Sparse eigenvalue problems with ARPACK¶
Introduction¶
ARPACK 1 is a Fortran package which provides routines for quickly finding a few eigenvalues/eigenvectors of large sparse matrices. In order to find these solutions, it requires only left-multiplication by the matrix in question. This operation is performed through a reverse-communication interface. The result of this structure is that ARPACK is able to find eigenvalues and eigenvectors of any linear function mapping a vector to a vector.
All of the functionality provided in ARPACK is contained within the two
high-level interfaces scipy.sparse.linalg.eigs
and
scipy.sparse.linalg.eigsh
. eigs
provides interfaces for finding the
eigenvalues/vectors of real or complex nonsymmetric square matrices, while
eigsh
provides interfaces for real-symmetric or complex-hermitian
matrices.
Basic functionality¶
ARPACK can solve either standard eigenvalue problems of the form
or general eigenvalue problems of the form
The power of ARPACK is that it can compute only a specified subset of
eigenvalue/eigenvector pairs. This is accomplished through the keyword
which
. The following values of which
are available:
which = 'LM'
: Eigenvalues with largest magnitude (eigs
,eigsh
), that is, largest eigenvalues in the euclidean norm of complex numbers.which = 'SM'
: Eigenvalues with smallest magnitude (eigs
,eigsh
), that is, smallest eigenvalues in the euclidean norm of complex numbers.which = 'LR'
: Eigenvalues with largest real part (eigs
).which = 'SR'
: Eigenvalues with smallest real part (eigs
).which = 'LI'
: Eigenvalues with largest imaginary part (eigs
).which = 'SI'
: Eigenvalues with smallest imaginary part (eigs
).which = 'LA'
: Eigenvalues with largest algebraic value (eigsh
), that is, largest eigenvalues inclusive of any negative sign.which = 'SA'
: Eigenvalues with smallest algebraic value (eigsh
), that is, smallest eigenvalues inclusive of any negative sign.which = 'BE'
: Eigenvalues from both ends of the spectrum (eigsh
).
Note that ARPACK is generally better at finding extremal eigenvalues, that
is, eigenvalues with large magnitudes. In particular, using which = 'SM'
may lead to slow execution time and/or anomalous results. A better approach
is to use shift-invert mode.
Shift-invert mode¶
Shift-invert mode relies on the following observation. For the generalized eigenvalue problem
it can be shown that
where
Examples¶
Imagine you’d like to find the smallest and largest eigenvalues and the
corresponding eigenvectors for a large matrix. ARPACK can handle many
forms of input: dense matrices ,such as numpy.ndarray
instances, sparse
matrices, such as scipy.sparse.csr_matrix
, or a general linear operator
derived from scipy.sparse.linalg.LinearOperator
. For this example, for
simplicity, we’ll construct a symmetric, positive-definite matrix.
>>> import numpy as np
>>> from scipy.linalg import eig, eigh
>>> from scipy.sparse.linalg import eigs, eigsh
>>> np.set_printoptions(suppress=True)
>>>
>>> np.random.seed(0)
>>> X = np.random.random((100,100)) - 0.5
>>> X = np.dot(X, X.T) #create a symmetric matrix
We now have a symmetric matrix X
, with which to test the routines. First,
compute a standard eigenvalue decomposition using eigh
:
>>> evals_all, evecs_all = eigh(X)
As the dimension of X
grows, this routine becomes very slow. Especially,
if only a few eigenvectors and eigenvalues are needed, ARPACK
can be a
better option. First let’s compute the largest eigenvalues (which = 'LM'
)
of X
and compare them to the known results:
>>> evals_large, evecs_large = eigsh(X, 3, which='LM')
>>> print(evals_all[-3:])
[29.1446102 30.05821805 31.19467646]
>>> print(evals_large)
[29.1446102 30.05821805 31.19467646]
>>> print(np.dot(evecs_large.T, evecs_all[:,-3:]))
array([[-1. 0. 0.], # may vary (signs)
[ 0. 1. 0.],
[-0. 0. -1.]])
The results are as expected. ARPACK recovers the desired eigenvalues and they match the previously known results. Furthermore, the eigenvectors are orthogonal, as we’d expect. Now, let’s attempt to solve for the eigenvalues with smallest magnitude:
>>> evals_small, evecs_small = eigsh(X, 3, which='SM')
Traceback (most recent call last): # may vary (convergence)
...
scipy.sparse.linalg.eigen.arpack.arpack.ArpackNoConvergence:
ARPACK error -1: No convergence (1001 iterations, 0/3 eigenvectors converged)
Oops. We see that, as mentioned above, ARPACK
is not quite as adept at
finding small eigenvalues. There are a few ways this problem can be
addressed. We could increase the tolerance (tol
) to lead to faster
convergence:
>>> evals_small, evecs_small = eigsh(X, 3, which='SM', tol=1E-2)
>>> evals_all[:3]
array([0.0003783, 0.00122714, 0.00715878])
>>> evals_small
array([0.00037831, 0.00122714, 0.00715881])
>>> np.dot(evecs_small.T, evecs_all[:,:3])
array([[ 0.99999999 0.00000024 -0.00000049], # may vary (signs)
[-0.00000023 0.99999999 0.00000056],
[ 0.00000031 -0.00000037 0.99999852]])
This works, but we lose the precision in the results. Another option is
to increase the maximum number of iterations (maxiter
) from 1000 to 5000:
>>> evals_small, evecs_small = eigsh(X, 3, which='SM', maxiter=5000)
>>> evals_all[:3]
array([0.0003783, 0.00122714, 0.00715878])
>>> evals_small
array([0.0003783, 0.00122714, 0.00715878])
>>> np.dot(evecs_small.T, evecs_all[:,:3])
array([[ 1. 0. 0.], # may vary (signs)
[-0. 1. 0.],
[ 0. 0. -1.]])
We get the results we’d hoped for, but the computation time is much longer.
Fortunately, ARPACK
contains a mode that allows a quick determination of
non-external eigenvalues: shift-invert mode. As mentioned above, this
mode involves transforming the eigenvalue problem to an equivalent problem
with different eigenvalues. In this case, we hope to find eigenvalues near
zero, so we’ll choose sigma = 0
. The transformed eigenvalues will
then satisfy \(\nu = 1/(\lambda - \sigma) = 1/\lambda\), so our
small eigenvalues \(\lambda\) become large eigenvalues \(\nu\).
>>> evals_small, evecs_small = eigsh(X, 3, sigma=0, which='LM')
>>> evals_all[:3]
array([0.0003783, 0.00122714, 0.00715878])
>>> evals_small
array([0.0003783, 0.00122714, 0.00715878])
>>> np.dot(evecs_small.T, evecs_all[:,:3])
array([[ 1. 0. 0.], # may vary (signs)
[ 0. -1. -0.],
[-0. -0. 1.]])
We get the results we were hoping for, with much less computational time. Note that the transformation from \(\nu \to \lambda\) takes place entirely in the background. The user need not worry about the details.
The shift-invert mode provides more than just a fast way to obtain a few
small eigenvalues. Say, you
desire to find internal eigenvalues and eigenvectors, e.g., those nearest to
\(\lambda = 1\). Simply set sigma = 1
and ARPACK will take care of
the rest:
>>> evals_mid, evecs_mid = eigsh(X, 3, sigma=1, which='LM')
>>> i_sort = np.argsort(abs(1. / (1 - evals_all)))[-3:]
>>> evals_all[i_sort]
array([1.16577199, 0.85081388, 1.06642272])
>>> evals_mid
array([0.85081388, 1.06642272, 1.16577199])
>>> print(np.dot(evecs_mid.T, evecs_all[:,i_sort]))
array([[-0. 1. 0.], # may vary (signs)
[-0. -0. 1.],
[ 1. 0. 0.]]
The eigenvalues come out in a different order, but they’re all there.
Note that the shift-invert mode requires the internal solution of a matrix
inverse. This is taken care of automatically by eigsh
and eigs
,
but the operation can also be specified by the user. See the docstring of
scipy.sparse.linalg.eigsh
and
scipy.sparse.linalg.eigs
for details.
Use of LinearOperator¶
We consider now the case where you’d like to avoid creating a dense matrix
and use scipy.sparse.linalg.LinearOperator
instead. Our first
linear operator applies element-wise multiplication between the input vector
and a vector \(\mathbf{d}\) provided by the user to the operator itself.
This operator mimics a diagonal matrix with the elements of \(\mathbf{d}\)
along the main diagonal and it has the main benefit that the forward and
adjoint operations are simple element-wise multiplications other
than matrix-vector multiplications. For a diagonal matrix, we expect the
eigenvalues to be equal to the elements along the main diagonal, in this case
\(\mathbf{d}\). The eigenvalues and eigenvectors obtained with eigsh
are compared to those obtained by using eigh
when applied to
the dense matrix:
>>> from scipy.sparse.linalg import LinearOperator
>>> class Diagonal(LinearOperator):
... def __init__(self, diag, dtype='float32'):
... self.diag = diag
... self.shape = (len(self.diag), len(self.diag))
... self.dtype = np.dtype(dtype)
... def _matvec(self, x):
... return self.diag*x
... def _rmatvec(self, x):
... return self.diag*x
>>> np.random.seed(0)
>>> N = 100
>>> d = np.random.normal(0, 1, N).astype(np.float64)
>>> D = np.diag(d)
>>> Dop = Diagonal(d, dtype=np.float64)
>>> evals_all, evecs_all = eigh(D)
>>> evals_large, evecs_large = eigsh(Dop, 3, which='LA', maxiter=1e3)
>>> evals_all[-3:]
array([1.9507754 , 2.2408932 , 2.26975462])
>>> evals_large
array([1.9507754 , 2.2408932 , 2.26975462])
>>> print(np.dot(evecs_large.T, evecs_all[:,-3:]))
array([[-1. 0. 0.], # may vary (signs)
[-0. -1. 0.],
[ 0. 0. -1.]]
In this case, we have created a quick and easy Diagonal
operator.
The external library PyLops provides
similar capabilities in the Diagonal operator,
as well as several other operators.
Finally, we consider a linear operator that mimics the application of a first-derivative stencil. In this case, the operator is equivalent to a real nonsymmetric matrix. Once again, we compare the estimated eigenvalues and eigenvectors with those from a dense matrix that applies the same first derivative to an input signal:
>>> class FirstDerivative(LinearOperator):
... def __init__(self, N, dtype='float32'):
... self.N = N
... self.shape = (self.N, self.N)
... self.dtype = np.dtype(dtype)
... def _matvec(self, x):
... y = np.zeros(self.N, self.dtype)
... y[1:-1] = (0.5*x[2:]-0.5*x[0:-2])
... return y
... def _rmatvec(self, x):
... y = np.zeros(self.N, self.dtype)
... y[0:-2] = y[0:-2] - (0.5*x[1:-1])
... y[2:] = y[2:] + (0.5*x[1:-1])
... return y
>>> N = 21
>>> D = np.diag(0.5*np.ones(N-1), k=1) - np.diag(0.5*np.ones(N-1), k=-1)
>>> D[0] = D[-1] = 0 # take away edge effects
>>> Dop = FirstDerivative(N, dtype=np.float64)
>>> evals_all, evecs_all = eig(D)
>>> evals_large, evecs_large = eigs(Dop, 4, which='LI')
>>> evals_all_imag = evals_all.imag
>>> isort_imag = np.argsort(np.abs(evals_all_imag))
>>> evals_all_imag = evals_all_imag[isort_imag]
>>> evals_large_imag = evals_large.imag
>>> isort_imag = np.argsort(np.abs(evals_large_imag))
>>> evals_large_imag = evals_large_imag[isort_imag]
>>> evals_all_imag[-4:]
array([-0.95105652, 0.95105652, -0.98768834, 0.98768834])
>>> evals_large_imag
array([0.95105652, -0.95105652, 0.98768834, -0.98768834])
Note that the eigenvalues of this operator are all imaginary. Moreover,
the keyword which='LI'
of scipy.sparse.linalg.eigs
produces
the eigenvalues with largest absolute imaginary part (both
positive and negative). Again, a more advanced implementation of the
first-derivative operator is available in the
PyLops library under the name of
FirstDerivative
operator.