Linear Algebra (scipy.linalg
)¶
When SciPy is built using the optimized ATLAS LAPACK and BLAS libraries, it has very fast linear algebra capabilities. If you dig deep enough, all of the raw lapack and blas libraries are available for your use for even more speed. In this section, some easier-to-use interfaces to these routines are described.
All of these linear algebra routines expect an object that can be converted into a 2-dimensional array. The output of these routines is also a two-dimensional array.
scipy.linalg vs numpy.linalg¶
scipy.linalg
contains all the functions in numpy.linalg
.
plus some other more advanced ones not contained in numpy.linalg
Another advantage of using scipy.linalg
over numpy.linalg
is that
it is always compiled with BLAS/LAPACK support, while for numpy this is
optional. Therefore, the scipy version might be faster depending on how
numpy was installed.
Therefore, unless you don’t want to add scipy
as a dependency to
your numpy
program, use scipy.linalg
instead of numpy.linalg
numpy.matrix vs 2D numpy.ndarray¶
The classes that represent matrices, and basic operations such as
matrix multiplications and transpose are a part of numpy
.
For convenience, we summarize the differences between numpy.matrix
and numpy.ndarray
here.
numpy.matrix
is matrix class that has a more convenient interface
than numpy.ndarray
for matrix operations. This class supports for
example MATLAB-like creation syntax via the semicolon, has matrix
multiplication as default for the *
operator, and contains I
and T
members that serve as shortcuts for inverse and transpose:
>>> import numpy as np
>>> A = np.mat('[1 2;3 4]')
>>> A
matrix([[1, 2],
[3, 4]])
>>> A.I
matrix([[-2. , 1. ],
[ 1.5, -0.5]])
>>> b = np.mat('[5 6]')
>>> b
matrix([[5, 6]])
>>> b.T
matrix([[5],
[6]])
>>> A*b.T
matrix([[17],
[39]])
Despite its convenience, the use of the numpy.matrix
class is
discouraged, since it adds nothing that cannot be accomplished
with 2D numpy.ndarray
objects, and may lead to a confusion of which class
is being used. For example, the above code can be rewritten as:
>>> import numpy as np
>>> from scipy import linalg
>>> A = np.array([[1,2],[3,4]])
>>> A
array([[1, 2],
[3, 4]])
>>> linalg.inv(A)
array([[-2. , 1. ],
[ 1.5, -0.5]])
>>> b = np.array([[5,6]]) #2D array
>>> b
array([[5, 6]])
>>> b.T
array([[5],
[6]])
>>> A*b #not matrix multiplication!
array([[ 5, 12],
[15, 24]])
>>> A.dot(b.T) #matrix multiplication
array([[17],
[39]])
>>> b = np.array([5,6]) #1D array
>>> b
array([5, 6])
>>> b.T #not matrix transpose!
array([5, 6])
>>> A.dot(b) #does not matter for multiplication
array([17, 39])
scipy.linalg
operations can be applied equally to
numpy.matrix
or to 2D numpy.ndarray
objects.
Basic routines¶
Finding Inverse¶
The inverse of a matrix \(\mathbf{A}\) is the matrix
\(\mathbf{B}\) such that \(\mathbf{AB}=\mathbf{I}\) where
\(\mathbf{I}\) is the identity matrix consisting of ones down the
main diagonal. Usually \(\mathbf{B}\) is denoted
\(\mathbf{B}=\mathbf{A}^{-1}\) . In SciPy, the matrix inverse of
the Numpy array, A, is obtained using linalg.inv
(A)
, or
using A.I
if A
is a Matrix. For example, let
then
The following example demonstrates this computation in SciPy
>>> import numpy as np
>>> from scipy import linalg
>>> A = np.array([[1,3,5],[2,5,1],[2,3,8]])
>>> A
array([[1, 3, 5],
[2, 5, 1],
[2, 3, 8]])
>>> linalg.inv(A)
array([[-1.48, 0.36, 0.88],
[ 0.56, 0.08, -0.36],
[ 0.16, -0.12, 0.04]])
>>> A.dot(linalg.inv(A)) #double check
array([[ 1.00000000e+00, -1.11022302e-16, -5.55111512e-17],
[ 3.05311332e-16, 1.00000000e+00, 1.87350135e-16],
[ 2.22044605e-16, -1.11022302e-16, 1.00000000e+00]])
Solving linear system¶
Solving linear systems of equations is straightforward using the scipy
command linalg.solve
. This command expects an input matrix and
a right-hand-side vector. The solution vector is then computed. An
option for entering a symmetric matrix is offered which can speed up
the processing when applicable. As an example, suppose it is desired
to solve the following simultaneous equations:
We could find the solution vector using a matrix inverse:
However, it is better to use the linalg.solve command which can be faster and more numerically stable. In this case it however gives the same answer as shown in the following example:
>>> import numpy as np
>>> from scipy import linalg
>>> A = np.array([[1, 2], [3, 4]])
>>> A
array([[1, 2],
[3, 4]])
>>> b = np.array([[5], [6]])
>>> b
array([[5],
[6]])
>>> linalg.inv(A).dot(b) # slow
array([[-4. ],
[ 4.5]])
>>> A.dot(linalg.inv(A).dot(b)) - b # check
array([[ 8.88178420e-16],
[ 2.66453526e-15]])
>>> np.linalg.solve(A, b) # fast
array([[-4. ],
[ 4.5]])
>>> A.dot(np.linalg.solve(A, b)) - b # check
array([[ 0.],
[ 0.]])
Finding Determinant¶
The determinant of a square matrix \(\mathbf{A}\) is often denoted \(\left|\mathbf{A}\right|\) and is a quantity often used in linear algebra. Suppose \(a_{ij}\) are the elements of the matrix \(\mathbf{A}\) and let \(M_{ij}=\left|\mathbf{A}_{ij}\right|\) be the determinant of the matrix left by removing the \(i^{\textrm{th}}\) row and \(j^{\textrm{th}}\) column from \(\mathbf{A}\) . Then for any row \(i,\)
This is a recursive way to define the determinant where the base case
is defined by accepting that the determinant of a \(1\times1\) matrix is the only matrix element. In SciPy the determinant can be
calculated with linalg.det
. For example, the determinant of
is
In SciPy this is computed as shown in this example:
>>> import numpy as np
>>> from scipy import linalg
>>> A = np.array([[1,2],[3,4]])
>>> A
array([[1, 2],
[3, 4]])
>>> linalg.det(A)
-2.0
Computing norms¶
Matrix and vector norms can also be computed with SciPy. A wide range
of norm definitions are available using different parameters to the
order argument of linalg.norm
. This function takes a rank-1
(vectors) or a rank-2 (matrices) array and an optional order argument
(default is 2). Based on these inputs a vector or matrix norm of the
requested order is computed.
For vector x , the order parameter can be any real number including
inf
or -inf
. The computed norm is
For matrix \(\mathbf{A}\) the only valid values for norm are \(\pm2,\pm1,\) \(\pm\) inf, and ‘fro’ (or ‘f’) Thus,
where \(\sigma_{i}\) are the singular values of \(\mathbf{A}\) .
Examples:
>>> import numpy as np
>>> from scipy import linalg
>>> A=np.array([[1,2],[3,4]])
>>> A
array([[1, 2],
[3, 4]])
>>> linalg.norm(A)
5.4772255750516612
>>> linalg.norm(A,'fro') # frobenius norm is the default
5.4772255750516612
>>> linalg.norm(A,1) # L1 norm (max column sum)
6
>>> linalg.norm(A,-1)
4
>>> linalg.norm(A,np.inf) # L inf norm (max row sum)
7
Solving linear least-squares problems and pseudo-inverses¶
Linear least-squares problems occur in many branches of applied mathematics. In this problem a set of linear scaling coefficients is sought that allow a model to fit data. In particular it is assumed that data \(y_{i}\) is related to data \(\mathbf{x}_{i}\) through a set of coefficients \(c_{j}\) and model functions \(f_{j}\left(\mathbf{x}_{i}\right)\) via the model
where \(\epsilon_{i}\) represents uncertainty in the data. The strategy of least squares is to pick the coefficients \(c_{j}\) to minimize
Theoretically, a global minimum will occur when
or
where
When \(\mathbf{A^{H}A}\) is invertible, then
where \(\mathbf{A}^{\dagger}\) is called the pseudo-inverse of \(\mathbf{A}.\) Notice that using this definition of \(\mathbf{A}\) the model can be written
The command linalg.lstsq
will solve the linear least squares
problem for \(\mathbf{c}\) given \(\mathbf{A}\) and
\(\mathbf{y}\) . In addition linalg.pinv
or
linalg.pinv2
(uses a different method based on singular value
decomposition) will find \(\mathbf{A}^{\dagger}\) given
\(\mathbf{A}.\)
The following example and figure demonstrate the use of
linalg.lstsq
and linalg.pinv
for solving a data-fitting
problem. The data shown below were generated using the model:
where \(x_{i}=0.1i\) for \(i=1\ldots10\) , \(c_{1}=5\) , and \(c_{2}=4.\) Noise is added to \(y_{i}\) and the coefficients \(c_{1}\) and \(c_{2}\) are estimated using linear least squares.
>>> import numpy as np
>>> from scipy import linalg
>>> import matplotlib.pyplot as plt
>>> c1, c2 = 5.0, 2.0
>>> i = np.r_[1:11]
>>> xi = 0.1*i
>>> yi = c1*np.exp(-xi) + c2*xi
>>> zi = yi + 0.05 * np.max(yi) * np.random.randn(len(yi))
>>> A = np.c_[np.exp(-xi)[:, np.newaxis], xi[:, np.newaxis]]
>>> c, resid, rank, sigma = linalg.lstsq(A, zi)
>>> xi2 = np.r_[0.1:1.0:100j]
>>> yi2 = c[0]*np.exp(-xi2) + c[1]*xi2
>>> plt.plot(xi,zi,'x',xi2,yi2)
>>> plt.axis([0,1.1,3.0,5.5])
>>> plt.xlabel('$x_i$')
>>> plt.title('Data fitting with linalg.lstsq')
>>> plt.show()
Generalized inverse¶
The generalized inverse is calculated using the command
linalg.pinv
or linalg.pinv2
. These two commands differ
in how they compute the generalized inverse. The first uses the
linalg.lstsq algorithm while the second uses singular value
decomposition. Let \(\mathbf{A}\) be an \(M\times N\) matrix,
then if \(M>N\) the generalized inverse is
while if \(M<N\) matrix the generalized inverse is
In both cases for \(M=N\) , then
as long as \(\mathbf{A}\) is invertible.
Decompositions¶
In many applications it is useful to decompose a matrix using other representations. There are several decompositions supported by SciPy.
Eigenvalues and eigenvectors¶
The eigenvalue-eigenvector problem is one of the most commonly employed linear algebra operations. In one popular form, the eigenvalue-eigenvector problem is to find for some square matrix \(\mathbf{A}\) scalars \(\lambda\) and corresponding vectors \(\mathbf{v}\) such that
For an \(N\times N\) matrix, there are \(N\) (not necessarily distinct) eigenvalues — roots of the (characteristic) polynomial
The eigenvectors, \(\mathbf{v}\) , are also sometimes called right eigenvectors to distinguish them from another set of left eigenvectors that satisfy
or
With it’s default optional arguments, the command linalg.eig
returns \(\lambda\) and \(\mathbf{v}.\) However, it can also
return \(\mathbf{v}_{L}\) and just \(\lambda\) by itself (
linalg.eigvals
returns just \(\lambda\) as well).
In addition, linalg.eig
can also solve the more general eigenvalue problem
for square matrices \(\mathbf{A}\) and \(\mathbf{B}.\) The standard eigenvalue problem is an example of the general eigenvalue problem for \(\mathbf{B}=\mathbf{I}.\) When a generalized eigenvalue problem can be solved, then it provides a decomposition of \(\mathbf{A}\) as
where \(\mathbf{V}\) is the collection of eigenvectors into columns and \(\boldsymbol{\Lambda}\) is a diagonal matrix of eigenvalues.
By definition, eigenvectors are only defined up to a constant scale factor. In SciPy, the scaling factor for the eigenvectors is chosen so that \(\left\Vert \mathbf{v}\right\Vert ^{2}=\sum_{i}v_{i}^{2}=1.\)
As an example, consider finding the eigenvalues and eigenvectors of the matrix
The characteristic polynomial is
The roots of this polynomial are the eigenvalues of \(\mathbf{A}\) :
The eigenvectors corresponding to each eigenvalue can be found using the original equation. The eigenvectors associated with these eigenvalues can then be found.
>>> import numpy as np
>>> from scipy import linalg
>>> A = np.array([[1, 2], [3, 4]])
>>> la, v = linalg.eig(A)
>>> l1, l2 = la
>>> print(l1, l2) # eigenvalues
(-0.3722813232690143+0j) (5.372281323269014+0j)
>>> print(v[:, 0]) # first eigenvector
[-0.82456484 0.56576746]
>>> print(v[:, 1]) # second eigenvector
[-0.41597356 -0.90937671]
>>> print(np.sum(abs(v**2), axis=0)) # eigenvectors are unitary
[1. 1.]
>>> v1 = np.array(v[:, 0]).T
>>> print(linalg.norm(A.dot(v1) - l1*v1)) # check the computation
3.23682852457e-16
Singular value decomposition¶
Singular Value Decomposition (SVD) can be thought of as an extension of the eigenvalue problem to matrices that are not square. Let \(\mathbf{A}\) be an \(M\times N\) matrix with \(M\) and \(N\) arbitrary. The matrices \(\mathbf{A}^{H}\mathbf{A}\) and \(\mathbf{A}\mathbf{A}^{H}\) are square hermitian matrices [1] of size \(N\times N\) and \(M\times M\) respectively. It is known that the eigenvalues of square hermitian matrices are real and non-negative. In addition, there are at most \(\min\left(M,N\right)\) identical non-zero eigenvalues of \(\mathbf{A}^{H}\mathbf{A}\) and \(\mathbf{A}\mathbf{A}^{H}.\) Define these positive eigenvalues as \(\sigma_{i}^{2}.\) The square-root of these are called singular values of \(\mathbf{A}.\) The eigenvectors of \(\mathbf{A}^{H}\mathbf{A}\) are collected by columns into an \(N\times N\) unitary [2] matrix \(\mathbf{V}\) while the eigenvectors of \(\mathbf{A}\mathbf{A}^{H}\) are collected by columns in the unitary matrix \(\mathbf{U}\) , the singular values are collected in an \(M\times N\) zero matrix \(\mathbf{\boldsymbol{\Sigma}}\) with main diagonal entries set to the singular values. Then
is the singular-value decomposition of \(\mathbf{A}.\) Every
matrix has a singular value decomposition. Sometimes, the singular
values are called the spectrum of \(\mathbf{A}.\) The command
linalg.svd
will return \(\mathbf{U}\) ,
\(\mathbf{V}^{H}\) , and \(\sigma_{i}\) as an array of the
singular values. To obtain the matrix \(\boldsymbol{\Sigma}\) use
linalg.diagsvd
. The following example illustrates the use of
linalg.svd
.
>>> import numpy as np
>>> from scipy import linalg
>>> A = np.array([[1,2,3],[4,5,6]])
>>> A
array([[1, 2, 3],
[4, 5, 6]])
>>> M,N = A.shape
>>> U,s,Vh = linalg.svd(A)
>>> Sig = linalg.diagsvd(s,M,N)
>>> U, Vh = U, Vh
>>> U
array([[-0.3863177 , -0.92236578],
[-0.92236578, 0.3863177 ]])
>>> Sig
array([[ 9.508032 , 0. , 0. ],
[ 0. , 0.77286964, 0. ]])
>>> Vh
array([[-0.42866713, -0.56630692, -0.7039467 ],
[ 0.80596391, 0.11238241, -0.58119908],
[ 0.40824829, -0.81649658, 0.40824829]])
>>> U.dot(Sig.dot(Vh)) #check computation
array([[ 1., 2., 3.],
[ 4., 5., 6.]])
[1] | A hermitian matrix \(\mathbf{D}\) satisfies \(\mathbf{D}^{H}=\mathbf{D}.\) |
[2] | A unitary matrix \(\mathbf{D}\) satisfies \(\mathbf{D}^{H}\mathbf{D}=\mathbf{I}=\mathbf{D}\mathbf{D}^{H}\) so that \(\mathbf{D}^{-1}=\mathbf{D}^{H}.\) |
LU decomposition¶
The LU decomposition finds a representation for the \(M\times N\) matrix \(\mathbf{A}\) as
where \(\mathbf{P}\) is an \(M\times M\) permutation matrix (a
permutation of the rows of the identity matrix), \(\mathbf{L}\) is
in \(M\times K\) lower triangular or trapezoidal matrix (
\(K=\min\left(M,N\right)\) ) with unit-diagonal, and
\(\mathbf{U}\) is an upper triangular or trapezoidal matrix. The
SciPy command for this decomposition is linalg.lu
.
Such a decomposition is often useful for solving many simultaneous equations where the left-hand-side does not change but the right hand side does. For example, suppose we are going to solve
for many different \(\mathbf{b}_{i}\) . The LU decomposition allows this to be written as
Because \(\mathbf{L}\) is lower-triangular, the equation can be
solved for \(\mathbf{U}\mathbf{x}_{i}\) and finally
\(\mathbf{x}_{i}\) very rapidly using forward- and
back-substitution. An initial time spent factoring \(\mathbf{A}\)
allows for very rapid solution of similar systems of equations in the
future. If the intent for performing LU decomposition is for solving
linear systems then the command linalg.lu_factor
should be used
followed by repeated applications of the command
linalg.lu_solve
to solve the system for each new
right-hand-side.
Cholesky decomposition¶
Cholesky decomposition is a special case of LU decomposition applicable to Hermitian positive definite matrices. When \(\mathbf{A}=\mathbf{A}^{H}\) and \(\mathbf{x}^{H}\mathbf{Ax}\geq0\) for all \(\mathbf{x}\) , then decompositions of \(\mathbf{A}\) can be found so that
where \(\mathbf{L}\) is lower-triangular and \(\mathbf{U}\) is
upper triangular. Notice that \(\mathbf{L}=\mathbf{U}^{H}.\) The
command linalg.cholesky
computes the cholesky
factorization. For using cholesky factorization to solve systems of
equations there are also linalg.cho_factor
and
linalg.cho_solve
routines that work similarly to their LU
decomposition counterparts.
QR decomposition¶
The QR decomposition (sometimes called a polar decomposition) works for any \(M\times N\) array and finds an \(M\times M\) unitary matrix \(\mathbf{Q}\) and an \(M\times N\) upper-trapezoidal matrix \(\mathbf{R}\) such that
Notice that if the SVD of \(\mathbf{A}\) is known then the QR decomposition can be found
implies that \(\mathbf{Q}=\mathbf{U}\) and
\(\mathbf{R}=\boldsymbol{\Sigma}\mathbf{V}^{H}.\) Note, however,
that in SciPy independent algorithms are used to find QR and SVD
decompositions. The command for QR decomposition is linalg.qr
.
Schur decomposition¶
For a square \(N\times N\) matrix, \(\mathbf{A}\) , the Schur decomposition finds (not-necessarily unique) matrices \(\mathbf{T}\) and \(\mathbf{Z}\) such that
where \(\mathbf{Z}\) is a unitary matrix and \(\mathbf{T}\) is
either upper-triangular or quasi-upper triangular depending on whether
or not a real schur form or complex schur form is requested. For a
real schur form both \(\mathbf{T}\) and \(\mathbf{Z}\) are
real-valued when \(\mathbf{A}\) is real-valued. When
\(\mathbf{A}\) is a real-valued matrix the real schur form is only
quasi-upper triangular because \(2\times2\) blocks extrude from
the main diagonal corresponding to any complex- valued
eigenvalues. The command linalg.schur
finds the Schur
decomposition while the command linalg.rsf2csf
converts
\(\mathbf{T}\) and \(\mathbf{Z}\) from a real Schur form to a
complex Schur form. The Schur form is especially useful in calculating
functions of matrices.
The following example illustrates the schur decomposition:
>>> from scipy import linalg
>>> A = np.mat('[1 3 2; 1 4 5; 2 3 6]')
>>> T, Z = linalg.schur(A)
>>> T1, Z1 = linalg.schur(A, 'complex')
>>> T2, Z2 = linalg.rsf2csf(T, Z)
>>> T
array([[ 9.90012467, 1.78947961, -0.65498528],
[ 0. , 0.54993766, -1.57754789],
[ 0. , 0.51260928, 0.54993766]])
>>> T2
array([[ 9.90012467+0.00000000e+00j, -0.32436598+1.55463542e+00j,
-0.88619748+5.69027615e-01j],
[ 0. +0.00000000e+00j, 0.54993766+8.99258408e-01j,
1.06493862+3.05311332e-16j],
[ 0. +0.00000000e+00j, 0. +0.00000000e+00j,
0.54993766-8.99258408e-01j]])
>>> abs(T1 - T2) # different
array([[ 1.06604538e-14, 2.06969555e+00, 1.69375747e+00], # may vary
[ 0.00000000e+00, 1.33688556e-15, 4.74146496e-01],
[ 0.00000000e+00, 0.00000000e+00, 1.13220977e-15]])
>>> abs(Z1 - Z2) # different
array([[ 0.06833781, 0.88091091, 0.79568503], # may vary
[ 0.11857169, 0.44491892, 0.99594171],
[ 0.12624999, 0.60264117, 0.77257633]])
>>> T, Z, T1, Z1, T2, Z2 = map(np.mat,(T,Z,T1,Z1,T2,Z2))
>>> abs(A - Z*T*Z.H) # same
matrix([[ 5.55111512e-16, 1.77635684e-15, 2.22044605e-15],
[ 0.00000000e+00, 3.99680289e-15, 8.88178420e-16],
[ 1.11022302e-15, 4.44089210e-16, 3.55271368e-15]])
>>> abs(A - Z1*T1*Z1.H) # same
matrix([[ 4.26993904e-15, 6.21793362e-15, 8.00007092e-15],
[ 5.77945386e-15, 6.21798014e-15, 1.06653681e-14],
[ 7.16681444e-15, 8.90271058e-15, 1.77635764e-14]])
>>> abs(A - Z2*T2*Z2.H) # same
matrix([[ 6.02594127e-16, 1.77648931e-15, 2.22506907e-15],
[ 2.46275555e-16, 3.99684548e-15, 8.91642616e-16],
[ 8.88225111e-16, 8.88312432e-16, 4.44104848e-15]])
Interpolative Decomposition¶
scipy.linalg.interpolative
contains routines for computing the
interpolative decomposition (ID) of a matrix. For a matrix \(A
\in \mathbb{C}^{m \times n}\) of rank \(k \leq \min \{ m, n \}\)
this is a factorization
where \(\Pi = [\Pi_{1}, \Pi_{2}]\) is a permutation matrix with \(\Pi_{1} \in \{ 0, 1 \}^{n \times k}\), i.e., \(A \Pi_{2} = A \Pi_{1} T\). This can equivalently be written as \(A = BP\), where \(B = A \Pi_{1}\) and \(P = [I, T] \Pi^{\mathsf{T}}\) are the skeleton and interpolation matrices, respectively.
See also
scipy.linalg.interpolative
— for more information.
Matrix Functions¶
Consider the function \(f\left(x\right)\) with Taylor series expansion
A matrix function can be defined using this Taylor series for the square matrix \(\mathbf{A}\) as
While, this serves as a useful representation of a matrix function, it is rarely the best way to calculate a matrix function.
Exponential and logarithm functions¶
The matrix exponential is one of the more common matrix functions.
The preferred method for implementing the matrix exponential is to use
scaling and a Padé approximation for \(e^{x}\) . This algorithm is
implemented as linalg.expm
.
The inverse of the matrix exponential is the matrix logarithm defined as the inverse of the matrix exponential.
The matrix logarithm can be obtained with linalg.logm
.
Trigonometric functions¶
The trigonometric functions \(\sin\) , \(\cos\) , and
\(\tan\) are implemented for matrices in linalg.sinm
,
linalg.cosm
, and linalg.tanm
respectively. The matrix
sin and cosine can be defined using Euler’s identity as
The tangent is
and so the matrix tangent is defined as
Hyperbolic trigonometric functions¶
The hyperbolic trigonometric functions \(\sinh\) , \(\cosh\) , and \(\tanh\) can also be defined for matrices using the familiar definitions:
These matrix functions can be found using linalg.sinhm
,
linalg.coshm
, and linalg.tanhm
.
Arbitrary function¶
Finally, any arbitrary function that takes one complex number and
returns a complex number can be called as a matrix function using the
command linalg.funm
. This command takes the matrix and an
arbitrary Python function. It then implements an algorithm from Golub
and Van Loan’s book “Matrix Computations” to compute the function applied
to the matrix using a Schur decomposition. Note that the function
needs to accept complex numbers as input in order to work with this
algorithm. For example the following code computes the zeroth-order
Bessel function applied to a matrix.
>>> from scipy import special, random, linalg
>>> np.random.seed(1234)
>>> A = random.rand(3, 3)
>>> B = linalg.funm(A, lambda x: special.jv(0, x))
>>> A
array([[ 0.19151945, 0.62210877, 0.43772774],
[ 0.78535858, 0.77997581, 0.27259261],
[ 0.27646426, 0.80187218, 0.95813935]])
>>> B
array([[ 0.86511146, -0.19676526, -0.13856748],
[-0.17479869, 0.7259118 , -0.16606258],
[-0.19212044, -0.32052767, 0.73590704]])
>>> linalg.eigvals(A)
array([ 1.73881510+0.j, -0.20270676+0.j, 0.39352627+0.j])
>>> special.jv(0, linalg.eigvals(A))
array([ 0.37551908+0.j, 0.98975384+0.j, 0.96165739+0.j])
>>> linalg.eigvals(B)
array([ 0.37551908+0.j, 0.98975384+0.j, 0.96165739+0.j])
Note how, by virtue of how matrix analytic functions are defined, the Bessel function has acted on the matrix eigenvalues.
Special matrices¶
SciPy and NumPy provide several functions for creating special matrices that are frequently used in engineering and science.
Type | Function | Description |
---|---|---|
block diagonal | scipy.linalg.block_diag |
Create a block diagonal matrix from the provided arrays. |
circulant | scipy.linalg.circulant |
Construct a circulant matrix. |
companion | scipy.linalg.companion |
Create a companion matrix. |
Hadamard | scipy.linalg.hadamard |
Construct a Hadamard matrix. |
Hankel | scipy.linalg.hankel |
Construct a Hankel matrix. |
Hilbert | scipy.linalg.hilbert |
Construct a Hilbert matrix. |
Inverse Hilbert | scipy.linalg.invhilbert |
Construct the inverse of a Hilbert matrix. |
Leslie | scipy.linalg.leslie |
Create a Leslie matrix. |
Pascal | scipy.linalg.pascal |
Create a Pascal matrix. |
Toeplitz | scipy.linalg.toeplitz |
Construct a Toeplitz matrix. |
Van der Monde | numpy.vander |
Generate a Van der Monde matrix. |
For examples of the use of these functions, see their respective docstrings.