I want to use LinearRegression and linregress to caculate Intercept,X_Variable_1,R_Square,Significance_F just like regression analysis in Excel.

When I use this code to do it, there is no mistake.

from sklearn.linear_model import LinearRegression
import pandas as pd
import numpy as np
from scipy.stats import linregress
from decimal import *

def calculate_parameters():
    list_a=[['2018', '3', 'aa', 'aa', 93,1884.7746222667, 165.36153386251098], ['2018', '3', 'bb', 'bb', 62, 665.6392779848, 125.30386609565328], ['2018', '3', 'cc', 'cc', 89, 580.2259903521, 160.19280253775514]]
    df = pd.DataFrame(list_a)
    X = df.iloc[:, 5]
    y = df.iloc[:, 6]
    X1 = X.values.reshape(-1, 1)
    y1 = y.values.reshape(-1, 1)
    clf = LinearRegression()
    clf.fit(X1, y1)
    yhat = clf.predict(X1)
    para_Intercept = clf.intercept_[0]
    para_X_Variable_1 = clf.coef_[0][0]
    SS_Residual = sum((y1 - yhat) ** 2)
    SS_Total = sum((y1 - np.mean(y1)) ** 2)
    para_R_Square = 1 - (float(SS_Residual)) / SS_Total
    adjusted_r_squared = 1 - (1 - para_R_Square) * (len(y1) - 1) / (len(y1) - X1.shape[1] - 1)
    para_a = linregress(X, y)
    para_Significance_F = para_a[3]
    print("Intercept:"+str(para_Intercept))
    print("X_Variable_1:"+str(para_X_Variable_1))
    print("R_Square:" + str(para_R_Square[0]))
    print("Significance_F:" + str(para_Significance_F))

if __name__ == "__main__":
    calculate_parameters()

The output is:

Intercept:133.10871357512195

X_Variable_1:0.016460552337949654

R_Square:0.3039426453800934

Significance_F:0.6282563718649847

But in fact,list_a likes this:

list_a = [['2018', '3', 'aa', 'aa', 93, Decimal('1884.7746222667'), 165.36153386251098],
          ['2018', '3', 'bb', 'bb', 62, Decimal('665.6392779848'), 125.30386609565328],
          ['2018', '3', 'cc', 'cc', 89, Decimal('580.2259903521'), 160.19280253775514]]

The 6th column is decimal type.

When I change list_a,likes this:

from sklearn.linear_model import LinearRegression
import pandas as pd
import numpy as np
from scipy.stats import linregress
from decimal import *

def calculate_parameters():
    # list_a=[['2018', '3', 'aa', 'aa', 93,1884.7746222667, 165.36153386251098], ['2018', '3', 'bb', 'bb', 62, 665.6392779848, 125.30386609565328], ['2018', '3', 'cc', 'cc', 89, 580.2259903521, 160.19280253775514]]
    list_a=[['2018', '3', 'aa', 'aa', 93,Decimal('1884.7746222667'), 165.36153386251098], ['2018', '3', 'bb', 'bb', 62, Decimal('665.6392779848'), 125.30386609565328], ['2018', '3', 'cc', 'cc', 89, Decimal('580.2259903521'), 160.19280253775514]]
    df = pd.DataFrame(list_a)
    X = df.iloc[:, 5]
    y = df.iloc[:, 6]
    X1 = X.values.reshape(-1, 1)
    y1 = y.values.reshape(-1, 1)
    clf = LinearRegression()
    clf.fit(X1, y1)
    yhat = clf.predict(X1)
    para_Intercept = clf.intercept_[0]
    para_X_Variable_1 = clf.coef_[0][0]
    SS_Residual = sum((y1 - yhat) ** 2)
    SS_Total = sum((y1 - np.mean(y1)) ** 2)
    para_R_Square = 1 - (float(SS_Residual)) / SS_Total
    adjusted_r_squared = 1 - (1 - para_R_Square) * (len(y1) - 1) / (len(y1) - X1.shape[1] - 1)
    para_a = linregress(X, y)
    para_Significance_F = para_a[3]
    print("Intercept:"+str(para_Intercept))
    print("X_Variable_1:"+str(para_X_Variable_1))
    print("R_Square:" + str(para_R_Square[0]))
    print("Significance_F:" + str(para_Significance_F))

if __name__ == "__main__":
    calculate_parameters()

The error is:

Traceback (most recent call last):

File "E:/test_opencv/MyTest.py", line 32, in calculate_parameters()

File "E:/test_opencv/MyTest.py", line 24, in calculate_parameters para_a = linregress(X, y)

File "E:\Anaconda3\lib\site-packages\scipy\stats_stats_mstats_common.py", line 79, in linregress ssxm, ssxym, ssyxm, ssym = np.cov(x, y, bias=1).flat

File "E:\Anaconda3\lib\site-packages\numpy\lib\function_base.py", line 3085, in cov avg, w_sum = average(X, axis=1, weights=w, returned=True)

File "E:\Anaconda3\lib\site-packages\numpy\lib\function_base.py", line 1163, in average if scl.shape != avg.shape:

AttributeError: 'float' object has no attribute 'shape'

How to fix the error?

up vote 2 down vote accepted

You can achieve this by simply casting X to float:

para_a = linregress(X.astype(float), y)
>>> para_a
LinregressResult(slope=0.016460552337949654, intercept=133.10871357512195, rvalue=0.5513099358619372, pvalue=0.6282563718649847, stderr=0.024909849163985552)
  • 2
    This is very helpful! – J.Snow Nov 8 at 1:07

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.