4

Say I have the following array:

x = np.array([3,7,1,2,6])

What is the simplest way to obtain the array with its scale say in the inverse way? So the minimum value would become the maximum, the maximum would become the minimum, and so on for the rest of the values.

Expected ouput:

array[3,1,7,6,2]

To clarify on what I want to obtain, say my original sequence is:

y = sorted(x)
#[1, 2, 3, 6, 7]

So the array sorted. If this was the case, the array that I would want is the array reversed, so [7, 6, 3, 2, 1]. I want to accomplish this with my current input.

Therefore, where I had the lowest value, 1 is now a 7, the second lowest vaule, 2 is now a 6, and so on.

5
  • They have a logical way to do this... x*-1. apart from that I don't understand how this could be a good thing – d_kennetz Dec 26 '18 at 19:41
  • 1
    I really don't understand your expected output. How is it related to your input? Why is 3 unchanged? – Sheldore Dec 26 '18 at 19:43
  • @Bazingaa the largest value 7 should become the lowest, 1, the second largest should become the second lowerst, 2and so on – yatu Dec 26 '18 at 19:44
  • 1
    why would taking the opposite sign of the numbers not solve this problem. – d_kennetz Dec 26 '18 at 19:45
  • 1
    Well in that case, if you are changing the scale, 3 should become 5 – Sheldore Dec 26 '18 at 19:45
4

Here is a numpy way:

np.sort(x)[::-1][np.argsort(np.argsort(x))]

Why this works: Suppose your list were already sorted, then you would just need to reverse it. Since the list isn't sorted we can first sort it, then reverse it, and then undo our sort.

Improvment: We really only need to compute argsort once. Then x can be sorted with this list and we can compute the inverse permutation to argsort(x) without another sort.

ax = np.argsort(x)
aax = np.zeros(len(ax),dtype='int')
aax[ax] = np.arange(len(ax),dtype='int')

x[ax[::-1]][aax]
1
2

If the input values are unique:

import numpy as np

x = np.array([3, 7, 1, 2, 6])

s = sorted(x)
lookup = {v: i for v, i in zip(s, reversed(s))}

result = np.array(list(map(lookup.get, x)))

print(result)

Output

[3 1 7 6 2]

If I understood correctly you want to assign to each value in the sorted order the value in the same position in the reverse sorted order.

1
  • Care to explain/add explanation to your logic in the code? – Sheldore Dec 26 '18 at 19:51
0

here's my first thought:

In [13]: xr=np.zeros_like(x)

In [14]: g=0

In [15]: f=np.unique(sorted(x))

In [16]: for b in f:
             g-=1
             #for repeated values:
             for y in np.where(x==b)[0]:
                 xr[y]=f[g]
    ...:     
In [17]: xr
Out[17]: array([3, 1, 7, 6, 2])
0

Here is how I invert np array value (biggest value->smallest value, smallest value -> biggest) without sorting.

np_arr_inv = np_arr * -1 + np_arr.max()

I need to keep the order since it is image data.

FYI Numpy has a bit-wise inversion function here

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