In the scikit learn Gaussian mixture model we can get mean and covariance by
clf = GaussianMixture(n_components=num_clusters, covariance_type="tied", init_params='kmeans')
for i in range(clf.n_components):
cov=clf.covariances_[i]
mean=clf.means_[i]
But in the case of pomegranate Gaussian Mixture model says no attributes called 'covariances_' and 'means_' Thank you very much for your valuable time.
When you run covariance_type="tied"
, the model assumes a common covariance matrix for all components, so the code above does not hold. If covariance_type="tied"
then it will be 1 covariance matrix under clf.covariances_ . Refer to help page:
‘full’ each component has its own general covariance matrix
‘tied’ all components share the same general covariance matrix
With pomegranate
it estimates a covariance matrix for each component, so a good comparison with running GaussianMixture
from sklearn with covariance_type="full"
from sklearn import datasets
from sklearn.mixture import GaussianMixture
iris = datasets.load_iris()
clf = GaussianMixture(n_components=3, covariance_type="full", init_params='kmeans')
clf.fit(iris.data)
cov = []
means = []
for i in range(clf.n_components):
cov.append(clf.covariances_[i])
means.append(clf.means_[i])
So for component or cluster 0 :
means[0]
array([5.006, 3.428, 1.462, 0.246])
cov[0]
array([[0.121765, 0.097232, 0.016028, 0.010124],
[0.097232, 0.140817, 0.011464, 0.009112],
[0.016028, 0.011464, 0.029557, 0.005948],
[0.010124, 0.009112, 0.005948, 0.010885]])
Now using pomegranate:
from pomegranate import GeneralMixtureModel, MultivariateGaussianDistribution
mdl = GeneralMixtureModel.from_samples(MultivariateGaussianDistribution,
n_components=3, X=iris.data)
mdl = mdl.fit(iris.data)
The parameters can be accessed under distributions
, and you have a list as long as your components. For the first, you do distributions[0]
, second distributions[1]
and so on:
mdl.distributions[0].parameters[0]
[5.005999999999999, 3.4280000000000004, 1.462, 0.24599999999999986]
np.round(mdl.distributions[0].parameters[1],6)
array([[0.121764, 0.097232, 0.016028, 0.010124],
[0.097232, 0.140816, 0.011464, 0.009112],
[0.016028, 0.011464, 0.029556, 0.005948],
[0.010124, 0.009112, 0.005948, 0.010884]])