# Choose random array element satisfying certain property

Suppose I have a list, called `elements`, each of which does or does not satisfy some boolean property `p`. I want to choose one of the elements that satisfies `p` by random with uniform distribution. I do not know ahead of time how many items satisfy this property `p`.

Will the following code do this?:

``````pickRandElement(elements, p)
randElement = null
count = 0
foreach element in elements
if (p(element))
count = count + 1
if (randInt(count) == 0)
randElement = element

return randElement
``````

(`randInt(n)` returns a random int `k` with `0 <= k < n`.)

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I would have thought "by random" and "with equal distribution" were mutually exclusive, what am I missing? –  Binary Worrier Jun 8 '09 at 18:01
@Binary: he simply means that it has to be a fair random number. All elements that satisfy p must have an equal chance of being randomly picked every time. If this is true, then they will be drawn with equal distribution given enough time. –  JoeCool Jun 8 '09 at 18:08
Random distributions can have all sorts of shapes that might be weighted towards one group of elements or another. Here Paul's asking about an even (or uniform) distribution where each element has the same probability of being selected. –  Nate Kohl Jun 8 '09 at 18:10
@Nate, it's not immediately clear that each element has equal probability. My read was that the group of P and the group of Not-P had equal probability. If each element is uniformly likely, my answer is pretty far off.... ;-) –  Bob Cross Jun 8 '09 at 18:18
There's no need to use floats. Personally, I'd just select a random integer between 0 and count - 1, then choose the element if the result is 0. This is more efficient and will protect you from rounding errors. –  Peter Ruderman Jun 8 '09 at 18:23

It works mathematically. Can be proven by induction.

Clearly works for n = 1 element satisfying p.

For n+1 elements, we will choose the element n+1 with probability 1/(n+1), so its probability is OK. But how does that effect the end probability of choosing one of the prior n elements?

Each of the prior n had a chance of being selected with probability 1/n, until we found element n+1. Now, after finding n+1, there is a 1/(n+1) chance that element n+1 is chosen, so there is a n/(n+1) chance that the previously chosen element remains chosen. Which means its final probability of being the chosen after n+1 finds is 1/n * (n/n+1) = 1/n+1 -- which is the probability we want for all n+1 elements for uniform distribution.

If it works for n = 1, and it works for n+1 given n, then it works for all n.

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Induction has saved my butt too many times in computation proofs! –  JoeCool Jun 8 '09 at 18:40
There's actually a simpler way to prove this. For n elements, we will choose the element n with probability 1/n. But what about the prior n-1 elements? Well, under induction we know that all these n-1 elements have the same probability. So the probability for each must be 1/n, since 1/n is the only number that's 1 when multiplied with n. qed :) –  FeepingCreature Dec 7 '09 at 17:28

Yes, I believe so.

The first time you encounter a matching element, you definitely pick it. The next time, you pick the new value with a probability of 1/2, so each of the two elements have an equal chance. The following time, you pick the new value with a probability of 1/3, leaving each of the other elements with a probability of 1/2 * 2/3 = 1/3 as well.

Note that more generally, you're just picking a random sample out of a sequence of unknown length. Your sequence happens to be generated by taking an initial sequence and filtering it, but the algorithm doesn't require that part at all.

I thought I'd got a LINQ operator in MoreLINQ to do this, but I can't find it in the repository... EDIT: Fortunately, it still exists from this answer:

``````public static T RandomElement<T>(this IEnumerable<T> source,
Random rng)
{
T current = default(T);
int count = 0;
foreach (T element in source)
{
count++;
if (rng.Next(count) == 0)
{
current = element;
}
}
if (count == 0)
{
throw new InvalidOperationException("Sequence was empty");
}
return current;
}
``````
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Jon, as far as I see it, this algorithm will ALWAYS pick the first element that meets p, what I am missing? –  tekBlues Jun 8 '09 at 18:10
@tekBlues: it keeps going after it's picked the first one. –  AakashM Jun 8 '09 at 18:13
I'm pretty sure this algorithm works, if the random generator does its job properly. –  ammoQ Jun 8 '09 at 18:14
aakashm, he says he only wants to pick one element –  tekBlues Jun 8 '09 at 18:22
Instead of "picks", think of the algorithm as "holding" elements. It holds the first one, then might drop it to hold the second one, etc. At the end, you're left holding some element, which is the one that you return. –  Nate Kohl Jun 8 '09 at 18:23

In The Practice of Programming, pg. 70, (The Markov Chain Algorithm) there is a similar algorithm for that:

``````[...]
nmatch = 0;
for ( /* iterate list */ )
if (rand() % ++nmatch == 0) /* prob = 1/nmatch */
w = suf->word;
[...]
``````

"Notice the algorithm for selecting one item at random when we don't know how many items there are. The variable nmatch counts the number of matches as the list is scanned. The expression

``````rand() % ++nmatch == 0
``````

increments nmatch and is then true with probability 1/nmatch."

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decowboy has a nice proof that this works on TopCoder

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For clarity's sake, I would try:

``````pickRandElement(elements, p)
OrderedCollection coll = new OrderedCollection
foreach element in elements
if (p(element))