# I need random algorithm with weighing options in .net

I have a requirement in my .net project where I need to select an item from a collection, each item has a Weight (integer from 1 to 10) assigned to it. I need a random generator that would take this weight into consideration i.e. the higher the weight, the more chances the object would be selected. Any code samples in .net are appreciated, although algorithm description is nice, too. Thanks

Edit: Quick copy/paste C# code in case someone stumbles upon this.

``````    class RandomWeightedSelector<T>
{
private List<T> items = new List<T>();

public void Add(T item, uint weight = 1)
{
for (int i = 0; i < weight; i++)
items.Add(item);
}

public T GetRandom()
{
return items[new Random().Next(0, items.Count)];
}
}
``````
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You do not want to be creating a new random every call to `GetRandom`. The default constructor for `Random` seeds the generator with the system uptime in milliseconds. If you call your `GetRandom` more than once a millisecond, you will be returned the same value. Even if you don't, you could be returning results which have worse 'randomness' than just reusing a single `Random` instance. –  Dolphin Jul 1 '10 at 14:05

## 2 Answers

Here's an algorithm which doesn't require adding the items multiple times to a list. It can also work with non-integer weights, although if you're using NextDouble from System.Random, you'll have to scale all of the weights to add up to 1, or multiply the value from NextDouble with S to get it in the desired range.

Given a list L of items (I,W), where I is the item and W is the weight:

1. Add all of the weights together. Call this sum S.
2. Generate a random number between 0 and S (excluding S, but including 0). Call this value R.
3. Initialize a variable to 0 to keep track of the running total. We'll call this T.
4. For each item (I,W) in L:
1. T=T+W
2. If T > R, return I.
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Instead of scaling your weights, you could just use `NextDouble()*S` –  Justin L. Jun 30 '10 at 23:05
@Justin: Yes, that would also work. I've updated my post accordingly. –  Michael Madsen Jun 30 '10 at 23:13

Make a list and insert each item in Weight number of times. Then choose a random item from the list.

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Thanks, that was simple :) –  Tomislav Markovski Jun 30 '10 at 21:33
It should be noted that this works because your weights are always going to be integers. –  Justin L. Jun 30 '10 at 21:39
Yes, that is a requirement. Weight will always be integer and at least 1. Upper weight bound is not important it seems. –  Tomislav Markovski Jun 30 '10 at 21:45