companion#
- scipy.linalg.companion(a)[source]#
Create a companion matrix.
Create the companion matrix [1] associated with the polynomial whose coefficients are given in a.
- Parameters:
- a(…, N) array_like
1-D array of polynomial coefficients. The length of a must be at least two, and
a[0]
must not be zero. M-dimensional arrays are treated as a batch: each slice along the last axis is a 1-D array of polynomial coefficients.
- Returns:
- c(…, N-1, N-1) ndarray
For 1-D input, the first row of c is
-a[1:]/a[0]
, and the first sub-diagonal is all ones. The data-type of the array is the same as the data-type of1.0*a[0]
. For batch input, each slice of shape(N-1, N-1)
along the last two dimensions of the output corresponds with a slice of shape(N,)
along the last dimension of the input.
- Raises:
- ValueError
If any of the following are true: a)
a.shape[-1] < 2
; b)a[..., 0] == 0
.
Notes
Added in version 0.8.0.
References
[1]R. A. Horn & C. R. Johnson, Matrix Analysis. Cambridge, UK: Cambridge University Press, 1999, pp. 146-7.
Examples
>>> from scipy.linalg import companion >>> companion([1, -10, 31, -30]) array([[ 10., -31., 30.], [ 1., 0., 0.], [ 0., 1., 0.]])