I am trying to plot the hyperplane for the model I trained with LinearSVC and sklearn. Note that I am working with natural languages; before fitting the model I extracted features with CountVectorizer and TfidfTransformer.

Here the classifier:

```
from sklearn.svm import LinearSVC
from sklearn import svm
clf = LinearSVC(C=0.2).fit(X_train_tf, y_train)
```

Then I tried to plot as suggested on the Scikit-learn website:

```
# get the separating hyperplane
w = clf.coef_[0]
a = -w[0] / w[1]
xx = np.linspace(-5, 5)
yy = a * xx - (clf.intercept_[0]) / w[1]
# plot the parallels to the separating hyperplane that pass through the
# support vectors
b = clf.support_vectors_[0]
yy_down = a * xx + (b[1] - a * b[0])
b = clf.support_vectors_[-1]
yy_up = a * xx + (b[1] - a * b[0])
# plot the line, the points, and the nearest vectors to the plane
plt.plot(xx, yy, 'k-')
plt.plot(xx, yy_down, 'k--')
plt.plot(xx, yy_up, 'k--')
plt.scatter(clf.support_vectors_[:, 0], clf.support_vectors_[:, 1],
s=80, facecolors='none')
plt.scatter(X[:, 0], X[:, 1], c=Y, cmap=plt.cm.Paired)
plt.axis('tight')
plt.show()
```

This example uses svm.SVC(kernel='linear'), while my classifier is LinearSVC. Therefore, I get this error:

```
AttributeError Traceback (most recent call last)
<ipython-input-39-6e231c530d87> in <module>()
7 # plot the parallels to the separating hyperplane that pass through the
8 # support vectors
----> 9 b = clf.support_vectors_[0]
1 yy_down = a * xx + (b[1] - a * b[0])
11 b = clf.support_vectors_[-1]
AttributeError: 'LinearSVC' object has no attribute 'support_vectors_'
```

How can I successfully plot the hyperplan of my LinearSVC classifier?

"Note that LinearSVC does not accept keyword kernel, as this is assumed to be linear. It also lacks some of the members of SVC and NuSVC, likeI don't know much about the usage of LinearSVC, but I guess you could rephrase the question to make it clear that you want a similar output as`support_`

."`SVC`

, but use`LinearSVC`

instead, which does not have a`'support_vectors_'`

attribute. This way people don't need to dig deep to find the obvious. – ImportanceOfBeingErnest Oct 1 '17 at 9:44