5

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

1
  • np.inner isn't used that often in numpy. np.dot is much more common. When looking a documentation, keep in mind that your column vectors are 2d arrays.
    – hpaulj
    Commented Jun 30, 2017 at 16:52

4 Answers 4

7

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)
3
  • x = np.array([1, 2]) is what he meant I'm guessing.
    – kabanus
    Commented Jun 30, 2017 at 15:57
  • @kabanus yes he probablydid but the question did state "column vectors" thus i wanted to give an answer which preserves the column vector
    – Taako
    Commented Jun 30, 2017 at 16:00
  • 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
0

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

0

Try the following it will work

np.dot(np.transpose(a),a))
0

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)

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