# A fast method for calculating the probabilities of items in a distribution using python

Is there a quick method or a function than automatically computes probabilities of items in a distribution without importing random?

For instance, consider the following distribution (dictionary):

``````y = {"red":3, "blue":4, "green":2, "yellow":5}
``````
1. I would like to compute the probability of picking each item.
2. I would also like to compute the probability of picking a red and two greed.

Any suggestions?

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I think you mean: y={"red":3, "blue":4, "green":2, "yellow":5} –  Jblasco Aug 23 '13 at 13:39

For the frequencies:

``````   y = {"red":3, "blue":4, "green":2, "yellow":5}
frequencies = {key:float(value)/sum(y.values()) for (key,value) in y.items()}
``````

And the probabilities of having a given combination is the probability of each of them multiplied by the previous ones.

``````   combination = ["red", "green", "green"]
prob = 1. # initialized to 1
for ii in combination:
prob *= frequencies[ii]
print prob
0.00437317784257
``````

Does that sound reasonable?

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Hi @Jblasco, thanks for the solutions. They both worked. –  Tiger1 Aug 23 '13 at 14:16