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有没有一种方便的方法来计算序列或一维 numpy 数组的百分位数?

我正在寻找类似于 Excel 的百分位函数的东西。

我查看了 NumPy 的统计参考,但找不到这个。我能找到的只是中位数(第 50 个百分位数),但没有更具体的东西。

4

12 回答 12

351

您可能对SciPy Stats包感兴趣。它具有您所追求的百分位数功能和许多其他统计信息。

percentile() 也可以使用numpy

import numpy as np
a = np.array([1,2,3,4,5])
p = np.percentile(a, 50) # return 50th percentile, e.g median.
print p
3.0

这张票让我相信他们不会percentile()很快融入 numpy。

于 2010-03-03T20:24:34.573 回答
83

顺便说一句,百分位函数有一个纯 Python 实现,以防万一不想依赖 scipy。该函数复制如下:

## {{{ http://code.activestate.com/recipes/511478/ (r1)
import math
import functools

def percentile(N, percent, key=lambda x:x):
    """
    Find the percentile of a list of values.

    @parameter N - is a list of values. Note N MUST BE already sorted.
    @parameter percent - a float value from 0.0 to 1.0.
    @parameter key - optional key function to compute value from each element of N.

    @return - the percentile of the values
    """
    if not N:
        return None
    k = (len(N)-1) * percent
    f = math.floor(k)
    c = math.ceil(k)
    if f == c:
        return key(N[int(k)])
    d0 = key(N[int(f)]) * (c-k)
    d1 = key(N[int(c)]) * (k-f)
    return d0+d1

# median is 50th percentile.
median = functools.partial(percentile, percent=0.5)
## end of http://code.activestate.com/recipes/511478/ }}}
于 2010-05-02T11:46:20.370 回答
35
import numpy as np
a = [154, 400, 1124, 82, 94, 108]
print np.percentile(a,95) # gives the 95th percentile
于 2013-06-12T07:45:24.577 回答
26

这是没有 numpy 的方法,仅使用 python 来计算百分位数。

import math

def percentile(data, perc: int):
    size = len(data)
    return sorted(data)[int(math.ceil((size * perc) / 100)) - 1]

percentile([10.0, 9.0, 8.0, 7.0, 6.0, 5.0, 4.0, 3.0, 2.0, 1.0], 90)
# 9.0
percentile([142, 232, 290, 120, 274, 123, 146, 113, 272, 119, 124, 277, 207], 50)
# 146
于 2013-03-23T16:35:03.127 回答
13

我通常看到的百分位数的定义期望结果是提供的列表中的值,在该列表下面找到 P 百分比的值......这意味着结果必须来自集合,而不是集合元素之间的插值。为此,您可以使用更简单的函数。

def percentile(N, P):
    """
    Find the percentile of a list of values

    @parameter N - A list of values.  N must be sorted.
    @parameter P - A float value from 0.0 to 1.0

    @return - The percentile of the values.
    """
    n = int(round(P * len(N) + 0.5))
    return N[n-1]

# A = (1, 2, 3, 4, 5, 6, 7, 8, 9, 10)
# B = (15, 20, 35, 40, 50)
#
# print percentile(A, P=0.3)
# 4
# print percentile(A, P=0.8)
# 9
# print percentile(B, P=0.3)
# 20
# print percentile(B, P=0.8)
# 50

如果您希望从提供的列表中获取 P 百分比值或低于该值的值,请使用以下简单修改:

def percentile(N, P):
    n = int(round(P * len(N) + 0.5))
    if n > 1:
        return N[n-2]
    else:
        return N[0]

或者使用@ijustlovemath 建议的简化:

def percentile(N, P):
    n = max(int(round(P * len(N) + 0.5)), 2)
    return N[n-2]
于 2011-09-18T20:05:11.607 回答
13

开始Python 3.8,标准库附带了quantiles作为statistics模块一部分的函数:

from statistics import quantiles

quantiles([1, 2, 3, 4, 5], n=100)
# [0.06, 0.12, 0.18, 0.24, 0.3, 0.36, 0.42, 0.48, 0.54, 0.6, 0.66, 0.72, 0.78, 0.84, 0.9, 0.96, 1.02, 1.08, 1.14, 1.2, 1.26, 1.32, 1.38, 1.44, 1.5, 1.56, 1.62, 1.68, 1.74, 1.8, 1.86, 1.92, 1.98, 2.04, 2.1, 2.16, 2.22, 2.28, 2.34, 2.4, 2.46, 2.52, 2.58, 2.64, 2.7, 2.76, 2.82, 2.88, 2.94, 3.0, 3.06, 3.12, 3.18, 3.24, 3.3, 3.36, 3.42, 3.48, 3.54, 3.6, 3.66, 3.72, 3.78, 3.84, 3.9, 3.96, 4.02, 4.08, 4.14, 4.2, 4.26, 4.32, 4.38, 4.44, 4.5, 4.56, 4.62, 4.68, 4.74, 4.8, 4.86, 4.92, 4.98, 5.04, 5.1, 5.16, 5.22, 5.28, 5.34, 5.4, 5.46, 5.52, 5.58, 5.64, 5.7, 5.76, 5.82, 5.88, 5.94]
quantiles([1, 2, 3, 4, 5], n=100)[49] # 50th percentile (e.g median)
# 3.0

quantiles返回给定分布的分割点dist列表,n - 1分割分n位数区间(以等概率划分distn连续区间):

statistics.quantiles(dist, *, n=4, method='exclusive')

其中n, 在我们的例子中 ( percentiles) 是100.

于 2019-04-23T22:48:39.077 回答
6

检查 scipy.stats 模块:

 scipy.stats.scoreatpercentile
于 2011-07-22T00:53:10.600 回答
2

要计算系列的百分位数,请运行:

from scipy.stats import rankdata
import numpy as np

def calc_percentile(a, method='min'):
    if isinstance(a, list):
        a = np.asarray(a)
    return rankdata(a, method=method) / float(len(a))

例如:

a = range(20)
print {val: round(percentile, 3) for val, percentile in zip(a, calc_percentile(a))}
>>> {0: 0.05, 1: 0.1, 2: 0.15, 3: 0.2, 4: 0.25, 5: 0.3, 6: 0.35, 7: 0.4, 8: 0.45, 9: 0.5, 10: 0.55, 11: 0.6, 12: 0.65, 13: 0.7, 14: 0.75, 15: 0.8, 16: 0.85, 17: 0.9, 18: 0.95, 19: 1.0}
于 2017-08-02T12:54:16.803 回答
2

计算一维 numpy 序列或矩阵的百分位数的一种方便方法是使用 numpy.percentile < https://docs.scipy.org/doc/numpy/reference/generated/numpy.percentile.html >。例子:

import numpy as np

a = np.array([0,1,2,3,4,5,6,7,8,9,10])
p50 = np.percentile(a, 50) # return 50th percentile, e.g median.
p90 = np.percentile(a, 90) # return 90th percentile.
print('median = ',p50,' and p90 = ',p90) # median =  5.0  and p90 =  9.0

但是,如果您的数据中有任何 NaN 值,则上述函数将无用。在这种情况下推荐使用的函数是 numpy.nanpercentile < https://docs.scipy.org/doc/numpy/reference/generated/numpy.nanpercentile.html > 函数:

import numpy as np

a_NaN = np.array([0.,1.,2.,3.,4.,5.,6.,7.,8.,9.,10.])
a_NaN[0] = np.nan
print('a_NaN',a_NaN)
p50 = np.nanpercentile(a_NaN, 50) # return 50th percentile, e.g median.
p90 = np.nanpercentile(a_NaN, 90) # return 90th percentile.
print('median = ',p50,' and p90 = ',p90) # median =  5.5  and p90 =  9.1

在上面介绍的两个选项中,您仍然可以选择插值模式。请按照以下示例进行操作,以便于理解。

import numpy as np

b = np.array([1,2,3,4,5,6,7,8,9,10])
print('percentiles using default interpolation')
p10 = np.percentile(b, 10) # return 10th percentile.
p50 = np.percentile(b, 50) # return 50th percentile, e.g median.
p90 = np.percentile(b, 90) # return 90th percentile.
print('p10 = ',p10,', median = ',p50,' and p90 = ',p90)
#p10 =  1.9 , median =  5.5  and p90 =  9.1

print('percentiles using interpolation = ', "linear")
p10 = np.percentile(b, 10,interpolation='linear') # return 10th percentile.
p50 = np.percentile(b, 50,interpolation='linear') # return 50th percentile, e.g median.
p90 = np.percentile(b, 90,interpolation='linear') # return 90th percentile.
print('p10 = ',p10,', median = ',p50,' and p90 = ',p90)
#p10 =  1.9 , median =  5.5  and p90 =  9.1

print('percentiles using interpolation = ', "lower")
p10 = np.percentile(b, 10,interpolation='lower') # return 10th percentile.
p50 = np.percentile(b, 50,interpolation='lower') # return 50th percentile, e.g median.
p90 = np.percentile(b, 90,interpolation='lower') # return 90th percentile.
print('p10 = ',p10,', median = ',p50,' and p90 = ',p90)
#p10 =  1 , median =  5  and p90 =  9

print('percentiles using interpolation = ', "higher")
p10 = np.percentile(b, 10,interpolation='higher') # return 10th percentile.
p50 = np.percentile(b, 50,interpolation='higher') # return 50th percentile, e.g median.
p90 = np.percentile(b, 90,interpolation='higher') # return 90th percentile.
print('p10 = ',p10,', median = ',p50,' and p90 = ',p90)
#p10 =  2 , median =  6  and p90 =  10

print('percentiles using interpolation = ', "midpoint")
p10 = np.percentile(b, 10,interpolation='midpoint') # return 10th percentile.
p50 = np.percentile(b, 50,interpolation='midpoint') # return 50th percentile, e.g median.
p90 = np.percentile(b, 90,interpolation='midpoint') # return 90th percentile.
print('p10 = ',p10,', median = ',p50,' and p90 = ',p90)
#p10 =  1.5 , median =  5.5  and p90 =  9.5

print('percentiles using interpolation = ', "nearest")
p10 = np.percentile(b, 10,interpolation='nearest') # return 10th percentile.
p50 = np.percentile(b, 50,interpolation='nearest') # return 50th percentile, e.g median.
p90 = np.percentile(b, 90,interpolation='nearest') # return 90th percentile.
print('p10 = ',p10,', median = ',p50,' and p90 = ',p90)
#p10 =  2 , median =  5  and p90 =  9

如果您的输入数组仅由整数值组成,您可能会对将百分位数作为整数的答案感兴趣。如果是这样,请选择插值模式,例如“较低”、“较高”或“最近”。

于 2020-01-17T16:24:48.307 回答
1

如果您需要答案成为输入 numpy 数组的成员:

只是补充一点,默认情况下,numpy 中的百分位函数将输出计算为输入向量中两个相邻条目的线性加权平均值。在某些情况下,人们可能希望返回的百分位数是向量的实际元素,在这种情况下,从 v1.9.0 开始,您可以使用“插值”选项,“更低”、“更高”或“最近”。

import numpy as np
x=np.random.uniform(10,size=(1000))-5.0

np.percentile(x,70) # 70th percentile

2.075966046220879

np.percentile(x,70,interpolation="nearest")

2.0729677997904314

后者是向量中的实际条目,而前者是与百分位数相邻的两个向量条目的线性插值

于 2018-03-22T09:09:28.920 回答
1

对于一个系列:使用描述函数

假设您的 df 包含以下列 sales 和 id。你想计算销售额的百分位数然后它的工作原理是这样的,

df['sales'].describe(percentiles = [0.0,0.1,0.2,0.3,0.4,0.5,0.6,0.7,0.8,0.9,1])

0.0: .0: minimum
1: maximum 
0.1 : 10th percentile and so on
于 2019-03-06T06:56:58.030 回答
0

我引导数据,然后绘制出 10 个样本的置信区间。置信区间显示概率将落在 5% 到 95% 概率之间的范围。

 import pandas as pd
 import matplotlib.pyplot as plt
 import seaborn as sns
 import numpy as np
 import json
 import dc_stat_think as dcst

 data = [154, 400, 1124, 82, 94, 108]
 #print (np.percentile(data,[0.5,95])) # gives the 95th percentile

 bs_data = dcst.draw_bs_reps(data, np.mean, size=6*10)

 #print(np.reshape(bs_data,(24,6)))

 x= np.linspace(1,6,6)
 print(x)
 for (item1,item2,item3,item4,item5,item6) in bs_data.reshape((10,6)):
     line_data=[item1,item2,item3,item4,item5,item6]
     ci=np.percentile(line_data,[.025,.975])
     mean_avg=np.mean(line_data)
     fig, ax = plt.subplots()
     ax.plot(x,line_data)
     ax.fill_between(x, (line_data-ci[0]), (line_data+ci[1]), color='b', alpha=.1)
     ax.axhline(mean_avg,color='red')
     plt.show()
于 2021-03-29T20:32:44.720 回答