scipy.sparse.linalg.eigsh¶
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scipy.sparse.linalg.eigsh(A, k=6, M=None, sigma=None, which='LM', v0=None, ncv=None, maxiter=None, tol=0, return_eigenvectors=True, Minv=None, OPinv=None, mode='normal')[source]¶
- Find k eigenvalues and eigenvectors of the real symmetric square matrix or complex hermitian matrix A. - Solves - A * x[i] = w[i] * x[i], the standard eigenvalue problem for w[i] eigenvalues with corresponding eigenvectors x[i].- If M is specified, solves - A * x[i] = w[i] * M * x[i], the generalized eigenvalue problem for w[i] eigenvalues with corresponding eigenvectors x[i]- Parameters: - A : An N x N matrix, array, sparse matrix, or LinearOperator representing - the operation A * x, where A is a real symmetric matrix For buckling mode (see below) A must additionally be positive-definite - k : int, optional - The number of eigenvalues and eigenvectors desired. k must be smaller than N. It is not possible to compute all eigenvectors of a matrix. - Returns: - w : array - Array of k eigenvalues - v : array - An array representing the k eigenvectors. The column - v[:, i]is the eigenvector corresponding to the eigenvalue- w[i].- Other Parameters: - M : An N x N matrix, array, sparse matrix, or linear operator representing - the operation M * x for the generalized eigenvalue problem - A * x = w * M * x. - M must represent a real, symmetric matrix if A is real, and must represent a complex, hermitian matrix if A is complex. For best results, the data type of M should be the same as that of A. Additionally: - If sigma is None, M is symmetric positive definite - If sigma is specified, M is symmetric positive semi-definite - In buckling mode, M is symmetric indefinite. - If sigma is None, eigsh requires an operator to compute the solution of the linear equation - M * x = b. This is done internally via a (sparse) LU decomposition for an explicit matrix M, or via an iterative solver for a general linear operator. Alternatively, the user can supply the matrix or operator Minv, which gives- x = Minv * b = M^-1 * b.- sigma : real - Find eigenvalues near sigma using shift-invert mode. This requires an operator to compute the solution of the linear system [A - sigma * M] x = b, where M is the identity matrix if unspecified. This is computed internally via a (sparse) LU decomposition for explicit matrices A & M, or via an iterative solver if either A or M is a general linear operator. Alternatively, the user can supply the matrix or operator OPinv, which gives - x = OPinv * b = [A - sigma * M]^-1 * b. Note that when sigma is specified, the keyword ‘which’ refers to the shifted eigenvalues- w'[i]where:- if mode == ‘normal’, - w'[i] = 1 / (w[i] - sigma).- if mode == ‘cayley’, - w'[i] = (w[i] + sigma) / (w[i] - sigma).- if mode == ‘buckling’, - w'[i] = w[i] / (w[i] - sigma).- (see further discussion in ‘mode’ below) - v0 : ndarray, optional - Starting vector for iteration. Default: random - ncv : int, optional - The number of Lanczos vectors generated ncv must be greater than k and smaller than n; it is recommended that - ncv > 2*k. Default:- min(n, max(2*k + 1, 20))- which : str [‘LM’ | ‘SM’ | ‘LA’ | ‘SA’ | ‘BE’] - If A is a complex hermitian matrix, ‘BE’ is invalid. Which k eigenvectors and eigenvalues to find: - ‘LM’ : Largest (in magnitude) eigenvalues - ‘SM’ : Smallest (in magnitude) eigenvalues - ‘LA’ : Largest (algebraic) eigenvalues - ‘SA’ : Smallest (algebraic) eigenvalues - ‘BE’ : Half (k/2) from each end of the spectrum - When k is odd, return one more (k/2+1) from the high end. When sigma != None, ‘which’ refers to the shifted eigenvalues - w'[i](see discussion in ‘sigma’, above). ARPACK is generally better at finding large values than small values. If small eigenvalues are desired, consider using shift-invert mode for better performance.- maxiter : int, optional - Maximum number of Arnoldi update iterations allowed Default: - n*10- tol : float - Relative accuracy for eigenvalues (stopping criterion). The default value of 0 implies machine precision. - Minv : N x N matrix, array, sparse matrix, or LinearOperator - See notes in M, above - OPinv : N x N matrix, array, sparse matrix, or LinearOperator - See notes in sigma, above. - return_eigenvectors : bool - Return eigenvectors (True) in addition to eigenvalues - mode : string [‘normal’ | ‘buckling’ | ‘cayley’] - Specify strategy to use for shift-invert mode. This argument applies only for real-valued A and sigma != None. For shift-invert mode, ARPACK internally solves the eigenvalue problem - OP * x'[i] = w'[i] * B * x'[i]and transforms the resulting Ritz vectors x’[i] and Ritz values w’[i] into the desired eigenvectors and eigenvalues of the problem- A * x[i] = w[i] * M * x[i]. The modes are as follows:- ‘normal’ :
- OP = [A - sigma * M]^-1 * M, B = M, w’[i] = 1 / (w[i] - sigma) 
- ‘buckling’ :
- OP = [A - sigma * M]^-1 * A, B = A, w’[i] = w[i] / (w[i] - sigma) 
- ‘cayley’ :
- OP = [A - sigma * M]^-1 * [A + sigma * M], B = M, w’[i] = (w[i] + sigma) / (w[i] - sigma) 
 - The choice of mode will affect which eigenvalues are selected by the keyword ‘which’, and can also impact the stability of convergence (see [2] for a discussion) - Raises: - ArpackNoConvergence - When the requested convergence is not obtained. - The currently converged eigenvalues and eigenvectors can be found as - eigenvaluesand- eigenvectorsattributes of the exception object.- See also - Notes - This function is a wrapper to the ARPACK [R329] SSEUPD and DSEUPD functions which use the Implicitly Restarted Lanczos Method to find the eigenvalues and eigenvectors [R330]. - References - [R329] - (1, 2) ARPACK Software, http://www.caam.rice.edu/software/ARPACK/ - [R330] - (1, 2) R. B. Lehoucq, D. C. Sorensen, and C. Yang, ARPACK USERS GUIDE: Solution of Large Scale Eigenvalue Problems by Implicitly Restarted Arnoldi Methods. SIAM, Philadelphia, PA, 1998. - Examples - >>> import scipy.sparse as sparse >>> id = np.eye(13) >>> vals, vecs = sparse.linalg.eigsh(id, k=6) >>> vals array([ 1.+0.j, 1.+0.j, 1.+0.j, 1.+0.j, 1.+0.j, 1.+0.j]) >>> vecs.shape (13, 6) 
