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自动分箱函数python 分箱 python

python用卡方检验,自动分箱,结果是否可靠有待验证

def calc_chiSquare(sampleSet, feature, target):

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'''

计算某个特征每种属性值的卡方统计量

params:

    sampleSet: 样本集

    feature: 目标特征

    target: 目标Y值 (0或1) Y值为二分类变量

return:

    卡方统计量dataframe

    feature: 特征名称

    act_target_cnt: 实际坏样本数

    expected_target_cnt:期望坏样本数

    chi_square:卡方统计量

'''

# 计算样本期望频率

target_cnt = sampleSet[target].sum()

sample_cnt = len(sampleSet[target])

expected_ratio = target_cnt * 1.0/sample_cnt

# 对变量按属性值从大到小排序

df = sampleSet[[feature, target]]

col_value = list(set(df[feature])) 

# 计算每一个属性值对应的卡方统计量等信息

chi_list = []; target_list = []; expected_target_list = []

for value in col_value:

    df_target_cnt = df.loc[df[feature] == value, target].sum()

    df_cnt = len(df.loc[df[feature] == value, target])

    expected_target_cnt = df_cnt * expected_ratio

    chi_square = (df_target_cnt - expected_target_cnt)**2 / expected_target_cnt

    chi_list.append(chi_square)

    target_list.append(df_target_cnt)

    expected_target_list.append(expected_target_cnt)

# 结果输出到dataframe, 对应字段为特征属性值, 卡方统计量, 实际坏样本量, 期望坏样本量

chi_stats = pd.DataFrame({feature:col_value, 'chi_square':chi_list,

                          'act_target_cnt':target_list, 'expected_target_cnt':expected_target_list})

return chi_stats[[feature, 'act_target_cnt', 'expected_target_cnt', 'chi_square']]

def chiMerge_maxInterval(chi_stats, feature, maxInterval=5):

'''

卡方分箱合并--最大区间限制法

params:

    chi_stats: 卡方统计量dataframe

    feature: 目标特征

    maxInterval:最大分箱数阈值

return:

    卡方合并结果dataframe, 特征分割split_list

'''

group_cnt = len(chi_stats)

split_list = [chi_stats[feature].min()]

# 如果变量区间超过最大分箱限制,则根据合并原则进行合并

while(group_cnt maxInterval):

    min_index = chi_stats[chi_stats['chi_square']==chi_stats['chi_square'].min()].index.tolist()[0]

    # 如果分箱区间在最前,则向下合并

    if min_index == 0:

        chi_stats = merge_chiSquare(chi_stats, min_index+1, min_index)

    # 如果分箱区间在最后,则向上合并

    elif min_index == group_cnt-1:

        chi_stats = merge_chiSquare(chi_stats, min_index-1, min_index)

    # 如果分箱区间在中间,则判断与其相邻的最小卡方的区间,然后进行合并

    else:

        if chi_stats.loc[min_index-1, 'chi_square'] chi_stats.loc[min_index+1, 'chi_square']:

            chi_stats = merge_chiSquare(chi_stats, min_index, min_index+1)

        else:

            chi_stats = merge_chiSquare(chi_stats, min_index-1, min_index)

    group_cnt = len(chi_stats)

chiMerge_result = chi_stats

split_list.extend(chiMerge_result[feature].tolist())

return chiMerge_result, split_list

def chiMerge_minChiSquare(chi_stats, feature, dfree=4, cf=0.1, maxInterval=5):

'''

卡方分箱合并--卡方阈值法

params:

    chi_stats: 卡方统计量dataframe

    feature: 目标特征

    maxInterval: 最大分箱数阈值, default 5

    dfree: 自由度, 最大分箱数-1, default 4

    cf: 显著性水平, default 10%

return:

    卡方合并结果dataframe, 特征分割split_list

'''

threshold = get_chiSquare_distuibution(dfree, cf)

min_chiSquare = chi_stats['chi_square'].min()

group_cnt = len(chi_stats)

split_list = [chi_stats[feature].min()]

# 如果变量区间的最小卡方值小于阈值,则继续合并直到最小值大于等于阈值

while(min_chiSquare threshold and group_cnt maxInterval):

    min_index = chi_stats[chi_stats['chi_square']==chi_stats['chi_square'].min()].index.tolist()[0]

    # 如果分箱区间在最前,则向下合并

    if min_index == 0:

        chi_stats = merge_chiSquare(chi_stats, min_index+1, min_index)

    # 如果分箱区间在最后,则向上合并

    elif min_index == group_cnt-1:

        chi_stats = merge_chiSquare(chi_stats, min_index-1, min_index)

    # 如果分箱区间在中间,则判断与其相邻的最小卡方的区间,然后进行合并

    else:

        if chi_stats.loc[min_index-1, 'chi_square'] chi_stats.loc[min_index+1, 'chi_square']:

            chi_stats = merge_chiSquare(chi_stats, min_index, min_index+1)

        else:

            chi_stats = merge_chiSquare(chi_stats, min_index-1, min_index)

    min_chiSquare = chi_stats['chi_square'].min()

    group_cnt = len(chi_stats)

chiMerge_result = chi_stats

split_list.extend(chiMerge_result[feature].tolist())

return chiMerge_result, split_list

def get_chiSquare_distuibution(dfree=4, cf=0.1):

'''

根据自由度和置信度得到卡方分布和阈值

params:

    dfree: 自由度, 最大分箱数-1, default 4

    cf: 显著性水平, default 10%

return:

    卡方阈值

'''

percents = [0.95, 0.90, 0.5, 0.1, 0.05, 0.025, 0.01, 0.005]

df = pd.DataFrame(np.array([chi2.isf(percents, df=i) for i in range(1, 30)]))

df.columns = percents

df.index = df.index+1

# 显示小数点后面数字

pd.set_option('precision', 3)

return df.loc[dfree, cf]

def merge_chiSquare(chi_result, index, mergeIndex, a = 'expected_target_cnt',

                b = 'act_target_cnt', c = 'chi_square'):

'''

params:

    chi_result: 待合并卡方数据集

    index: 合并后的序列号

    mergeIndex: 需合并的区间序号

    a, b, c: 指定合并字段

return:

    分箱合并后的卡方dataframe

'''

chi_result.loc[mergeIndex, a] = chi_result.loc[mergeIndex, a] + chi_result.loc[index, a]

chi_result.loc[mergeIndex, b] = chi_result.loc[mergeIndex, b] + chi_result.loc[index, b]

chi_result.loc[mergeIndex, c] = (chi_result.loc[mergeIndex, b] - chi_result.loc[mergeIndex, a])**2 /chi_result.loc[mergeIndex, a]

chi_result = chi_result.drop([index])

chi_result = chi_result.reset_index(drop=True)

return chi_result

for col in bin_col:

chi_stats = calc_chiSquare(exp_f_data_label_dr, col, 'label')

chiMerge_result, split_list = chiMerge_maxInterval(chi_stats, col, maxInterval=5)

print(col, 'feature maybe split like this:', split_list)

快速分箱方法

2018.08.02

R语言中有smbining可以进行最优分箱,python中分箱如果既要考虑箱体个数,分箱后信息量大小,也要考虑单调性等其他因素。

这里给出一种简单的通过IV值来选择如果分箱的方法。

下面是按照分位数来分的,还可以按照卡房分箱,决策树分箱等。

参照toad(由厚本金融开发的较标准的评分卡开发开源包)的分箱方式。

python 有没有smbinning

R包有 smbinning CRAN - Package smbinning

SAS中 这本 信用风险评分卡研究 (豆瓣) P140 有提及 SAS 实现自动分箱的宏,SAS代码在书本的附录。

还有这里讲解了决策树的三个处理方法,自动分箱的原理基本就是利用决策树做单变量的分支 Decision Tree Algorithms !

如何在python中实现数据的最优分箱

Monotonic Binning with Python

Monotonic binning is a data preparation technique widely used in scorecard development and is usually implemented with SAS. Below is an attempt to do the monotonic binning with python.

Python Code:

# import packages

import pandas as pd

import numpy as np

import scipy.stats.stats as stats

# import data

data = pd.read_csv("/home/liuwensui/Documents/data/accepts.csv", sep = ",", header = 0)

# define a binning function

def mono_bin(Y, X, n = 20):

# fill missings with median

X2 = X.fillna(np.median(X))

r = 0

while np.abs(r) 1:

d1 = pd.DataFrame({"X": X2, "Y": Y, "Bucket": pd.qcut(X2, n)})

d2 = d1.groupby('Bucket', as_index = True)

r, p = stats.spearmanr(d2.mean().X, d2.mean().Y)

n = n - 1

d3 = pd.DataFrame(d2.min().X, columns = ['min_' + X.name])

d3['max_' + X.name] = d2.max().X

d3[Y.name] = d2.sum().Y

d3['total'] = d2.count().Y

d3[Y.name + '_rate'] = d2.mean().Y

d4 = (d3.sort_index(by = 'min_' + X.name)).reset_index(drop = True)

print "=" * 60

print d4

mono_bin(data.bad, data.ltv)

mono_bin(data.bad, data.bureau_score)

mono_bin(data.bad, data.age_oldest_tr)

mono_bin(data.bad, data.tot_tr)

mono_bin(data.bad, data.tot_income)

Output:

============================================================

min_ltv max_ltv bad total bad_rate

0 0 83 88 884 0.099548

1 84 92 137 905 0.151381

2 93 98 175 851 0.205640

3 99 102 173 814 0.212531

4 103 108 194 821 0.236297

5 109 116 194 769 0.252276

6 117 176 235 793 0.296343

============================================================

min_bureau_score max_bureau_score bad total bad_rate

0 443 630 325 747 0.435074

1 631 655 242 721 0.335645

2 656 676 173 721 0.239945

3 677 698 245 1059 0.231350

4 699 709 64 427 0.149883

5 710 732 73 712 0.102528

6 733 763 53 731 0.072503

7 764 848 21 719 0.029207

============================================================

min_age_oldest_tr max_age_oldest_tr bad total bad_rate

0 1 59 319 987 0.323202

1 60 108 235 975 0.241026

2 109 142 282 1199 0.235196

3 143 171 142 730 0.194521

4 172 250 125 976 0.128074

5 251 588 93 970 0.095876

============================================================

min_tot_tr max_tot_tr bad total bad_rate

0 0 8 378 1351 0.279793

1 9 13 247 1025 0.240976

2 14 18 240 1185 0.202532

3 19 25 165 1126 0.146536

4 26 77 166 1150 0.144348

============================================================

min_tot_income max_tot_income bad total bad_rate

0 0.00 2000.00 323 1217 0.265407

1 2002.00 2916.67 259 1153 0.224631

2 2919.00 4000.00 226 1150 0.196522

3 4001.00 5833.33 231 1186 0.194772

4 5833.34 8147166.66 157 1131 0.138815

python最优分箱中woe计算(求大圣)

list =[None,None,None,None,"a","b","c",None,"d",12,None,2,4,5,4] list = list[4:] len(list)11 list['a', 'b', 'c', None, 'd', 12, None, 2, 4, 5, 4]#如果你的list 格式是相同的 比如前面4个都是None,这个格式是固定的,那么切片很容易解决


文章标题:自动分箱函数python 分箱 python
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