# Whats the most concise way to pick a random element by weight in c#?

Lets assume:

`List<element>` which element is:

``````public class Element(){
int Weight {get;set;}
}
``````

What I want to achieve is, select an element randomly by the weight. For example:

``````Element_1.Weight = 100;
Element_2.Weight = 50;
Element_3.Weight = 200;
``````

So

• the chance `Element_1` got selected is 100/(100+50+200)=28.57%
• the chance `Element_2` got selected is 50/(100+50+200)=14.29%
• the chance `Element_3` got selected is 200/(100+50+200)=57.14%

I know I can create a loop, calculate total, etc...

What I want to learn is, whats the best way to do this by Linq in ONE line (or as short as possible), thanks.

UPDATE

I found my answer below. First thing I learn is: Linq is NOT magic, it's slower then well-designed loop.

So my question becomes find a random element by weight, (without as short as possible stuff :)

-
So you want short code, but you don't care about it being slow? –  CodesInChaos Feb 4 '12 at 14:35
Linq will be slower that loop based code. If you want fast code, you need to precompute in `O(n)` so you can a `O(1)` lookup. But the code for that will be relatively complex. –  CodesInChaos Feb 4 '12 at 14:38
How do you think Linq(to objects) works? Magic? It just encapsulates the loop, and is typically slower by a factor of about 2-3 than hand written loops. The main advantage of linq is shorter clearer code. –  CodesInChaos Feb 4 '12 at 14:40
LINQ is indeed slower than writing an efficent iterative algorithm yourself. The reason for linq is that it is much easier to read/use and far less likely to result in a bug. –  roken Feb 4 '12 at 14:42
@CodeInChaos - 2 to 3 times slower is a gross exaggeration. –  roken Feb 4 '12 at 14:43

If you want a generic version (useful for using with a (singleton) randomize helper, consider whether you need a constant seed or not)

usage:

``````randomizer.GetRandomItem(items, x => x.Weight)
``````

code:

``````public T GetRandomItem<T>(IEnumerable<T> itemsEnumerable, Func<T, int> weightKey)
{
var items = itemsEnumerable.ToList();

var totalWeight = items.Sum(x => weightKey(x));
var randomWeightedIndex = _random.Next(totalWeight);
var itemWeightedIndex = 0;
foreach(var item in items)
{
itemWeightedIndex += weightKey(item);
if(randomWeightedIndex < itemWeightedIndex)
return item;
}
throw new ArgumentException("Collection count and weights must be greater than 0");
}
``````
-
I love this solution, looks very very decent. In addition, I will edit and allow `totalWeight=0`, then just random pick one (with equal chance since them weights are same) without throw an exception. –  Eric Yin Feb 4 '12 at 15:42
I think here I found an issue (a little issue), you should use `randomWeightedIndex = _random.Next(totalWeight)+1;`, then compare `if(randomWeightedIndex <= itemWeightedIndex)`. Otherwise the chance of been selected is slightly different of my requirement in my question. –  Eric Yin Feb 4 '12 at 15:46
I am rather sure it doesn't make a difference. –  doblak Feb 4 '12 at 15:52
It makes. Lets assume `A=0, B=2`, the chance about A been selected is 0%, and B is 100%. `R=rand.Next(2)` will return 0-1. When R=1, A will be selected, Which becomes 50% for A and B. If use +1, R=1 to 2, neither will <=0 –  Eric Yin Feb 4 '12 at 15:59
At zero based indexes it makes a difference, but I consider weight value 0 as "0% chance", so ... it all depends on the definition. However it's nice to see you find it useful. –  doblak Feb 4 '12 at 20:41
show 1 more comment
``````// assuming rnd is an already instantiated instance of the Random class
var max = list.Sum(y => y.Weight);
var rand = rnd.Next(max);
var res = list
.FirstOrDefault(x => rand >= (max -= x.Weight));
``````
-
Factor out `list.Max(...)`. Your current code is `O(n^2)`. If you factor it out, it's only `O(n*log(n))` –  CodesInChaos Feb 4 '12 at 14:48
If you need First(), and you already use Random, why would you order by Random? Also, I'd cache list.Max, no reason to calculate the max on each iteration. –  Abel Feb 4 '12 at 14:54
Anyway, to @allguys, I think I just use loop :( –  Eric Yin Feb 4 '12 at 14:54
@EricYin: he uses Random on max weight, because you said that 200 should have a higher chance of being selected than 50. However, I'm uncertain whether it matches the sum(weight)-weighing you put in your question. The ordering seems indeed redundant (see my earlier comment). –  Abel Feb 4 '12 at 14:57
The `minWeight` is to ensure the items are chosen more often as their weight increases. And the random order (@Abel) is for selecting a random item from the result set, as just selecting the first would never yield the `Weight=50` item from the example, even if `minWeight` would be `< 50` –  Nuffin Feb 4 '12 at 15:02

This is a fast solution with precomputation. The precomputation takes `O(n)`, the search `O(log(n))`.

Precompute:

``````int[] lookup=new int[elements.Length];
lookup[0]=elements[0].Weight-1;
for(int i=1;i<lookup.Length;i++)
{
lookup[i]=lookup[i-1]+elements[i].Weight;
}
``````

To generate:

``````int total=lookup[lookup.Length-1];
int chosen=random.GetNext(total);
int index=Array.BinarySearch(lookup,chosen);
if(index<0)
index=~index;
return elements[index];
``````

But if the list changes between each search, you can instead use a simple `O(n)` linear search:

``````int total=elements.Sum(e=>e.Weight);
int chosen=random.GetNext(total);
int runningSum=0;
foreach(var element in elements)
{
runningSum+=element.Weight;
if(chosen<runningSum)
return element;
}
``````
-
Where's the LINQ from the question? ;) –  Abel Feb 4 '12 at 15:11
`int total=elements.Sum(e=>e.Weight)` :P That's the only place where I found linq useful in this problem. I couldn't find a fast and clean way to perform the search itself with linq. –  CodesInChaos Feb 4 '12 at 15:14

This could work:

``````int weightsSum = list.Sum(element => element.Weight);
int start = 1;
var partitions = list.Select(element =>
{
var oldStart = start;
start += element.Weight;
return new { Element = element, End = oldStart + element.Weight - 1};
});

var randomWeight = random.Next(weightsSum);
var randomElement = partitions.First(partition => (partition.End > randomWeight)).
Select(partition => partition.Element);
``````

Basically, for each element a partition is created with an end weight. In your example, Element1 would associated to (1-->100), Element2 associated to (101-->151) and so on...

Then a random weight sum is calculated and we look for the range which is associated to it.

You could also compute the sum in the method group but that would introduce another side effect...

Note that I'm not saying this is elegant or fast. But it does use linq (not in one line...)

-
thanks. I think I will leave linq except the sum part, since it creates too much new object on the way –  Eric Yin Feb 4 '12 at 15:44