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Let's say I have lots of cash I want to give out in random increments between $500 and $5,000. I'd like the lower end of the range to be much more probable than the higher range. What's the most efficient algorithm I can write in Ruby to randomly hand out cash in this manner?

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closed as unclear what you're asking by sawa, Neil Slater, EdChum, Dukeling, Trinimon Oct 3 '13 at 8:22

Please clarify your specific problem or add additional details to highlight exactly what you need. As it's currently written, it’s hard to tell exactly what you're asking. See the How to Ask page for help clarifying this question.If this question can be reworded to fit the rules in the help center, please edit the question.

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Could you add something you have tried? Your question currently asks for other SO users to solve your problem, efficiently too, with no apparent effort on your part. –  Neil Slater Oct 3 '13 at 6:50

3 Answers 3

I think the easiest way is to just use the case statement:

def get_price
  case rand(100) + 1
    when  1..50  then 500 
    when 50..75  then 1000
    when 75..99  then 2500
    when 99..100 then 10000
  end
end

p get_price # => 500

Calling get_price will return 500 with 50% probability but 10000 will only be returned 2% of the time.

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One approach is to start by defining a number of ranges and assigning a probability 'weight' for each. Here's an example:

weights = {[500,  1000] => 17,
           [1001, 1500] => 15,
           [1501, 2000] => 13,
           [2001, 2500] => 12,
           [2501, 3000] => 11,
           [3001, 3500] => 10,
           [3501, 4000] => 10,
           [4001, 4500] => 10,
           [4501, 5000] => 10}

Here, the range [1001, 1500], with weight 15, is 50% more likely to be selected than any of the four highest ranges, which each have a weight of 10. You can have any number of ranges and (as here) weights need not sum to 100. Here you could replace the four highest ranges with the single range [3001, 5000] => 40.

The idea is to select a range at random, using the weights you've provided and then select a random value within that range, where each value within the range is equally likely to be chosen.

ranges = weights.keys       # => [[500,  1000], [1001, 1500],.., [4501, 5000]]
cum_wights = weights.values # => [17, 15,.., 10] 
(1..weights.size-1).each {|i| cum_weights[i] += cum_weights[i-1]}
   # cum_weights => [17, 32,.., 108]

# Obtain range randomly
rn = rand(cum_weights) # => random number between 0 and cum_weights.last (here 108)
i = 0 # range index
i += 1 while cum_weights[i] <= rn
rr = ranges[i] # random range

# Obtain uniform random value in range rr
# Obtain uniform random value in range i
# Since `rn` is equally-likely for any value in `rr`,
cwt_min, cwt_max = (i > 0 ? cum_weights[i-1] + 1 : 0), cum_weights[i]
random_amount = rr.first + ((rn - cwt_min).to_f/(cwt_max - cwt_min + 1)) * (rr.last-rr.first + 1)

or simply generate another random number:

random_amount = rr.first + rand(rr.last-rr.first)

Incidentally, I am very experienced at giving away random amounts of money. Let me know if I can help.

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If you don't want to go to the trouble of choosing so many weights, you could choose a couple parameters for a Beta-Binomial distribution; for example, the red one here is right-skewed, with parameters a=.7, b=2: en.wikipedia.org/wiki/Beta-binomial_distribution n+1 would be the number of bins, and you could read off the weights by computing the pmf (shown under the graphs). –  Frank Oct 3 '13 at 6:10
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@Frank, that might be a good choice. There are many probability distributions that could be used; I just showed how it could be done with a discrete distribution. –  Cary Swoveland Oct 3 '13 at 6:20

Sounds like you want to generate random numbers with a Gaussian (aka normal) distribution skewed towards the left (or right, I can never keep them straight; the hump goes on the left).

A VBA implementation of the algorithm for sampling a skewed normal distribution is here (warning: popups): http://www.ozgrid.com/forum/showthread.php?t=108175

It ought not be difficult to translate it to ruby.

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A Gaussian is not what the OP wants here. –  AGS Oct 3 '13 at 4:21
    
Why not? He never said that the increments were granular at a level greater than integers. However, this question did get put on hold for lack of clarity, so it may be that I'm misunderstanding. –  J David Smith Oct 3 '13 at 10:44

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