>\Theta(m)</math> flops (for an <math>m</math>-degree rational function), making the cost of the iterative part of this algorithm <math>\Theta(m^{2})</math>. ==Analysis== W will use the [[Master theorem (analysis of algorithms)|master theorem for divide-and-conquer recurrences]] to analyze the running time. Remember that above we stated we choose <math>n \approx m/2</math>. We can write the [[recurrence relation]]: :<math>T(m) = 2 \times T\left(\frac{m}{2}\right) + \Theta(m^{2})</math> In the notation of the Master theorem, <math>a = b = 2</math> and thus <math>\log_{b} a = 1</math>. Clearly, <math>\Theta(m^{2}) = \Omega(m^{1})</math>, so we have :<math>T(m) = \Theta(m^{2})</math> Above, we pointed out that reducing a Hermitian matrix to tridiagonal form takes <math>\frac{4}{3}m^{3}</math> flops. This dwarfs the running time of the divide-and-conquer part, and at this point it is not clear what advantage the divide-and-conquer algorithm offers over the QR algorithm (which also takes <math>\Theta(m^{2})</math> flops for tridiagonal matrices). The advantage of divide-and-conquer comes when eigenvectors are needed as well. If this is the case, reduction to tridiagonal form takes <math>\frac{8}{3}m^{3}</math>, but the second part of the algorithm takes <math>\Theta(m^{3})</math> as well. For the QR algorithm with a reasonable target precision, this is <math>\approx 6 m^{3}</math>, whereas for divide-and-conquer it is <math>\approx \frac{4}{3}m^{3}</math>. The reason for this improvement is that in divide-and-conquer, the <math>\Theta(m^{3})</math> part of the algorithm (multiplying <math>Q</math> matrices) is separate from the iteration, whereas in QR, this must occur in every iterative step. Adding the <math>\frac{8}{3}m^{3}</math> flops for the reduction, the total improvement is from <math>\approx 9 m^{3}</math> to <math>\approx 4 m^{3}</math> flops. Practical use of the divide-and-conquer algorithm has shown that in most realistic eigenvalue problems, the algorithm actually does better than this. The reason is that very often the matrices <math>Q</math> and the vectors <math>z</math> tend to be ''numerically sparse'', meaning that they have many entries with values smaller than the [[floating point]] precision, allowing for ''numerical deflation'', i.e. breaking the problem into uncoupled subproblems. ==Variants and implementation== The algorithm presented here is the simplest version. In many practical implementations, more complicated rank-1 corrections are used to guarantee stability; some variants even use rank-2 corrections.{{Citation needed|date=September 2011}} There exist specialized root-finding techniques for rational functions that may do better than the Newton-Raphson method in terms of both performance and stability. These can be used to improve the iterative part of the divide-and-conquer algorithm. The divide-and-conquer algorithm is readily [[Parallel algorithm|parallelized]], and [[linear algebra]] computing packages such as [[LAPACK]] contain high-quality parallel implementations.{{Citation needed|date=September 2023}} ==References== *{{citation | last = Demmel | first = James W. | authorlink = James Demmel | mr = 1463942 | isbn = 0-89871-389-7 | location = Philadelphia, PA | publisher = [[Society for Industrial and Applied Mathematics]] | title = Applied Numerical Linear Algebra | year = 1997}}. * {{cite journal |first1=J.J.M. |last1=Cuppen |title=A Divide and Conquer Method for the Symmetric Tridiagonal Eigenproblem |journal=[[Numerische Mathematik]] |volume=36 |pages=177–195 |date=1981 |issue=2 |doi=10.1007/BF01396757 |s2cid=120504744 }} {{Numerical linear algebra}} [[Category:Numerical linear algebra]] [[Category:Divide-and-conquer algorithms]]
Edit summary
(Briefly describe your changes)
By publishing changes, you agree to the
Terms of Use
, and you irrevocably agree to release your contribution under the
CC BY-SA 4.0 License
and the
GFDL
. You agree that a hyperlink or URL is sufficient attribution under the Creative Commons license.
Cancel
Editing help
(opens in new window)
Pages transcluded onto the current version of this page
(
help
)
:
Template:Citation
(
edit
)
Template:Citation needed
(
edit
)
Template:Cite journal
(
edit
)
Template:Multiple issues
(
edit
)
Template:Numerical linear algebra
(
edit
)
Template:Short description
(
edit
)