欢迎您访问程序员文章站本站旨在为大家提供分享程序员计算机编程知识!
您现在的位置是: 首页  >  IT编程

Python绘制KS曲线的实现方法

程序员文章站 2024-02-03 11:38:22
python实现ks曲线,相关使用方法请参考上篇博客-r语言实现ks曲线 代码如下: ####################### plotks ######...

python实现ks曲线,相关使用方法请参考上篇博客-r语言实现ks曲线

代码如下:

####################### plotks ##########################
def plotks(preds, labels, n, asc):
  
  # preds is score: asc=1
  # preds is prob: asc=0
  
  pred = preds # 预测值
  bad = labels # 取1为bad, 0为good
  ksds = dataframe({'bad': bad, 'pred': pred})
  ksds['good'] = 1 - ksds.bad
  
  if asc == 1:
    ksds1 = ksds.sort_values(by=['pred', 'bad'], ascending=[true, true])
  elif asc == 0:
    ksds1 = ksds.sort_values(by=['pred', 'bad'], ascending=[false, true])
  ksds1.index = range(len(ksds1.pred))
  ksds1['cumsum_good1'] = 1.0*ksds1.good.cumsum()/sum(ksds1.good)
  ksds1['cumsum_bad1'] = 1.0*ksds1.bad.cumsum()/sum(ksds1.bad)
  
  if asc == 1:
    ksds2 = ksds.sort_values(by=['pred', 'bad'], ascending=[true, false])
  elif asc == 0:
    ksds2 = ksds.sort_values(by=['pred', 'bad'], ascending=[false, false])
  ksds2.index = range(len(ksds2.pred))
  ksds2['cumsum_good2'] = 1.0*ksds2.good.cumsum()/sum(ksds2.good)
  ksds2['cumsum_bad2'] = 1.0*ksds2.bad.cumsum()/sum(ksds2.bad)
  
  # ksds1 ksds2 -> average
  ksds = ksds1[['cumsum_good1', 'cumsum_bad1']]
  ksds['cumsum_good2'] = ksds2['cumsum_good2']
  ksds['cumsum_bad2'] = ksds2['cumsum_bad2']
  ksds['cumsum_good'] = (ksds['cumsum_good1'] + ksds['cumsum_good2'])/2
  ksds['cumsum_bad'] = (ksds['cumsum_bad1'] + ksds['cumsum_bad2'])/2
  
  # ks
  ksds['ks'] = ksds['cumsum_bad'] - ksds['cumsum_good']
  ksds['tile0'] = range(1, len(ksds.ks) + 1)
  ksds['tile'] = 1.0*ksds['tile0']/len(ksds['tile0'])
  
  qe = list(np.arange(0, 1, 1.0/n))
  qe.append(1)
  qe = qe[1:]
  
  ks_index = series(ksds.index)
  ks_index = ks_index.quantile(q = qe)
  ks_index = np.ceil(ks_index).astype(int)
  ks_index = list(ks_index)
  
  ksds = ksds.loc[ks_index]
  ksds = ksds[['tile', 'cumsum_good', 'cumsum_bad', 'ks']]
  ksds0 = np.array([[0, 0, 0, 0]])
  ksds = np.concatenate([ksds0, ksds], axis=0)
  ksds = dataframe(ksds, columns=['tile', 'cumsum_good', 'cumsum_bad', 'ks'])
  
  ks_value = ksds.ks.max()
  ks_pop = ksds.tile[ksds.ks.idxmax()]
  print ('ks_value is ' + str(np.round(ks_value, 4)) + ' at pop = ' + str(np.round(ks_pop, 4)))
  
  # chart
  plt.plot(ksds.tile, ksds.cumsum_good, label='cum_good',
             color='blue', linestyle='-', linewidth=2)
             
  plt.plot(ksds.tile, ksds.cumsum_bad, label='cum_bad',
            color='red', linestyle='-', linewidth=2)
            
  plt.plot(ksds.tile, ksds.ks, label='ks',
          color='green', linestyle='-', linewidth=2)
            
  plt.axvline(ks_pop, color='gray', linestyle='--')
  plt.axhline(ks_value, color='green', linestyle='--')
  plt.axhline(ksds.loc[ksds.ks.idxmax(), 'cumsum_good'], color='blue', linestyle='--')
  plt.axhline(ksds.loc[ksds.ks.idxmax(),'cumsum_bad'], color='red', linestyle='--')
  plt.title('ks=%s ' %np.round(ks_value, 4) + 
        'at pop=%s' %np.round(ks_pop, 4), fontsize=15)
  

  return ksds
####################### over ##########################

作图效果如下:

Python绘制KS曲线的实现方法

以上就是本文的全部内容,希望对大家的学习有所帮助,也希望大家多多支持。