2

Following this post, I can generate random integers with a fixed sum. However, I want to avoid any duplicate numbers (such as 20 in the following example):

import numpy as np

_sum = 100
n = 5
rnd_array = np.random.multinomial(_sum, np.ones(n)/n, size=1)[0]
rnd_array

>>> array([20, 24, 20, 21, 15])

How could I achieve this?

  • The answer is in this link. This question has been answered I guess stackoverflow.com/questions/22842289/… – Althaf1467 Jan 22 '19 at 11:42
  • @Althaf1467 - In terms of generating random numbers then yes, the post you linked to solves that. But I also want the random values to sum up to a specific value at the same time. – Joseph Jan 22 '19 at 12:19
4

random.sample returns a list of unique values (see the docs.) It's called like this:

sample = random.sample(range(100), 5)

Edit: For using this to get fixed sum, I suggest reading this thread where the important code is:

from random import*
def f(n,s):
  r=min(s,1)
  x=uniform(max(0,r-(r-s/n)*2),r)
  return n<2and[s]or sample([x]+f(n-1,s-x),n)
  • Your answer solves half the the problem :). The random values generated need to sum to a specific value (in my example, 5 random integers should sum to 100). – Joseph Jan 22 '19 at 12:18
  • @Joseph I made an edit to show how sample is used in that context – Charles Landau Jan 22 '19 at 12:37
  • Thanks for the edit. The float values generated are indeed random and sum to 100. To get it to integer values which I needed, I used x = int(uniform(max(0, r - (r - s/n) * 2), r)). Thank you again :) – Joseph Jan 22 '19 at 13:03

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.