bundles / scipy latest / scipy / stats / _multivariate / matrix_t_gen
class
scipy.stats._multivariate:matrix_t_gen
Signature
class matrix_t_gen ( seed = None ) Members
Summary
A matrix t-random variable.
Extended Summary
The mean keyword specifies the mean. The row_spread keyword specifies the row-wise spread matrix. The col_spread keyword specifies the column-wise spread matrix.
Parameters
%(_matt_doc_default_callparams)s%(_doc_random_state)s
Methods
pdf(x, mean=None, row_spread=None, col_spread=None)Probability density function.
logpdf(x, mean=None, row_spread=None, col_spread=None)Log of the probability density function.
rvs(mean=None, row_spread=1, col_spread=1, df=1, size=1, random_state=None)Draw random samples.
Notes
%(_matt_doc_callparams_note)s
The spread matrices specified by row_spread and col_spread must be (symmetric) positive definite. If the samples in X have shape (m,n) then row_spread must have shape (m,m) and col_spread must have shape (n,n). Spread matrices must be full rank.
The probability density function for matrix_t is
or, alternatively,
where is the mean, is the row-wise spread matrix, is the column-wise matrix, is the degrees of freedom, and is the multivariate gamma function.
These equivalent formulations come from the identity
for arrays and and the fact that is equal to , where
denotes a normalized multivariate gamma function.
When this distribution is known as the matrix variate Cauchy.
Examples
import numpy as np from scipy.stats import matrix_t M = np.arange(6).reshape(3,2) M Sigma = np.diag([1,2,3]) Sigma Omega = 0.3*np.identity(2)✓
Omega
✗X = M + 0.1
✓X
✗df = 3
✓matrix_t.pdf(X, mean=M, row_spread=Sigma, col_spread=Omega, df=df)
✗rv = matrix_t(mean=None, row_spread=1, col_spread=1, df=1)
✓Aliases
-
scipy.stats._multivariate.matrix_t_gen