# How to explain variables weight from a Linear Discriminant Analysis?

I'm working on a supervised classification. To begin I would like to find variables which have important weight to discriminate each class. My code is the following :

``````from sklearn.discriminant_analysis import LinearDiscriminantAnalysis as LDA

X = X_train_std[0:1000,:]
y = y_train[0:1000]
target_names = classes

lda = LDA(n_components=2)
X_r2 = lda.fit(X, y).transform(X)

print('explained variance ratio (first two components) with LDA: %s'
% str(lda.explained_variance_ratio_))
``````

The result is :

``````explained variance ratio (first two components) with LDA: [0.64492115 0.24080238]
``````

Then I try this :

``````lda.covariance_
``````

And I obtain an error :

``````AttributeError                            Traceback (most recent call last)
<ipython-input-28-35184940aba0> in <module>
----> 1 lda.covariance_

AttributeError: 'LinearDiscriminantAnalysis' object has no attribute 'covariance_'
``````

Do you have any idea to solve that problem? Morever, if you know to create a correlation circle it would be great!

Thank you.

## 1 Answer

You have to specify that you want the covariance to be stored when you create the LDA...

To solve this:

`lda = LDA(n_components=2, store_covariance=True)`

That should do it

Cheers

EDIT: for the correlation circle see Plot a Correlation Circle in Python

• Thank you very much @qmeeus ! – Pollux Jan 14 at 14:14