I'm trying to fit an SGDRegressor to my data and then check the accuracy. The fitting works fine, but then the predictions are not in the same datatype(?) as the original target data, and I get the error

ValueError: Can't handle mix of multiclass and continuous

When calling print "Accuracy:", ms.accuracy_score(y_test,predictions).

The data looks like this (just 200 thousand + rows):

Product_id/Date/product_group1/Price/Net price/Purchase price/Hour/Quantity/product_group2
0   107 12/31/2012  10  300 236 220 10  1   108

The code is as follows:

from sklearn.preprocessing import StandardScaler
import numpy as np
from sklearn.linear_model import SGDRegressor
import numpy as np
from sklearn import metrics as ms

msk = np.random.rand(len(beers)) < 0.8

train = beers[msk]
test = beers[~msk]

X = train [['Price', 'Net price', 'Purchase price','Hour','Product_id','product_group2']]
y = train[['Quantity']]
y = y.as_matrix().ravel()

X_test = test [['Price', 'Net price', 'Purchase price','Hour','Product_id','product_group2']]
y_test = test[['Quantity']]
y_test = y_test.as_matrix().ravel()

clf = SGDRegressor(n_iter=2000)
clf.fit(X, y)
predictions = clf.predict(X_test)
print "Accuracy:", ms.accuracy_score(y_test,predictions)

What should I do differently? Thank you!

  • 1
    You may consider converting the continuous values to discrete by rounding the continuous values to nearest integer using the round function. Please refer to this link for similar question answered by natbusa
    – Dutse I
    Aug 25, 2017 at 11:38
  • Dutse is right. Or you can use y_preds = y_preds > 0.5 to change to discrete. Here you can set your own threshold.
    – Shark Deng
    Sep 3, 2019 at 3:03
  • 1
    @SharkDeng you are wrong, as is the previous comment; the root cause of the issue is as already pointed out in the answers below (the linked answer was also wrong)
    – desertnaut
    Sep 21, 2019 at 1:46

2 Answers 2


Accuracy is a classification metric. You can't use it with a regression. See the documentation for info on the various metrics.

  • So how exactly can I predict with my model? I mean, if clf.predict(X_test) gives me different output than the original, how am I supposed to even use it? This has got me puzzled.
    – lte__
    May 22, 2016 at 8:11
  • 4
    @lte__: In general you cannot expect to get exactly correct results from a regression model. What you hope for is that your predictions are overall close to the real values. To decide if they are close enough, you need to use a different evaluation metric (one of the regression metrics). See the documentation link I provided, which explains many metrics.
    – BrenBarn
    May 22, 2016 at 18:34

Accuracy score is only for classification problems. For regression problems you can use: R2 Score, MSE (Mean Squared Error), RMSE (Root Mean Squared Error).

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge that you have read and understand our privacy policy and code of conduct.

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