networksns.centrality_measures.exponential_symmetric_quadrature¶
- networksns.centrality_measures.exponential_symmetric_quadrature(A, u, tol=1e-07, maxit=50)¶
Computes \(q=u^Te^Au\). The computation is done by means of Lanczos method according to [1].
- Parameters:
A (array_like) – sparse/dense symmetric matrix.
u (array) – vector.
tol (float,optional) – tolerance for convergence, relative accuracy, default: 1e-7.
maxit (integer, optional) – maximum number of Lanczos iterations, default: 50.
- Returns:
q: (float) value of the quadratic form \(u^Te^Au\).
Examples
>>> from networksns import centrality_measures as cm >>> import numpy as np
Create symmetric matrix \(A\)
>>> A = np.arange(0, 9, 1) >>> A = A.reshape(3, 3) >>> A = A + A.transpose() array([[ 0, 4, 8], [ 4, 8, 12], [ 8, 12, 16]])
Create vector \(u\)
>>> u = np.arange(0, 3) array([0, 1, 2])
Compute \(q=u^T e^A u\).
>>> q = cm.exponential_symmetric_quadrature(A, u)
References