statsmodels.tsa.varma_process.VarmaPoly
-
class statsmodels.tsa.varma_process.VarmaPoly(ar, ma=None)[source] -
class to keep track of Varma polynomial format
Examples
- ar23 = np.array([[[ 1. , 0. ],
- [ 0. , 1. ]],
- [[-0.6, 0. ],
- [ 0.2, -0.6]],
- [[-0.1, 0. ],
- [ 0.1, -0.1]]])
- ma22 = np.array([[[ 1. , 0. ],
- [ 0. , 1. ]],
- [[ 0.4, 0. ],
- [ 0.2, 0.3]]])
Methods
getisinvertible([a])check whether the auto-regressive lag-polynomial is stationary getisstationary([a])check whether the auto-regressive lag-polynomial is stationary hstack([a, name])stack lagpolynomial horizontally in 2d array hstackarma_minus1()stack ar and lagpolynomial vertically in 2d array reduceform(apoly)this assumes no exog, todo stacksquare([a, name, orientation])stack lagpolynomial vertically in 2d square array with eye vstack([a, name])stack lagpolynomial vertically in 2d array vstackarma_minus1()stack ar and lagpolynomial vertically in 2d array
© 2009–2012 Statsmodels Developers
© 2006–2008 Scipy Developers
© 2006 Jonathan E. Taylor
Licensed under the 3-clause BSD License.
http://www.statsmodels.org/stable/generated/statsmodels.tsa.varma_process.VarmaPoly.html