# How to Calculate R^2 in Tensorflow

I am trying to do regression in Tensorflow. I'm not positive I am calculating R^2 correctly as Tensorflow gives me a different answer than sklearn.metrics.r2_score Can someone please look at my below code and let me know if I implemented the pictured equation correctly. Thanks total_error = tf.square(tf.sub(y, tf.reduce_mean(y)))
unexplained_error = tf.square(tf.sub(y, prediction))
R_squared = tf.reduce_mean(tf.sub(tf.div(unexplained_error, total_error), 1.0))
R = tf.mul(tf.sign(R_squared),tf.sqrt(tf.abs(R_squared)))


What you are computing the "R^2" is compared to the given expression, you are computing the mean at the wrong place. You should take the mean when computing the errors, before doing the division.

total_error = tf.reduce_sum(tf.square(tf.sub(y, tf.reduce_mean(y))))
unexplained_error = tf.reduce_sum(tf.square(tf.sub(y, prediction)))
R_squared = tf.sub(1, tf.div(unexplained_error, total_error))

• in tf.div in the third line, you have unexplained_error and total_error in the wrong positions, they need to be switched. – Nikhil Shinday Feb 22 '18 at 16:59
• In your formulation, the (yi - mu) should be squared. it was reflected in the code, but it might accidently confuse some people (like me). – Rui Nian Jan 2 '19 at 17:29

It should actually be the opposite on the rhs. Unexplained variance divided by total variance

• Could you add code to help make this a complete answer? – brennan Sep 19 '17 at 15:20

I think it should be like this:

total_error = tf.reduce_sum(tf.square(tf.sub(y, tf.reduce_mean(y))))
unexplained_error = tf.reduce_sum(tf.square(tf.sub(y, prediction)))
R_squared = tf.sub(1, tf.div(unexplained_error, total_error))


The function is given here:

def R_squared(y, y_pred):
residual = tf.reduce_sum(tf.square(tf.subtract(y, y_pred)))
total = tf.reduce_sum(tf.square(tf.subtract(y, tf.reduce_mean(y))))
r2 = tf.subtract(1.0, tf.div(residual, total))
return r2


The concept is explained here.

All the other solutions wouldn't produce the right R squared score for multidimensional y. The right way to calculate R2 (variance weighted) in TensorFlow is:

unexplained_error = tf.reduce_sum(tf.square(labels - predictions))
total_error = tf.reduce_sum(tf.square(labels - tf.reduce_mean(labels, axis=0)))
R2 = 1. - tf.div(unexplained_error, total_error)


The result from this TF snippet matches exactly the result from sklearn's:

from sklearn.metrics import r2_score
R2 = r2_score(labels, predictions, multioutput='variance_weighted')