# How to pick a random choice using a custom probability distribution

I have a list of US names and their respective names from the US census website. I would like to generate a random name from this list using the given probability. The data is here: US Census data

I have seen algorithms like the roulette wheel selection algorithm that are easy to implement, but I wanted to know if there was any way to generate random names in O(1). For histogram data this is easier, as you could create a hash of integers to birthdays, but I would like to do this for a continuous distribution.

If this is not possible, are there any python modules that take in probability distributions and generate random values based on those distributions?

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What sort of probability distributions are you thinking of using? Many entries in your dataset are 0.000. I think it would be better if you can find a source with more than 3 decimal places. –  John La Rooy Oct 20 '13 at 23:31
Couldn't you just assign each of the names proportional width, and then map a random number from 0 to 1 onto the new range? –  Waleed Khan Oct 20 '13 at 23:33
@WaleedKhan, but the lookup in the range is O(log n) –  John La Rooy Oct 20 '13 at 23:41

There is an `O(1)`-time method See this detailed description of Vose's "alias" method. Unfortunately, it suffers from high initialization cost. For comparative timings of simpler methods, see Eli Bendersky's blog post. More timings can be found in this from the Python issue tracker.

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Alias method is very interesting reading. I think the table generation might make a good codegolf –  John La Rooy Oct 21 '13 at 0:33
I think the alias method is closest to what I am looking for. The issue tracker is an interesting link too. I will have to find a better source of data to continue though. –  JDong Oct 21 '13 at 2:36
@JDong, note that the issue tracker item has files attached containing Python implementations of all the methods Serhiy Storchaka reporting timings for. Good luck! :-) –  Tim Peters Oct 21 '13 at 2:40

These days it's practical to enumerate the entire US population (~317 million) if you really need `O(1)` lookup. Just pick a number up to 317 million and get the name from there. (317000000*4 bytes = 1.268GB)

I think there are lots of `O(log n)` ways. Is there a particular reason you need `O(1)` (They will use a lot less memory)

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It was mostly theoretical, but I also wanted to know if there was a better solution than my knee jerk O(log) reaction. –  JDong Oct 21 '13 at 0:04