I am using sklearn.linear_model.LogisticRegression and using that I calculate the R^2 value as follows

`regr.score(xtest, ytest)`

and I get a score of 0.65

Now, just to compare i used the metric provided by sklearn.metrics.r2_score¶ and I calculate the score as follows

`r2_score(ytest,regr.predict(xtest))`

and I get a score of -0.54

According to the documentation regr.score returns "R^2 of self.predict(X) wrt. y." and this is what I did to calculate R^2 using the metric, but I don't get why the values are so different?

Can anyone help me explain it a bit?

**Update:** As suggested I switched the variables ytest,regr.predict(xtest) in r2_score, but in logistic regression I still get different values. So I updated the question.

`r2_score(ytest, regr.predict(xtest))`

(actual then predicted) – ayhan Jul 12 '16 at 9:52