Using Tensorflow, I need to calculate multiple grouped metrics (e.g. mean) from a tensor, based on groups that are given by a second tensor.
A a toy example, let's say I got:
values = tf.constant([, [1.5], , [2.5], , [3.5]])
groupings = tf.constant([1,3,2,1,2,3])
And want to calculate:
group_means = [1.75,2.5,2.5])
I know how to calculate the mean for one group, e.g.:
group = tf.boolean_mask(values, tf.equal(groupings, i))
mean = tf.math.reduce_mean(group,axis=0)
and could do that for every group in a for-loop.
What I can't figure out is how to do that in a vectorized manner without looping through each group. Maybe it is a very easy question with an obvious solution, but I appreaciate any help.