16

As an R user, I have been wanted to also get up to speed on scikit.

Started off with Linear, Ridge and Lasso. I have gone through the examples. Below is for the basic OLS.

To set up the model(s) seems reasonable enough- but can't seem to find a reasonable way to get a standard set of regression output.

Example in my code:

# Linear Regression
import numpy as np
from sklearn import datasets
from sklearn.linear_model import LinearRegression
# load the diabetes datasets
dataset = datasets.load_diabetes()
# fit a linear regression model to the data
model = LinearRegression()
model.fit(dataset.data, dataset.target)
print(model)
# make predictions
expected = dataset.target
predicted = model.predict(dataset.data)
# summarize the fit of the model
mse = np.mean((predicted-expected)**2)
print model.intercept_, model.coef_, mse, 
print(model.score(dataset.data, dataset.target))

Seems like intercept and coef is built into the model, and I just type print (second to last line) to see them. What about all the other standard regression output like R^2, adjusted R^2, p values, etc. If I read the examples correctly, seems like you have to write a function/equation for each of these and then print it.

So, is there no standard summary output for lin reg models?

Also, in my printed array of outputs of coefficients, there are no variable names associated with each of these? I just get the numeric array. Is there a way to print these where I get an output of the coefficients and the variable they go with?

My printed output

LinearRegression(copy_X=True, fit_intercept=True, normalize=False)
152.133484163 [ -10.01219782 -239.81908937  519.83978679  324.39042769 -792.18416163
  476.74583782  101.04457032  177.06417623  751.27932109   67.62538639] 2859.69039877
0.517749425413

Thanks to the scilearn users.

30

There exists no R type regression summary report in sklearn. The main reason is that sklearn is used for predictive modelling / machine learning and the evaluation criteria are based on performance on previously unseen data (such as predictive r^2 for regression).

There does exist a summary function for classification called sklearn.metrics.classification_report which calculates several types of (predictive) scores on a classification model.

For a more classic statistical approach, take a look at statsmodels.

2

statsmodels package gives a quiet decent summary

from statsmodels.api import OLS
OLS(dataset.target,dataset.data).fit().summary()
1

I use:

import sklearn.metrics as metrics
def regression_results(y_true, y_pred):

    # Regression metrics
    explained_variance=metrics.explained_variance_score(y_true, y_pred)
    mean_absolute_error=metrics.mean_absolute_error(y_true, y_pred) 
    mse=metrics.mean_squared_error(y_true, y_pred) 
    mean_squared_log_error=metrics.mean_squared_log_error(y_true, y_pred)
    median_absolute_error=metrics.median_absolute_error(y_true, y_pred)
    r2=metrics.r2_score(y_true, y_pred)

    print('explained_variance: ', round(explained_variance,4))    
    print('mean_squared_log_error: ', round(mean_squared_log_error,4))
    print('r2: ', round(r2,4))
    print('MAE: ', round(mean_absolute_error,4))
    print('MSE: ', round(mse,4))
    print('RMSE: ', round(np.sqrt(mse),4))
-4

Use model.summary() after predict

# Linear Regression
import numpy as np
from sklearn import datasets
from sklearn.linear_model import LinearRegression

# load the diabetes datasets
dataset = datasets.load_diabetes()

# fit a linear regression model to the data
model = LinearRegression()
model.fit(dataset.data, dataset.target)
print(model)

# make predictions
expected = dataset.target
predicted = model.predict(dataset.data)

# >>>>>>>Print out the statistics<<<<<<<<<<<<<
model.summary()

# summarize the fit of the model
mse = np.mean((predicted-expected)**2)
print model.intercept_, model.coef_, mse, 
print(model.score(dataset.data, dataset.target))
  • 6
    In the current version of Sklearn 0.19.1 a linear regresion object doesn't have this summary method/attribute. It's not found on the docs and when I run it in my own environment I get the error 'LinearRegression' object has no attribute 'summary' – Austin T Apr 6 '18 at 2:28

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