如何实现numpy.cov()函数?

2024-04-25 08:31:34 发布

您现在位置:Python中文网/ 问答频道 /正文

我有自己的协方差函数实现,基于以下等式:

enter image description here

'''
Calculate the covariance coefficient between two variables.
'''

import numpy as np

X = np.array([171, 184, 210, 198, 166, 167])
Y = np.array([78, 77, 98, 110, 80, 69])

# Expected value function.
def E(X, P):
    expectedValue = 0
    for i in np.arange(0, np.size(X)):
        expectedValue += X[i] * (P[i] / np.size(X))
    return expectedValue 

# Covariance coefficient function.
def covariance(X, Y):
    '''
    Calculate the product of the multiplication for each pair of variables
    values.
    '''
    XY = X * Y

    # Calculate the expected values for each variable and for the XY.
    EX = E(X, np.ones(np.size(X)))
    EY = E(Y, np.ones(np.size(Y)))
    EXY = E(XY, np.ones(np.size(XY)))

    # Calculate the covariance coefficient.
    return EXY - (EX * EY)

# Display matrix of the covariance coefficient values.
covMatrix = np.array([[covariance(X, X), covariance(X, Y)], 
[covariance(Y, X), covariance(Y, Y)]])  
print("My function:", covMatrix)

# Display standard numpy.cov() covariance coefficient matrix.
print("Numpy.cov() function:", np.cov([X, Y]))

但问题是,我从函数和numpy.cov()中得到不同的值,即:

My function: [[ 273.88888889  190.61111111]
 [ 190.61111111  197.88888889]]
Numpy.cov() function: [[ 328.66666667  228.73333333]
 [ 228.73333333  237.46666667]]

为什么?如何实现numpy.cov()函数?如果函数numpy.cov()实现得很好,那么我做错了什么?我只想说,我的函数covariance()的结果与互联网上计算协方差系数(例如http://www.naukowiec.org/wzory/statystyka/kowariancja_11.html)的paper示例的结果是一致的。


Tags: ofthe函数numpyforsizenpfunction