# Generating a list of random numbers, summing to 1

How would I make a list of N (say 100) random numbers, so that their sum is 1?

I can make a list of random numbers with

``````r = [ran.random() for i in range(1,100)]
``````

How would I modify this so that the list sums to 1 (this is for a probability simulation).

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If their sum is 1, they are not completely random. –  fjarri Sep 6 '13 at 14:14
Divide each number in list by sum of the list –  aragaer Sep 6 '13 at 14:15
@Bogdan that's not really an issue. –  Tom Kealy Sep 6 '13 at 14:16
@Bogdan that's not correct. They are random, but one degree of freedom is used up by the constraint. –  pjs Sep 6 '13 at 14:36
@pjs, which means that (at best) 99 of them are random and 1 is not. In other words, "not completely random". –  fjarri Sep 6 '13 at 14:40

The simplest solution is indeed to take N random values and divide by the sum.

A more generic solution is to use the Dirichlet distribution http://en.wikipedia.org/wiki/Dirichlet_distribution which is available in numpy.

By changing the parameters of the distribution you can change the "randomness" of individual numbers

``````>>> import numpy as np, numpy.random
>>> print np.random.dirichlet(np.ones(10),size=1)
[[ 0.01779975  0.14165316  0.01029262  0.168136    0.03061161  0.09046587
0.19987289  0.13398581  0.03119906  0.17598322]]

>>> print np.random.dirichlet(np.ones(10)/1000.,size=1)
[[  2.63435230e-115   4.31961290e-209   1.41369771e-212   1.42417285e-188
0.00000000e+000   5.79841280e-143   0.00000000e+000   9.85329725e-005
9.99901467e-001   8.37460207e-246]]

>>> print np.random.dirichlet(np.ones(10)*1000.,size=1)
[[ 0.09967689  0.10151585  0.10077575  0.09875282  0.09935606  0.10093678
0.09517132  0.09891358  0.10206595  0.10283501]]
``````

Depending on the main parameter the Dirichlet distribution will either give vectors where all the values are close to 1./N where N is the length of the vector, or give vectors where most of the values of the vectors will be ~0 , and there will be a single 1, or give something in between those possibilities.

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+1 for being the only one to mention the Dirichlet distribution. This should be the answer. –  Timothy Shields Sep 6 '13 at 16:41
I've changed my accepted answer to this one, as scaling doesn't necessarily give a uniform distribution. –  Tom Kealy Sep 8 '13 at 12:58
@Tom, I don't begrudge your choice, and this answer is nice, but I want to make something clear: Scaling does necessarily give a uniform distribution (over `[0,1/s)`). It will be exactly as uniform as the unscaled distribution you started with, because scaling doesn't change the distribution, but just compresses it. This answer gives a variety of distributions, only one of which is uniform. If this doesn't make sense to you, run the examples and look at some histograms to make it clear. Also try the same thing with a gaussian distribution (`np.random.normal`). –  askewchan Sep 9 '13 at 18:08
@askewchan, you are not correct here. taking random numbers and dividing by the sum will NOT give the uniform distribution(it will be close to uniform for very large N, but never strictly uniform and also not uniform at all at smaller N). The Dirichlet distribution will not give the uniform distributions either (because it is impossible to get uniform distributions and sum of 1). –  sega_sai Sep 9 '13 at 19:26
@sega_sai In that vein, there is no strictly uniform distribution that can be pseudo-randomly generated. What I mean is that renormalizing a 'uniform' distribution doesn't make it any less uniform. I was responding to Tom's comment that implied this answer was selected because he wanted a uniform distribution. Unless I'm more fundamentally mistaken? –  askewchan Sep 9 '13 at 19:27

The best way to do this is to simply make a list of as many numbers as you wish, then divide them all by the sum. They are totally random this way.

``````r = [ran.random() for i in range(1,100)]
s = sum(r)
r = [ i/s for i in r ]
``````

or, as suggested by @TomKealy, keep the sum and creation in one loop:

``````rs = []
s = 0
for i in range(100):
r = ran.random()
s += r
rs.append(r)
``````

For the fastest performance, use `numpy`:

``````import numpy as np
a = np.random.random(100)
a /= a.sum()
``````

And you can give the random numbers any distribution you want, for a probability distribution:

``````a = np.random.normal(size=100)
a /= a.sum()
``````

---- Timing ----

``````In [52]: %%timeit
...: r = [ran.random() for i in range(1,100)]
...: s = sum(r)
...: r = [ i/s for i in r ]
....:
1000 loops, best of 3: 231 µs per loop

In [53]: %%timeit
....: rs = []
....: s = 0
....: for i in range(100):
....:     r = ran.random()
....:     s += r
....:     rs.append(r)
....:
10000 loops, best of 3: 39.9 µs per loop

In [54]: %%timeit
....: a = np.random.random(100)
....: a /= a.sum()
....:
10000 loops, best of 3: 21.8 µs per loop
``````
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I feel a little stupid now. –  Tom Kealy Sep 6 '13 at 14:18
@Tom No worries, it's easy to get stuck trying to make these things a lot harder than they are :) Now it's here for the next person. –  askewchan Sep 6 '13 at 14:22
I think it's time for beer. –  Tom Kealy Sep 6 '13 at 14:23
This is a good solution, but it seems like there should be a way to do this in a single pass that gets a good distribution across the range. Create, sum, modify is a 3 pass operation. You could at least optimize away one pass by summing as you generate though. –  Silas Ray Sep 6 '13 at 14:25
Scaling is not necessarily good. See my answer for more. There are many possible mappings from [0,1)^n onto the target space (sum of x_i = 1) and they can't all be uniform! –  Mike Housky Sep 6 '13 at 14:45

Dividing each number by the total may not give you the distribution you want. For example, with two numbers, the pair x,y = random.random(), random.random() picks a point uniformly on the square 0<=x<1, 0<=y<1. Dividing by the sum "projects" that point (x,y) onto the line x+y=1 along the line from (x,y) to the origin. Points near (0.5,0.5) will be much more likely than points near (0.1,0.9).

For two variables, then, x = random.random(), y=1-x gives a uniform distribution along the geometrical line segment.

With 3 variables, you are picking a random point in a cube and projecting (radially, through the origin), but points near the center of the triangle will be more likely than points near the vertices. The resulting points are on a triangle in the x+y+z plane. If you need unbiased choice of points in that triangle, scaling is no good.

The problem gets complicated in n-dimensions, but you can get a low-precision (but high accuracy, for all you laboratory science fans!) estimate by picking uniformly from the set of all n-tuples of non-negative integers adding up to N, and then dividing each of them by N.

I recently came up with an algorithm to do that for modest-sized n, N. It should work for n=100 and N = 1,000,000 to give you 6-digit randoms. See my answer at:

Create constrained random numbers?

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You could easily do with:

``````r.append(1 - sum(r))
``````
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The last number is then correlated with the first `N-1` numbers. –  askewchan Sep 6 '13 at 14:18

generate 100 random numbers doesn't matter what range. sum the numbers generated, divide each individual by the total.

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Create a list consisting of 0 and 1, then add 99 random numbers. Sort the list. Successive differences will be the lengths of intervals that add up to 1.

I'm not fluent in Python, so forgive me if there's a more Pythonic way of doing this. I hope the intent is clear though:

``````import random

values = [0.0, 1.0]
for i in range(99):
values.append(random.random())
values.sort()
results = []
for i in range(1,101):
results.append(values[i] - values[i-1])
print results
``````
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In the spirit of "divide each element in list by sum of list", this definition will create a list of random numbers of length = PARTS, sum = TOTAL, with each element rounded to PLACES (or None):

``````import random
import time

PARTS       = 5
TOTAL       = 10
PLACES      = 3

def random_sum_split(parts, total, places):

a = []
for n in range(parts):
a.append(random.random())
b = sum(a)
c = [x/b for x in a]
d = sum(c)
e = c
if places != None:
e = [round(x*total, places) for x in c]
f = e[-(parts-1):]
g = total - sum(f)
if places != None:
g = round(g, places)
f.insert(0, g)

log(a)
log(b)
log(c)
log(d)
log(e)
log(f)
log(g)

return f

def tick():

if info.tick == 1:

start = time.time()

alpha = random_sum_split(PARTS, TOTAL, PLACES)

log('********************')
log('***** RESULTS ******')
log('alpha: %s' % alpha)
log('total: %.7f' % sum(alpha))
log('parts: %s' % PARTS)
log('places: %s' % PLACES)

end = time.time()

log('elapsed: %.7f' % (end-start))
``````

result:

``````Waiting...
Saved successfully.
[2014-06-13 00:01:00] [0.33561018369775897, 0.4904215932650632, 0.20264927800402832, 0.118862130636748, 0.03107818050878819]
[2014-06-13 00:01:00] 1.17862136611
[2014-06-13 00:01:00] [0.28474809073311597, 0.41609766067850096, 0.17193755673414868, 0.10084844382959707, 0.02636824802463724]
[2014-06-13 00:01:00] 1.0
[2014-06-13 00:01:00] [2.847, 4.161, 1.719, 1.008, 0.264]
[2014-06-13 00:01:00] [2.848, 4.161, 1.719, 1.008, 0.264]
[2014-06-13 00:01:00] 2.848
[2014-06-13 00:01:00] ********************
[2014-06-13 00:01:00] ***** RESULTS ******
[2014-06-13 00:01:00] alpha: [2.848, 4.161, 1.719, 1.008, 0.264]
[2014-06-13 00:01:00] total: 10.0000000
[2014-06-13 00:01:00] parts: 5
[2014-06-13 00:01:00] places: 3
[2014-06-13 00:01:00] elapsed: 0.0054131
``````
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In the spirit of pjs's method:

``````a = [0, total] + [random.random()*total for i in range(parts-1)]
a.sort()
b = [(a[i] - a[i-1]) for i in range(1, (parts+1))]
``````

If you want them rounded to decimal places:

``````if places == None:
return b
else:
b.pop()
c = [round(x, places) for x in b]
c.append(round(total-sum(c), places))
return c
``````
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