# How to perform a linear combination between 2 numpy arrays that approximates a 3rd array?

On paper it seems quite simple so forgive me if I'm missing something obvious.

I've got 2 input arrays X1 and X2 of the same shape, and a target array Y also of the same shape. I'd like to combine X1 and X2 in some way to produce an approximation of Y. The combination should be element-wise, eg X1[0][0] combines with X2[0][0] and so on. I'd appreciate any ideas on how to do this in python, and if you think there are good non-linear methods that would also be really helpful, thanks.

• please provide a minimal example (X1, X2 and Y) for clarity Commented Apr 11, 2023 at 9:44
• a linear combination is defined as `ax + by` so the problem is to find the coefficients a and b such that `ax + by = z`. This to me seems more of a mathematics problem than a python one. Commented Apr 11, 2023 at 9:50
• @mozway Just standard float arrays. So all could be something like np.array([0.3, 0.4, 1.2, 1.4], [2.3, 0.5, 1.8, 0.1])
– Mike
Commented Apr 11, 2023 at 9:54
• @Fra93 Well yeah but I'm wondering if there are convenient python solutions, eg the numpy polyfit method does a linear approximation with 1 input array and a target array
– Mike
Commented Apr 11, 2023 at 9:56
• @Mike then I think you first should come up with an algorithm and then try implement it. If you fail, you ask here. If you don't have any algorithm in mind, you should ask on mathematics stack exchange, or maybe the dsp stack exchange :) Commented Apr 11, 2023 at 14:44