# Create a random array with a particular average

I am using scipy and want to create an an array of legnth n with a particular average.

Suppose I want an random arrays of length 3 with an average of 2.5 hence the possible options could be: [1.5, 3.5, 2.5] [.25, 7.2, .05] and so on and so forth...

I need to create many such arrays with varying lengths and different averages(specified) for each, so a generalized solution will be welcome.

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Does the average have to be exact, or can you just re-centre your random numbers around your desired average, i.e. if the long term average of your standard random float `[0,1)` is 0.5, then you can shift the centre to 2.5 by adding 2... –  Simon McKenzie Mar 19 '13 at 4:51
Are the numbers in list restricted to be non-negative? If there is no restriction, I think you can just fill in the list all with random number except the last one, then calculate the last number based on other numbers and the average value. –  Reorx Mar 19 '13 at 5:00
Yes the numbers need to be non-negative. –  Dipto Mar 19 '13 at 5:03

Just generate numbers over the range you want (0...10 in this case)

``````>>> import random
>>> nums = [10*random.random() for x in range(5)]
``````

Work out the average

``````>>> sum(nums)/len(nums)
4.2315222659844824
``````

Shift the average to where you want it

``````>>> nums = [x - 4.2315222659844824 + 2.5 for x in nums]
>>> nums
[-0.628013346633133, 4.628537956666447, -1.7219257458163257, 7.617565127420011, 2.6038360083629986]
>>> sum(nums)/len(nums)
2.4999999999999996
``````

You can use whichever distribution/range you like. By shifting the average this way it will always get you an average of 2.5 (or very close to it)

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I found a solution to the problem.

numpy.random.triangular(left, mode, right, size=None)

However, the minor problem is that it forces a triangular distribution on the samples.

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But what kind of distribution do you want? –  askewchan Mar 19 '13 at 5:03

You haven't specified what distribution you want.

It's also not clear whether you want the average of the actual array to be 2.5, or the amortized average over all arrays to be 2.5.

The simplest solution—three random numbers in an even distribution from 0 to 2*avg—is this:

``````return 2*avg * np.random.rand(3)
``````

If you want to guarantee that the average of the array is 2.5, that's a pretty simple constraint, but there are many different ways you could satisfy it, and you need to describe which way you want. For example:

``````n0 = random.random() * 2*avg
n1 = random.random() * (2*avg - n0)
n2 = random.random() * (2*avg - n0 - n1)
return np.array((n0, n1, n2))
``````
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