# Mapping elements of a list to Intervals to create a cumulative probability distribution

I have a list of elements, for example `L = [A, B, C]`. Each element has an associated score for example `S = [5, 1, 4]`.

I want to select an element from L according to its score in S, simply by generating a sort of cumulative probability distribution, where each element `L[i]` corresponds to an interval in `(0,1]` proportional to `S[i]`. Then, a random number drawn in (0,1] maps to the selected element.

For the example given before, we can have the scores of `S` represented as probabilities by normalizing on `5+1+4` so we get `SS = [0.5, 0.1, 0.4]`, and we map the elements of `L` to intervals, such that:

``````B is mapped to (0, 0.1]
C is mapped to (0.1, 0.1+0.4]
A is mapped to (0.1+0.4, 0.5+0.5]
``````

Now if I generate a random number `r` in (0,1] (e.g. `r = random.random()`), it will map to the corresponding element. For example if `r = 0.03` we know that the element is B. And for instance, if `r = 0.73` we know that the element is A ...

Is there a simple way in python to do this mapping between an element and an interval ?

I know that I can use `numpy.cumsum` to generate the cumulative sum of SS, but how to map elements to intervals obtained from this cumulative sum ?

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Just to clarify: You want to have a list such that when a random number is generated, a corresponding element of the list is returned? – wnnmaw Jan 29 '14 at 17:30
@wnnmaw yes exactly. – shn Jan 29 '14 at 17:32
Let me check if I understand correctly. You want to generate arbitrary discrete random variates defined by a cdf from a uniform distribution? – Joel Cornett Jan 29 '14 at 17:47
@JoelCornett no that is not what I want to do. I just want to create a CDF based on a list of elements and a scores/probabilities. So that we can select randomly an element according to that CDF. – shn Jan 29 '14 at 19:48

Assuming I understand you correctly, I would recommend a `dict`:

``````def branchFinder(L, S, r):
S, L = map(list, zip(*sorted(zip(S, L))))
SS = [0.] + map(lambda x: x/10., S)

probs = {}
for i in range(len(L)):
probs[L[i]] = (sum(SS[:i+1]), SS[i+1] + sum(SS[:i+1]))

for key, value in probs.iteritems():
if value[0] < r <= value[1]:
return key
``````
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If the values are ordered, (as they would be in a CDF) there is no need to do the first less than comparison. – Joel Cornett Jan 29 '14 at 17:45
@JoelCornett the values might be ordered into the dictionary, but not necessarily out of it! – jonrsharpe Jan 29 '14 at 17:49
I'm not sure which value you're referring to. If you mean the values of `value` then you must do both comparisons because they're in a `dict` which is unordered by its nature – wnnmaw Jan 29 '14 at 17:49
@jonrsharpe: Which would imply that a `dict` might not be the best way to store the CDF ;) – Joel Cornett Jan 29 '14 at 17:51
It is ok, fixed using: `for key, value in probs.iteritems()`. Thanks. – shn Jan 29 '14 at 21:11

You could use a `Counter`:

``````from collections import Counter
counts = Counter(dict(zip(L, S)))
``````

Giving, e.g.:

``````Counter({'A': 5, 'C': 4, 'B': 1})
``````

Then use this answer to randomly select from it:

``````from random import randrange
from itertools import islice

index = randrange(sum(counts.values()))
next(islice(counts.elements(), index, None))
``````

or just choose from the list (perhaps clearer what's happening, but less efficient with big lists):

``````from random import choice

choice(list(counts.elements()))
``````

This doesn't answer your exact question (generating probabilities), but hopefully gets you the result you need (random selection based on score).

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Ok, +1 your answer is interesting to obtain a random selection based on score (which is the final result wanted). However, it is a bit complicated to understand at first sight. I think that wnnmaw's answer using a simple dict is easier. – shn Jan 29 '14 at 19:44