How can I take an inner product of 2 column vectors in python's numpy
Below code does not work
import numpy as np
x = np.array([[1], [2]])
np.inner(x, x)
It returned
array([[1, 2],
[2, 4]])`
instead of 5
The inner product of a vector with dimensions 2x1 (2 rows, 1 column) with another vector of dimension 2x1 (2 rows, 1 column) is a matrix with dimensions 2x2 (2 rows, 2 columns). When you take the inner product of any tensor the inner most dimensions must match (which is 1 in this case) and the result is a tensor with the dimensions matching the outter, i.e.; a 2x1 * 1x2 = 2x2.
What you want to do is transpose both such that when you multiply the dimensions are 1x2 * 2x1 = 1x1.
More generally, multiplying anything with dimensions NxM
by something with dimensionsMxK
, yields something with dimensions NxK
. Note the inner dimensions must both be M
. For more, review your matrix multiplication rules
The np.inner
function will automatically transpose the second argument, thus when you pass in two 2x1, you get a 2x2, but if you pass in two 1x2 you will get a 1x1.
Try this:
import numpy as np
x = np.array([[1], [2]])
np.inner(np.transpose(x), np.transpose(x))
or simply define your x as row vectors initially.
import numpy as np
x = np.array([1,2])
np.inner(x, x)
transpose()
does not actually work in the above case because it still results in a 2d array. flatten()
will do the job, as will reshape(2)
(both yield a 1d array).
Commented
Aug 3, 2022 at 21:48
i think you mean to have:
x= np.array([1,2])
in order to get 5 as output, your vector needs to be 1xN not Nx1 if you want to apply np.inner on it
make sure col_vector has shape (N,1) where N is the number of elements
then simply sum one to one multiplication result
np.sum(col_vector*col_vector)
np.inner
isn't used that often innumpy
.np.dot
is much more common. When looking a documentation, keep in mind that your column vectors are 2d arrays.