2121
2222
2323import numpy as np
24- from scipy .sparse import issparse
2524
2625from .base import BaseEstimator , ClassifierMixin
2726from .preprocessing import binarize
@@ -141,7 +140,7 @@ class GaussianNB(BaseNB):
141140 ----------
142141 class_count_ : array, shape (n_classes,)
143142 number of training samples observed in each class.
144-
143+
145144 class_prior_ : array, shape (n_classes,)
146145 probability of each class.
147146
@@ -150,10 +149,10 @@ class labels known to the classifier
150149
151150 epsilon_ : float
152151 absolute additive value to variances
153-
152+
154153 sigma_ : array, shape (n_classes, n_features)
155154 variance of each feature per class
156-
155+
157156 theta_ : array, shape (n_classes, n_features)
158157 mean of each feature per class
159158
@@ -699,7 +698,7 @@ class MultinomialNB(BaseDiscreteNB):
699698 coef_ : array, shape (n_classes, n_features)
700699 Mirrors ``feature_log_prob_`` for interpreting MultinomialNB
701700 as a linear model.
702-
701+
703702 feature_count_ : array, shape (n_classes, n_features)
704703 Number of samples encountered for each (class, feature)
705704 during fitting. This value is weighted by the sample weight when
@@ -712,7 +711,7 @@ class MultinomialNB(BaseDiscreteNB):
712711 intercept_ : array, shape (n_classes, )
713712 Mirrors ``class_log_prior_`` for interpreting MultinomialNB
714713 as a linear model.
715-
714+
716715 n_features_ : int
717716 Number of features of each sample.
718717
@@ -806,14 +805,14 @@ class ComplementNB(BaseDiscreteNB):
806805 class_log_prior_ : array, shape (n_classes, )
807806 Smoothed empirical log probability for each class. Only used in edge
808807 case with a single class in the training set.
809-
808+
810809 classes_ : array, shape (n_classes,)
811810 Class labels known to the classifier
812-
811+
813812 feature_all_ : array, shape (n_features,)
814813 Number of samples encountered for each feature during fitting. This
815814 value is weighted by the sample weight when provided.
816-
815+
817816 feature_count_ : array, shape (n_classes, n_features)
818817 Number of samples encountered for each (class, feature) during fitting.
819818 This value is weighted by the sample weight when provided.
@@ -822,7 +821,7 @@ class ComplementNB(BaseDiscreteNB):
822821 Empirical weights for class complements.
823822
824823 n_features_ : int
825- Number of features of each sample.
824+ Number of features of each sample.
826825
827826 Examples
828827 --------
@@ -914,18 +913,18 @@ class BernoulliNB(BaseDiscreteNB):
914913 class_count_ : array, shape = [n_classes]
915914 Number of samples encountered for each class during fitting. This
916915 value is weighted by the sample weight when provided.
917-
916+
918917 class_log_prior_ : array, shape = [n_classes]
919918 Log probability of each class (smoothed).
920919
921920 classes_ : array, shape (n_classes,)
922921 Class labels known to the classifier
923-
922+
924923 feature_count_ : array, shape = [n_classes, n_features]
925924 Number of samples encountered for each (class, feature)
926925 during fitting. This value is weighted by the sample weight when
927926 provided.
928-
927+
929928 feature_log_prob_ : array, shape = [n_classes, n_features]
930929 Empirical log probability of features given a class, P(x_i|y).
931930
@@ -1043,18 +1042,18 @@ class CategoricalNB(BaseDiscreteNB):
10431042 class_count_ : array, shape (n_classes,)
10441043 Number of samples encountered for each class during fitting. This
10451044 value is weighted by the sample weight when provided.
1046-
1045+
10471046 class_log_prior_ : array, shape (n_classes, )
10481047 Smoothed empirical log probability for each class.
10491048
10501049 classes_ : array, shape (n_classes,)
10511050 Class labels known to the classifier
1052-
1051+
10531052 feature_log_prob_ : list of arrays, len n_features
10541053 Holds arrays of shape (n_classes, n_categories of respective feature)
10551054 for each feature. Each array provides the empirical log probability
10561055 of categories given the respective feature and class, ``P(x_i|y)``.
1057-
1056+
10581057 n_features_ : int
10591058 Number of features of each sample.
10601059
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