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Plot confusion matrix#
plots a confusion matrix for a single classifier model.
# Author: L.Kouadio
# Licence: BSD-3-clause
- Import the required models and fetch a an Ababoost model
for instance then plot the confusion metric
import matplotlib.pyplot as plt
plt.style.use ('classic')
from watex.datasets import fetch_data
from watex.exlib.sklearn import train_test_split
from watex.models import pModels
from watex.utils.plotutils import plot_confusion_matrix
# split the data . Note that fetch_data output X and y
X, Xt, y, yt = train_test_split (* fetch_data ('bagoue analysed'), test_size =.25 )
# train the model with the best estimator
pmo = pModels (model ='ada' )
pmo.fit(X, y )
print(pmo.estimator_ )
AdaBoostClassifier(estimator=DecisionTreeClassifier(criterion='entropy',
max_depth=7),
learning_rate=0.06)
Predict the score using under the hood the best estimator for adaboost classifier
ypred = pmo.predict(Xt)
# now plot the score
plot_confusion_matrix (yt , ypred )

array([[24, 6, 0, 0],
[ 2, 24, 4, 0],
[ 1, 3, 6, 2],
[ 0, 2, 2, 10]])
Total running time of the script: (0 minutes 0.237 seconds)