# Generating Discrete random variables with specified weights using SciPy or NumPy

I am looking for a simple function that can generate an array of specified random values based on their corresponding (also specified) probabilities. I only need it to generate float values, but I don't see why it shouldn't be able to generate any scalar. I can think of many ways of building this from existing functions, but I think I probably just missed an obvious SciPy or NumPy function.

E.g.:

``````>>> values = [1.1, 2.2, 3.3]
>>> probabilities = [0.2, 0.5, 0.3]
>>> print some_function(values, probabilities, size=10)
(2.2, 1.1, 3.3, 3.3, 2.2, 2.2, 1.1, 2.2, 3.3, 2.2)
``````

Note: I found scipy.stats.rv_discrete but I don't understand how it works. Specifically, I do not understand what this (below) means nor what it should do:

``````numargs = generic.numargs
[ <shape(s)> ] = ['Replace with resonable value', ]*numargs
``````

If rv_discrete is what I should be using, could you please provide me with a simple example and an explanation of the above "shape" statement?

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Here is a short, relatively simple function that returns weighted values, it uses numpys `digitize`, `accumulate`, and `random_sample`.

``````import numpy as np
from numpy.random import random_sample

def weighted_values(values, probabilities, size):
return values[np.digitize(random_sample(size), bins)]

values = np.array([1.1, 2.2, 3.3])
probabilities = np.array([0.2, 0.5, 0.3])

print weighted_values(values, probabilities, 10)
#Sample output:
[ 2.2  2.2  1.1  2.2  2.2  3.3  3.3  2.2  3.3  3.3]
``````

It works like this:

1. First using `accumulate` we create bins.
2. Then we create a bunch of random numbers (between `0`, and `1`) using `random_sample`
3. We use `digitize` to see which bins these numbers fall into.
4. And return the corresponding values.
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Yes this is basically what I was thinking of, but I just thought there may be a built-in function that does exactly that. From the sound of it, there is no such thing. I must admit - I would have not done it as elegantly. - Thanks –  Tim_Y Jul 7 '12 at 15:40
NumPy directly offers `numpy.cumsum()`, which can be used instead of `np.add.accumulate()` (`np.add()` is not very commonly used, so I recommend using `cumsum()`). –  EOL Feb 2 '13 at 8:11
+1 for the useful `numpy.digitize()`! However, SciPy actually offers a function that directly answers the question—see my answer. –  EOL Feb 2 '13 at 8:29
PS:… As noted by Tim_Y, using SciPy's function is much slower than using your "manual" solution (on 10k elements). –  EOL Feb 2 '13 at 13:09

http://docs.scipy.org/doc/scipy/reference/tutorial/stats.html#subclassing-rv-discrete

shows how to create a discrete distribution that can then be used for drawing random numbers.

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The simplest DIY way would be to sum up the probabilities into a cumulative distribution. This way, you split the unit interval into sub-intervals of the length equal to your original probabilities. Now generate a single random number uniform on [0,1), and and see to which interval it lands.

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Yes this is basically what I was thinking of, but I just thought there may be a built-in function that does exactly that. From the sound of it, there is no such thing. –  Tim_Y Jul 7 '12 at 15:37

You were going in a good direction: the built-in `scipy.stats.rv_discrete()` quite directly creates a discrete random variable. Here is how it works:

``````>>> from scipy.stats import rv_discrete

>>> values = numpy.array([1.1, 2.2, 3.3])
>>> probabilities = [0.2, 0.5, 0.3]

>>> distrib = rv_discrete(values=(range(len(values)), probabilities))  # This defines a Scipy probability distribution

>>> distrib.rvs(size=10)  # 10 samples from range(len(values))
array([1, 2, 0, 2, 2, 0, 2, 1, 0, 2])

>>> values[_]  # Conversion to specific discrete values (the fact that values is a NumPy array is used for the indexing)
[2.2, 3.3, 1.1, 3.3, 3.3, 1.1, 3.3, 2.2, 1.1, 3.3]
``````

Since your values are not integers, the distribution `distrib` above returns indexes from the `values` list.

More generally, `rv_discrete()` takes a sequence of integer values in the first elements of its `values=(…,…)` argument, and returns these values; there is no need to convert to specific (float) values. Here is an example:

``````>>> values = [10, 20, 30]
>>> probabilities = [0.2, 0.5, 0.3]
>>> distrib = rv_discrete(values=(values, probabilities))
>>> distrib.rvs(size=10)
array([20, 20, 20, 20, 20, 20, 20, 30, 20, 20])
``````

where (integer) input values are directly returned with the desired probability.

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Thank you for the answer. This function finally makes sense. –  Tim_Y Feb 2 '13 at 12:55
NOTE: I tried running timeit on it, and it appears to be a good 100x slower than fraxel's purely numpy version. Do you by any chance know why that is? –  Tim_Y Feb 2 '13 at 12:55
Wow, interesting! On 10k elements, I even get a factor of 300x slower. I had a quick look at the code: there are many checks performed, but I guess that they cannot explain such a big difference in running time; I did not go deep enough into the Scipy code to have been able to see where the difference could come from… –  EOL Feb 2 '13 at 13:23

You could also use Lea, a pure Python package dedicated to discrete probability distributions.

``````>>> distrib = Lea.fromValFreqs((1.1,2),(2.2,5),(3.3,3))
>>> distrib
1.1 : 2/10
2.2 : 5/10
3.3 : 3/10
>>> distrib.random(10)
(2.2, 2.2, 1.1, 2.2, 2.2, 2.2, 1.1, 3.3, 1.1, 3.3)
``````

Et voilà!

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