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


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

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)



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)
    tick_marks = np.arange(len(target_names))
    plt.xticks(tick_marks, target_names, rotation=45)
    plt.yticks(tick_marks, target_names)

    width, height = cm.shape

    for x in xrange(width):
        for y in xrange(height):
            plt.annotate(str(cm[x][y]), xy=(y, x), 
    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

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

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