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from random import uniform

prob = [0.25,0.30,0.45]

def onetrial(prob):
    u=uniform(0,1)
    if 0 < u <= prob[0]:
        return 11
    if prob[0] < u <= prob[0]+prob[1]:
        return 23
    if prob[0]+prob[1] < u <= prob[0]+prob[1]+prob[2]:
        return 39

print onetrial(prob)

I wonder how to reduce the repetitive part in the def using some for-loop techniques. Thanks.

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1  
Looks like some type of roulette wheel selection .. I don't think the code is that unclear, will prob become larger or vary? I'm just curious about the motivation for this - thanks –  Levon May 15 '12 at 22:36
1  
you don't need to test the < part (handled by the previous if). –  Karoly Horvath May 15 '12 at 22:38
2  
You can skip the last if entirely if you assume the probabilities sum to 1.0. That will be safer too in the event that rounding causes you to miss the last condition and run off the end of the function. –  Mark Ransom May 15 '12 at 22:49
    
Though it gets messy and may not be what you asked for it could be done as a crazy oneliner (that can be split up to understandable bits) given that you have u: [11,23,39][map(lambda x: u<=x, [sum(prob[0:i+1]) for i in xrange(len(prob))]).index(True)] –  deinonychusaur May 15 '12 at 22:59
    
Thanks all. @Levon, the code is to generate a random variable X with the probability mass function (prob). –  Bill TP May 15 '12 at 23:12

3 Answers 3

up vote 0 down vote accepted

Assuming you call onetrial frequently, calculate the CDF first to make it a bit faster:

from random import uniform

vals = [11, 23, 39]
prob = [0.25, 0.30, 0.45]
cdf = [sum(prob[0:i+1]) for i in xrange(3)]

def onetrial(vals, cdf):
    u = uniform(0, 1)
    for i in range(3):
        if u <= cdf[i]:
            return vals[i]

You could use bisect to make it even faster.

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1  
why do you have prob in the function? –  deinonychusaur May 15 '12 at 23:03
1  
This line def onetrial(prob): should be def onetrial(cdf, vals): I think –  jgritty May 15 '12 at 23:17
    
@jgritty, I tested yours. I think either works. –  Bill TP May 15 '12 at 23:27
    
@deinonychusaur Good point. Cut-n-paste error on my part. –  jrennie May 15 '12 at 23:42

The following is equivalent to your current code and it uses a for loop:

from random import uniform

prob = [0.25, 0.30, 0.45]

def onetrial(prob):
    u = uniform(0, 1)
    return_values = [11, 23, 39]
    total_prob = 0
    for i in range(3):
        total_prob += prob[i]
        if u <= total_prob:
            return return_values[i]

I am a little unclear on the relationship between the values you return and the probabilities, it seems like for your code prob will always have exactly 3 elements, so I made that assumption as well.

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I like F.J's answer, but I would use a list of tuples, assuming you can easily do so:

from random import uniform

prob = [(0.25, 11), (0.30, 23), (0.45, 39)]

def onetrial(prob):
    u = uniform(0, 1)
    total_prob = 0
    for i in range(3):
        total_prob += prob[i][0]
        if u <= total_prob:
            return prob[i][1]
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