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I am working on my regression model based on the IMDB data, to predict IMDB value. On my linear-regression, i was unable to obtain the accuracy score.

my line of code:

metrics.accuracy_score(test_y, linear_predicted_rating)

Error :

ValueError: continuous is not supported

if i were to change that line to obtain the r2 score,

metrics.r2_score(test_y,linear_predicted_rating)

i was able to obtain r2 without any error. Any clue why i am seeing this?

Thanks.

Edit: One thing i found out is test_y is panda data frame whereas the linear_predicted_rating is in numpy array format.

15

metrics.accuracy_score is used to measure classification accuracy, it can't be used to measure accuracy of regression model because it doesn't make sense to see accuracy for regression - predictions rarely can equal the expected values. And if predictions differ from expected values by 1%, the accuracy will be zero, though these predictions are great

Here are some metrics for regression: http://scikit-learn.org/stable/modules/classes.html#regression-metrics

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  • Great!thanks for the link, looks like there is no accuracy metrics for regression.
    – ML N00b
    Aug 11 '17 at 6:11
  • Because it doesn't make sense to see accuracy for regression - predictions rarely can equal the expected values. And if predictions differ from expected values by 1%, the accuracy will be zero, though these predictions are great. Aug 11 '17 at 7:30
10

NOTE: Accuracy (e.g. classification accuracy) is a measure for classification, not regression so we can't calculate accuracy for a regression model. For regression, one of the matrices we've to get the score (ambiguously termed as accuracy) is R-squared (R2).

You can get the R2 score (i.e accuracy) of your prediction using the score(X, y, sample_weight=None) function from LinearRegression as follows by changing the logic accordingly.

from sklearn.linear_model import LinearRegression
regressor = LinearRegression()
regressor.fit(x_train,y_train)
r2_score = regressor.score(x_test,y_test)
print(r2_score*100,'%')

output (a/c to my model)

86.23%
1

The above is R squared value and not the accuracy :

# R squared value
metrics.explained_variance_score(y_test, predictions)
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  • I thought the r^2 - explained variance was the accuracy Jan 28 at 23:29
0

What does your variables look like. Code below works well.

from sklearn import metrics
test_y, linear_predicted_rating = [1,2,3,4], [1,2,3,5]
metrics.accuracy_score(test_y, linear_predicted_rating)
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  • the linear_predicted_rating seems to be in np array whereas the test_y is panda data frame.; pastebin.com/yuh0p703
    – ML N00b
    Aug 11 '17 at 6:05
  • it works fine when i used metrics.r2_score(test_y, linear_predicted_rating) though.
    – ML N00b
    Aug 11 '17 at 6:07
0

You can not predict the accuracy of regression model,however you can analyze your model using Mean absolute error ,Mean squared error ,Root mean squared error,Max error,median error R-square etc. for reference you can go this to gain more knowledge

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