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pretty_cm.py
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pretty_cm.py
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# -*- coding: utf-8 -*-
"""
plot a pretty confusion matrix with seaborn
Created on Mon Jun 25 14:17:37 2018
@author: Wagner Cipriano - wagnerbhbr - gmail - CEFETMG / MMC
REFerences:
https://www.mathworks.com/help/nnet/ref/plotconfusion.html
https://stackoverflow.com/questions/28200786/how-to-plot-scikit-learn-classification-report
https://stackoverflow.com/questions/5821125/how-to-plot-confusion-matrix-with-string-axis-rather-than-integer-in-python
https://www.programcreek.com/python/example/96197/seaborn.heatmap
https://stackoverflow.com/questions/19233771/sklearn-plot-confusion-matrix-with-labels/31720054
http://scikit-learn.org/stable/auto_examples/model_selection/plot_confusion_matrix.html#sphx-glr-auto-examples-model-selection-plot-confusion-matrix-py
Modifications copyright (C) 2021 Phongsathorn Kittiworapanya
"""
import numpy as np
import matplotlib.pyplot as plt
import matplotlib.font_manager as fm
import seaborn as sn
from pandas import DataFrame
from matplotlib.collections import QuadMesh
from sklearn.metrics import confusion_matrix
from matplotlib.colors import LinearSegmentedColormap
colors = [(0.98, 0.77, 0.75), (0.98, 0.77, 0.75)]
cm_cmap = LinearSegmentedColormap.from_list('cm_color', colors, N=1)
def get_new_fig(fn, figsize=[9,9]):
""" Init graphics """
fig1 = plt.figure(fn, figsize)
ax1 = fig1.gca() #Get Current Axis
ax1.cla() # clear existing plot
return fig1, ax1
def configcell_text_and_colors(array_df, lin, col, oText, facecolors, posi, fz, fmt, show_null_values=0):
"""
config cell text and colors
and return text elements to add and to dell
@TODO: use fmt
"""
text_add = []; text_del = [];
cell_val = array_df[lin][col]
tot_all = array_df[-1][-1]
per = (float(cell_val) / tot_all) * 100
curr_column = array_df[:,col]
ccl = len(curr_column)
#last line and/or last column
if(col == (ccl - 1)) or (lin == (ccl - 1)):
#tots and percents
if(cell_val != 0):
if(col == ccl - 1) and (lin == ccl - 1):
tot_rig = 0
for i in range(array_df.shape[0] - 1):
tot_rig += array_df[i][i]
per_ok = (float(tot_rig) / cell_val) * 100
elif(col == ccl - 1):
tot_rig = array_df[lin][lin]
per_ok = (float(tot_rig) / cell_val) * 100
elif(lin == ccl - 1):
tot_rig = array_df[col][col]
per_ok = (float(tot_rig) / cell_val) * 100
per_err = 100 - per_ok
else:
per_ok = per_err = 0
per_ok_s = ['%.2f%%'%(per_ok), '100%'] [per_ok == 100]
#text to DEL
text_del.append(oText)
#text to ADD
font_prop = fm.FontProperties(size=fz)
text_kwargs = dict(color='black', ha="center", va="center", gid='sum', fontproperties=font_prop)
lis_txt = ['%d'%(cell_val), per_ok_s, '%.2f%%'%(per_err)]
lis_kwa = [text_kwargs]
dic = text_kwargs.copy(); dic['color'] = 'g'; lis_kwa.append(dic);
dic = text_kwargs.copy(); dic['color'] = 'r'; lis_kwa.append(dic);
lis_pos = [(oText._x, oText._y-0.25), (oText._x, oText._y), (oText._x, oText._y+0.25)]
for i in range(len(lis_txt)):
newText = dict(x=lis_pos[i][0], y=lis_pos[i][1], text=lis_txt[i], kw=lis_kwa[i])
text_add.append(newText)
#set background color for sum cells (last line and last column)
carr = [0.94, 0.94, 0.94, 1.0]
if(col == ccl - 1) and (lin == ccl - 1):
carr = [0.85, 0.85, 0.85, 1.0]
facecolors[posi] = carr
else:
if(per > 0):
txt = '$\mathbf{%s}$\n%.2f%%' %(cell_val, per)
else:
# pass
if(show_null_values == 0):
txt = ''
elif(show_null_values == 1):
txt = '0'
else:
txt = '$\mathbf{0}$\n0.0%'
oText.set_text(txt)
#main diagonal
if(col == lin):
#set color of the textin the diagonal to white
oText.set_color('black')
# set background color in the diagonal to blue
facecolors[posi] = [0.76, 0.89, 0.78, 1.0]
return text_add, text_del
def insert_totals(df_cm):
""" insert total column and line (the last ones) """
sum_col = []
for c in df_cm.columns:
sum_col.append( df_cm[c].sum() )
sum_lin = []
for item_line in df_cm.iterrows():
sum_lin.append( item_line[1].sum() )
df_cm['sum_lin'] = sum_lin
sum_col.append(np.sum(sum_lin))
df_cm.loc['sum_col'] = sum_col
def plot_pretty_confusion_matrix(df_cm, annot=True, cmap=cm_cmap, fmt='.2f', fz=11,
lw=2, cbar=False, figsize=[5,5], show_null_values=2, pred_val_axis='y'):
"""
print conf matrix with default layout (like matlab)
params:
df_cm dataframe (pandas) without totals
annot print text in each cell
cmap Oranges,Oranges_r,YlGnBu,Blues,RdBu, ... see:
fz fontsize
lw linewidth
pred_val_axis where to show the prediction values (x or y axis)
'col' or 'x': show predicted values in columns (x axis) instead lines
'lin' or 'y': show predicted values in lines (y axis)
"""
if(pred_val_axis in ('col', 'x')):
xlbl = 'Predicted'
ylbl = 'Actual'
else:
xlbl = 'Actual'
ylbl = 'Predicted'
df_cm = df_cm.T
# create "Total" column
insert_totals(df_cm)
#this is for print allways in the same window
fig, ax1 = get_new_fig('Conf matrix default', figsize)
#thanks for seaborn
ax = sn.heatmap(df_cm, annot=annot, annot_kws={"size": fz}, linewidths=lw, ax=ax1,
cbar=cbar, cmap=cmap, linecolor='black', fmt=fmt)
#set ticklabels rotation
# ax.set_xticklabels(ax.get_xticklabels(), rotation = 45, fontsize = 10)
# ax.set_yticklabels(ax.get_yticklabels(), rotation = 0, fontsize = 10)
# Turn off all the ticks
for t in ax.xaxis.get_major_ticks():
t.tick1line.set_visible = False
t.tick2line.set_visible = False
for t in ax.yaxis.get_major_ticks():
t.tick1line.set_visible = False
t.tick2line.set_visible = False
#face colors list
quadmesh = ax.findobj(QuadMesh)[0]
facecolors = quadmesh.get_facecolors()
#iter in text elements
array_df = np.array( df_cm.to_records(index=False).tolist() )
text_add = []
text_del = []
posi = -1 #from left to right, bottom to top.
for t in ax.collections[0].axes.texts:
pos = np.array( t.get_position()) - [0.5,0.5]
lin = int(pos[1]); col = int(pos[0])
posi += 1
#set text
txt_res = configcell_text_and_colors(array_df, lin, col, t, facecolors, posi, fz, fmt, show_null_values)
text_add.extend(txt_res[0])
text_del.extend(txt_res[1])
#remove the old ones
for item in text_del:
item.remove()
#append the new ones
for item in text_add:
ax.text(item['x'], item['y'], item['text'], **item['kw'])
#titles and legends
ax.set_title('Confusion matrix', fontdict={"weight": "bold"})
ax.set_xlabel(xlbl, fontdict={"weight": "bold"})
ax.set_ylabel(ylbl, fontdict={"weight": "bold"})
ax.tick_params(axis=u'both', which=u'both',length=0)
ax.set_xticklabels(df_cm.columns[:-1], fontdict={"horizontalalignment": "center"})
ax.set_yticklabels(df_cm.index[:-1], fontdict={"verticalalignment": "center"})
plt.tight_layout()
plt.show()
def plot_from_confusion_matrix(cm, columns=None, annot=True, cmap=cm_cmap,
fmt='.2f', fz=11, lw=1, cbar=False, figsize=[5,5], show_null_values=2, pred_val_axis='lin'):
df_cm = DataFrame(cm, index=columns, columns=columns)
plot_pretty_confusion_matrix(df_cm, fz=fz, lw=lw, cmap=cmap, figsize=figsize, show_null_values=show_null_values, pred_val_axis=pred_val_axis)
def plot_from_data(y_test, predictions, columns=None, annot=True, cmap=cm_cmap,
fmt='.2f', fz=11, lw=1, cbar=False, figsize=[5,5], show_null_values=2, pred_val_axis='lin'):
"""
plot confusion matrix function with y_test (actual values) and predictions (predic),
whitout a confusion matrix yet
"""
#data
if(not columns):
from string import ascii_uppercase
columns = ['class %s' %(i) for i in list(ascii_uppercase)[0:len(np.unique(y_test))]]
confm = confusion_matrix(y_test, predictions)
df_cm = DataFrame(confm, index=columns, columns=columns)
plot_pretty_confusion_matrix(df_cm, fz=fz, lw=lw, cmap=cmap, figsize=figsize, show_null_values=show_null_values, pred_val_axis=pred_val_axis)
#
#TEST functions
#
def _test_cm():
#test function with confusion matrix done
cm = np.array( [[13, 0, 1, 0, 2, 0],
[ 0, 50, 2, 0, 10, 0],
[ 0, 13, 16, 0, 0, 3],
[ 0, 0, 0, 13, 1, 0],
[ 0, 40, 0, 1, 15, 0],
[ 0, 0, 0, 0, 0, 20]])
plot_from_confusion_matrix(cm, figsize=[6,6], columns=["Dog", "Cat", "Potato", "Car", "IU <3", "Dolphin"])
def _test_data_class():
""" test function with y_test (actual values) and predictions (predic) """
#data
y_test = np.array([1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5])
predic = np.array([1,2,4,3,5, 1,2,4,3,5, 1,2,3,4,4, 1,4,3,4,5, 1,2,4,4,5, 1,2,4,4,5, 1,2,4,4,5, 1,2,4,4,5, 1,2,3,3,5, 1,2,3,3,5, 1,2,3,4,4, 1,2,3,4,1, 1,2,3,4,1, 1,2,3,4,1, 1,2,4,4,5, 1,2,4,4,5, 1,2,4,4,5, 1,2,4,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5, 1,2,3,4,5])
"""
Examples to validate output (confusion matrix plot)
actual: 5 and prediction 1 >> 3
actual: 2 and prediction 4 >> 1
actual: 3 and prediction 4 >> 10
"""
plot_from_data(y_test, predic)
if __name__ == '__main__':
# print('_test_data_class: test function with y_test (actual values) and predictions (predic)')
_test_data_class()
# _test_cm()