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Python - 如何使用 python pandas crosstab 创建混淆矩阵统计

转载 作者:太空宇宙 更新时间:2023-11-04 09:58:58 26 4
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以下是我的 Phyton 脚本,它生成以下混淆矩阵

enter image description here

# /usr/bin/python -tt

from __future__ import division
import csv
import os
import pandas as pd


#----------------------------------------------------------------------------
def get_tcp_variant(filepath):
def tcp_congestion_variant(beta):
print('predict({}; abs({})'.format(beta, abs(beta)))
if (beta>0.61 and beta<=0.75):
return "Cubic"
if (beta>=0.45 and beta<0.61):
return "Reno"
if (beta>0.75 and beta<=0.99):
return "BIC"

return "None"
#----------------------------------------------------------------------------

with open(filepath, "r") as csvfile:
ff = csv.reader(csvfile)

beta_values = []
cwnd_loss = 0
for current_cwnd, col2 in ff:
value = int(current_cwnd)
if value >= cwnd_loss:
cwnd_loss = value
else:
beta_value = int(current_cwnd)/cwnd_loss
beta_value=(round(beta_value,2))
beta_values.append(beta_value)
cwnd_loss = value

return tcp_congestion_variant(sum(beta_values)/len(beta_values))

print ("*********************************************")
print ("Confusion matrix ")
print ("*********************************************")
matrix = {'actual':[], 'predict':[]}
path = './csv_files'

#----------------------------------------------------------------------------
def get_variant_predict(filename):
if 'cubic' in filename:
return 'Cubic'
if 'reno' in filename:
return "Reno"
if 'bic' in filename:
return "BIC"
else:
return filename [0]
#----------------------------------------------------------------------------

for filename in os.listdir(path):
#matrix['predict'].append(filename[:4])
matrix['predict'].append(get_variant_predict(filename))
matrix['actual'].append(get_tcp_variant(os.path.join(path, filename)))

data_frame = pd.crosstab(pd.Series(matrix['actual'], name='Actual'),
pd.Series(matrix['predict'], name=' Predicted'))
#,margins=True) # To add "All"
print (" ")

print(data_frame)

我们如何添加混淆矩阵统计信息(例如:accuracyPython pandas crosstab?如果我们手动添加,accuracy将是 (4+24+21)/(4+24+4+1+1+21) - 但我想自动生成统计信息

最佳答案

检查一下 sklearn.metrics.classification_report

print(classification_report(matrix['actual'], 
matrix['predict'],
target_names=['BIC', 'Cubic', 'Reno']))

关于Python - 如何使用 python pandas crosstab 创建混淆矩阵统计,我们在Stack Overflow上找到一个类似的问题: https://stackoverflow.com/questions/44634023/

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