# Multiclass classification going wrong with Python Scikit-learn

I'm trying to realize a little comparative between the classifiers available in Scikit-learn. According to this page, all classifiers should work except the svm one.

This operation is implemented as follows :

clf['bayes'] = OneVsRestClassifier(MultinomialNB(
clf['lda'] = OneVsRestClassifier(LDA())
clf['decision tree'] = OneVsRestClassifier(DecisionTreeClassifier())
clf['rdc'] = OneVsRestClassifier(RandomForestClassifier())

y_supposes = {}
precision = {}
for classifier in clf:
clf[classifier].fit(x_train, y_train)
y_supposes[classifier] = clf[classifier].predict(x_test)
precision[classifier] = calcul_precision(y_supposes[classifier], y_test)


The trouble is, the only working classifier is the bayesclassifier.

The other give me this error when I try to call classifier['rdc'].fit(x_train, y_train) :

Traceback (most recent call last):
File "<stdin>", line 1, in <module>
File "C:\Python27\lib\site-packages\sklearn\multiclass.py", line 201, in fit
n_jobs=self.n_jobs)
File "C:\Python27\lib\site-packages\sklearn\multiclass.py", line 92, in fit_ov
r
for i in range(Y.shape[1]))
File "C:\Python27\lib\site-packages\sklearn\externals\joblib\parallel.py", lin
e 517, in __call__
self.dispatch(function, args, kwargs)
File "C:\Python27\lib\site-packages\sklearn\externals\joblib\parallel.py", lin
e 312, in dispatch
job = ImmediateApply(func, args, kwargs)
File "C:\Python27\lib\site-packages\sklearn\externals\joblib\parallel.py", lin
e 136, in __init__
self.results = func(*args, **kwargs)
File "C:\Python27\lib\site-packages\sklearn\multiclass.py", line 61, in _fit_b
inary
estimator.fit(X, y)
File "C:\Python27\lib\site-packages\sklearn\ensemble\forest.py", line 257, in
fit
check_ccontiguous=True)
File "C:\Python27\lib\site-packages\sklearn\utils\validation.py", line 220, in
check_arrays
raise TypeError('A sparse matrix was passed, but dense '
TypeError: A sparse matrix was passed, but dense data is required. Use X.toarray
() to convert to a dense numpy array.


I'd like to add that clf['rdc'].fit(x_train.toarray, y_train) (as indicated in the error message) also gives me an error.

## Edit : New developments

I think the trouble might come from the type of x_train. I compute it as follows :

x = [{f1 : a, ... fn : jo}, ..., {f3 : 5}]
y_train = [('label1', ), ..., ('labelZ', 'label72')]
x_train = DictVectorizer.fit_transform(x)

type(x_train) ==  <class 'scipy.sparse.csr.csr_matrix'>


I also tried this approach : MultinomialNB.fit(np.array(x), np.array(y)) which gives me a new error message :

Traceback (most recent call last):
File "<stdin>", line 1, in <module>
File "C:\Python27\lib\site-packages\sklearn\naive_bayes.py", line 308, in fit
X = X.astype(np.float)
TypeError: float() argument must be a string or a number

-

As the error message quite clearly indicates, you're passing a sparse matrix to an estimator that doesn't support those. Of the four classifiers you test, only MultinomialNB supports sparse matrix inputs. For decision trees and random forests, sparse matrix support is work in progress.
As for np.array(x), that doesn't do what you think it does. To convert a sparse matrix to a dense array, use x.toarray(), or just pass sparse=False to the DictVectorizer constructor.