# How to pick an item by its probability?

I have a list of items. Each of these items has its own probability.

Can anyone suggest an algorithm to pick an item based on its probability?

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So with each item store a number that marks its relative probability, for example if you have 3 items one should be twice as likely to be selected as either of the other two then your list will have:

`````` [{A,1},{B,1},{C,2}]
``````

Then sum the numbers of the list (i.e. 4 in our case). Now generate a random number and choose that index. int index = rand.nextInt(4); return the number such that the index is in the correct range.

Java code:

``````class Item {
int reletiveProb;
String name;

//Getters Setters and Constructor
}

...

class RandomSelector {
List<Item> items = new List();
Random rand = new Random();
int totalSum = 0;

RandomSelector() {
for(Item item : items) {
totalSum = totalSum + item.reletiveProb;
}
}

public Item getRandom() {

int index = rand.nextInt(totalSum);
int sum = 0;
int i=0;
while(sum < index ) {
sum = sum + items.get(i++).reletiveProb;
}
return items.get(i-1);
}
}
``````
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thanks Usman. but I wonder should I take i-th item or (i-1)th item ? I mean items.get(i-1) instead of items.get(i) –  Ruzanna Feb 17 '12 at 16:05
i-1 good point. –  Usman Ismail Feb 17 '12 at 16:25

pretend that we have the following list

``````Item A 25%
Item B 15%
Item C 35%
Item D 5%
Item E 20%
``````

Lets pretend that all the probabilities are integers, and assign each item a "range" that calculated as follows.

``````Start - Sum of probability of all items before
End - Start + own probability
``````

The new numbers are as follows

``````Item A 0 to 25
Item B 26 to 40
Item C 41 to 75
Item D 76 to 80
Item E 81 to 100
``````

Now pick a random number from 0 to 100. Lets say that you pick 32. 32 falls in Item B's range.

mj

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1. Generate a uniformly distributed random number.
2. Iterate through your list until the cumulative probability of the visited elements is greater than the random number

Sample code:

``````double p = Math.random();
double cumulativeProbability = 0.0;
for (Item item : items) {
cumulativeProbability += item.probability();
if (p <= cumulativeProbability) {
return item;
}
}
``````
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nice & lightweight –  myro Apr 25 '12 at 11:22

You can try the Roulette Wheel Selection.

First, add all the probabilities, then scale all the probabilities in the scale of 1, by dividing each one by the sum. Suppose the probabilities are `A(0.4), B(0.3), C(0.25) and D(0.05)`. Then you can generate a random floating-point number in the range [0, 1]. Now you can decide like this:

``````random number between 0.00 and 0.40 -> pick A
between 0.40 and 0.70 -> pick B
between 0.70 and 0.95 -> pick C
between 0.95 and 1.00 -> pick D
``````

You can also do it with random integers - say you generate a random integer between 0 to 99 (inclusive), then you can make decision like the above.

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(+1) It bothers me that this algorithm almost always seems to be described in terms of GAs (your link on Wikipedia and see here also). The weighted roulette wheel algorithm has all kinds of uses that have nothing to do with GAs (such as this very question). –  Michael McGowan Feb 17 '12 at 15:16
Yeah, that's weird. I also learned it's name while studying GAs, but I used the technique much before that for some other reason. –  0605002 Feb 17 '12 at 15:18

Bent's answer is good, but it doesn't account for the possibility of erroneously choosing an item with a probability of 0 in cases where p = 0. That's easy enough to handle by checking the probability (or perhaps not adding the item in the first place):

``````double p = Math.random();
double cumulativeProbability = 0.0;
for (Item item : items) {
cumulativeProbability += item.probability();
if (p <= cumulativeProbability && item.probability() != 0) {
return item;
}
}
``````
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