0

In my sklearn logistic regression model, I obtained a confusion matrix using metrics.confusion_matrix command. The array looks like this

array([[51,  0],
   [26,  0]])

Ignoring the fact that the model did pretty bad, I am trying to understand what is the best way to tabulate this matrix in pretty way

I am trying to use tabulate package and this code partially works for me

print tabulate(cm,headers=['Pred True', 'Pred False']) 

as it gives output

  Pred True    Pred False
-----------  ------------
     51             0
     26             0

EDIT

TO insert row names, I realized inserting elements rather than zip would help

cm_list=cm.tolist()
cm_list[0].insert(0,'Real True')
cm_list[1].insert(0,'Real False')
print tabulate(cm_list,headers=['Real/Pred','Pred True', 'Pred False'])

as it gives

Real/Pred      Pred True    Pred False
-----------  -----------  ------------
Real True             51             0
Real False            26             0

However, would still like to know if there is a quicker or alternate way of beautifying confusion matrix. (I found some plotting examples on web but I do not need that)

Thanks,

4

Have you considered creating a figure rather than a table? Adapting some code from a scikit-learn example you can get a decent looking figure which shows what you want.

import numpy as np
from matplotlib import pyplot as plt

def plot_confusion_matrix(cm, target_names, title='Confusion matrix', cmap=plt.cm.Blues):
    plt.imshow(cm, interpolation='nearest', cmap=cmap)
    plt.title(title)
    plt.colorbar()
    tick_marks = np.arange(len(target_names))
    plt.xticks(tick_marks, target_names, rotation=45)
    plt.yticks(tick_marks, target_names)
    plt.tight_layout()

    width, height = cm.shape

    for x in xrange(width):
        for y in xrange(height):
            plt.annotate(str(cm[x][y]), xy=(y, x), 
                        horizontalalignment='center',
                        verticalalignment='center')
    plt.ylabel('True label')
    plt.xlabel('Predicted label')

cm = np.array([[13,  0,  0],[ 0, 10,  6],[ 0,  0,  9]])
plot_confusion_matrix(cm, ['A', 'B', 'C'])

matplotlib confusion matrix plot

  • Looks good and yes I did consider that but I just thought that is an overkill for my need. However, your plot is much cleaner and the face that numbers appear in the boxes makes it an attractive alternative – PagMax Feb 24 '16 at 12:31
  • Ah sorry I didn't realise you'd looked at this. I always prefer a visual representation, it scales much better than a table which can be overwhelming with large number of labels. – piman314 Feb 24 '16 at 14:03
2

The nltk library includes a confusion matrix that is simple to use and produces a nicer output than scikit-learn:

from nltk import ConfusionMatrix
print(ConfusionMatrix(list(y_true_values), list(y_predicted_values)))

You can see an example of the output here. Note that I wrapped y_true_values and y_predicted_values in the list() function because ConfusionMatrix expects Python lists rather than the NumPy arrays output by scikit-learn.

Alternatively, the mlxtend library includes a function to plot a confusion matrix, documented here.

  • Thanks @kevin, I will look into that.. – PagMax Feb 25 '16 at 4:27

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.