# Calculate exact result of complex throw of two D30

Okay, this bugged me for several years, now. If you sucked in statistics and higher math at school, turn away, now. Too late.

Okay. Take a deep breath. Here are the rules. Take two thirty sided dice (yes, they do exist) and roll them simultaneously.

• If both dice show <= 5 or >= 26, throw again and add the result to what you have
• If one is <= 5 and the other >= 26, throw again and subtract the result from what you have
• Repeat until either is > 5 and < 26!

If you write some code (see below), roll those dice a few million times and you count how often you receive each number as the final result, you get a curve that is pretty flat left of 1, around 45° degrees between 1 and 60 and flat above 60. The chance to roll 30.5 or better is greater than 50%, to roll better than 18 is 80% and to roll better than 0 is 97%.

Now the question: Is it possible to write a program to calculate the exact value f(x), i.e. the probability to roll a certain value?

Background: For our role playing game "Jungle of Stars" we looked for a way to keep random events in check. The rules above guarantee a much more stable outcome for something you try :)

For the geeks around, the code in Python:

``````import random
import sys

def OW60 ():
"""Do an open throw with a "60" sided dice"""
val = 0
sign = 1

while 1:
r1 = random.randint (1, 30)
r2 = random.randint (1, 30)

#print r1,r2
val = val + sign * (r1 + r2)
islow = 0
ishigh = 0
if r1 <= 5:
islow += 1
elif r1 >= 26:
ishigh += 1
if r2 <= 5:
islow += 1
elif r2 >= 26:
ishigh += 1

if islow == 2 or ishigh == 2:
sign = 1
elif islow == 1 and ishigh == 1:
sign = -1
else:
break

#print sign

#print val
return val

result = [0] * 2000
N = 100000
for i in range(N):
r = OW60()
x = r+1000
if x < 0:
print "Too low:",r
if i % 1000 == 0:
sys.stderr.write('%d\n' % i)
result[x] += 1

i = 0
while result[i] == 0:
i += 1

j = len(result) - 1
while result[j] == 0:
j -= 1

pSum = 0
# Lower Probability: The probability to throw this or less
# Higher Probability: The probability to throw this or higher
print "Result;Absolut Count;Probability;Lower Probability;Rel. Lower Probability;Higher Probability;Rel. Higher Probability;"
while i <= j:
pSum += result[i]
print '%d;%d;%.10f;%d;%.10f;%d;%.10f' % (i-1000, result[i], (float(result[i])/N), pSum, (float(pSum)/N), N-pSum, (float(N-pSum)/N))
i += 1
``````
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The curve you describe is the cumulative probability. The probability density curve for this data is interesting. It has two clear peaks (one at 26, and one at 36), with a valley at the mid-point (31). That alone makes me think that your answer will be difficult to determine! – e.James Nov 19 '08 at 22:41
I know :) I already asked to professors for statistics and they couldn't think of an answer ... – Aaron Digulla Nov 20 '08 at 7:54
that should have been "two professors" – Aaron Digulla Nov 20 '08 at 7:58

I had to first rewrite your code before I could understand it:

``````def OW60(sign=1):
r1 = random.randint (1, 30)
r2 = random.randint (1, 30)
val = sign * (r1 + r2)

islow  = (r1<=5)  + (r2<=5)
ishigh = (r1>=26) + (r2>=26)

if islow == 2 or ishigh == 2:
return val + OW60(1)
elif islow == 1 and ishigh == 1:
return val + OW60(-1)
else:
return val
``````

Maybe you might find this less readable; I don't know. (Do check if it is equivalent to what you had in mind.) Also, regarding the way you use "result" in your code -- do you know of Python's dicts?

Anyway, matters of programming style aside: Suppose F(x) is the CDF of OW60(1), i.e.

``````F(x) = the probability that OW60(1) returns a value ≤ x.
``````

Similarly let

``````G(x) = the probability that OW60(-1) returns a value ≤ x.
``````

Then you can calculate F(x) from the definition, by summing over all (30×30) possible values of the result of the first throw. For instance, if the first throw is (2,3) then you'll roll again, so this term contributes (1/30)(1/30)(5+F(x-5)) to the expression for F(x). So you'll get some obscenely long expression like

``````F(x) = (1/900)(2+F(x-2) + 3+F(x-3) + ... + 59+F(x-59) + 60+F(x-60))
``````

which is a sum over 900 terms, one for each pair (a,b) in [30]×[30]. The pairs (a,b) with both ≤ 5 or both ≥26 have a term a+b+F(x-a-b), the pairs with one ≤5 and one ≥26 have a term a+b+G(x-a-b), and the rest have a term like (a+b), because you don't throw again.

Similarly you have

``````G(x) = (1/900)(-2+F(x-2) + (-3)+F(x-3) + ... + (-59)+F(x-59) + (-60)+F(x-60))
``````

Of course, you can collect coefficients; the only F terms that occur are from F(x-60) to F(x-52) and from F(x-10) to F(x-2) (for a,b≥26 or both≤5), and the only G terms that occur are from G(x-35) to G(x-27) (for one of a,b≥26 and the other ≤5), so there are fewer terms than 30 terms. In any case, defining the vector V(x) as

``````V(x) = [F(x-60) G(x-60) ... F(x-2) G(x-2) F(x-1) G(x-1) F(x) G(x)]
``````

(say), you have (from those expressions for F and G) a relation of the form

``````V(x) = A*V(x-1) + B
``````

for an appropriate matrix A and an appropriate vector B (which you can calculate), so starting from initial values of the form V(x) = [0 0] for x sufficiently small, you can find F(x) and G(x) for x in the range you want to arbitrarily close precision. (And your f(x), the probability of throwing x, is just F(x)-F(x-1), so that comes out as well.)

There might be a better way. All said and done, though, why are you doing this? Whatever kind of distribution you want, there are nice and simple probability distributions, with the appropriate parameters, that have good properties (e.g. small variance, one-sided errors, whatever). There is no reason to make up your own ad-hoc procedure to generate random numbers.

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re: dict -> I was too lazy to fill the gaps between the keys in the dict. If you run my code, you'll see that some results have a count of 0. So an array was much more simple. – Aaron Digulla Nov 21 '08 at 12:09
I need a random number generator which people can use during a role playing game. The generators works well enough; we just wondered what its properties were. – Aaron Digulla Nov 21 '08 at 12:10
... during a role playing game without a computer :) – Aaron Digulla Nov 21 '08 at 12:19
I've read this several times, now, and I can't quite follow you. How do you get "(1/30)(1/30)(5+F(x-5))"?? Why do you add the value of the roll to "F(x-5)"? – Aaron Digulla Nov 24 '08 at 8:57
Probability of an event = sum_(over each way of that event happening){Probability of that way}. So here, F(x) = the probability of the "final result" being ≤x = sum_(over all possible results of the first throw){(probability of that throw)*(what should happen in the rest of the throws)}. – ShreevatsaR Nov 24 '08 at 15:29

I've done some basic statistics on a sample of 20 million throws. Here are the results:

``````Median: 17 (+18, -?) # This result is meaningless
Arithmetic Mean: 31.0 (±0.1)
Standard Deviation: 21 (+1, -2)
Root Mean Square: 35.4 (±0.7)
Mode: 36 (seemingly accurate)
``````

The errors were determined experimentally. The arithmetic mean and the mode are really accurate, and changing the parameters even quite aggressively doesn't seem to influence them much. I suppose the behaviour of the median has already been explained.

Note: don't take these number for a proper mathematical description of the function. Use them to quickly get a picture of what the distribution looks like. For anything else, they aren't accurate enough (even though they might be precise.

Perhaps this is helpful to someone.

Edit 2:

Based on just 991 values. I could've crammed more values into it, but they would've distorted the result. This sample happens to be fairly typical.

Edit 1:

here are the above values for just one sixty-sided die, for comparison:

``````Median: 30.5
Arithmetic Mean: 30.5
Standard Deviation: 7.68114574787
Root Mean Square: 35.0737318611
``````

Note that these values are calculated, not experimental.

-

Compound unbounded probability is... non-trivial. I was going to tackle the problem the same way as James Curran, but then I saw from your source code that there could be a third set of rolls, and a fourth, and so on. The problem is solvable, but far beyond most die rolling simulators.

Is there any particular reason that you need a random range from -Inf to +Inf with such a complex curve around 1-60? Why is the bell curve of 2D30 not acceptable? If you explain your requirements, it is likely someone could provide a simpler and more bounded algorithm.

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We needed something with these properties: - Return a value between 0 and 100 (very roughly; we got 1 to 60 and that was "good enough") - Simple to execute many time in a game - Values below 0 should be really rare – Aaron Digulla Nov 20 '08 at 7:57

Well, let's see. The second throw (which will sometimes be added or subtracted to the first roll) has a nice easily predictable bell curve around 31. The first roll, of course, is the problem.

For the first roll, we have 900 possible combinations.

• 50 combinations result in adding the second roll.
• 25 combinations result in subtracting the second roll.
• Leaving 825 combinations which match the bell curve of the second roll.

The subtracting set (pre-subtraction) will form a bell curve in the range (27..35). The lower half of the adding set will form a bell curve in the range (2..10), while the upper half will form a bell curve in the range (52...60)

My probablity is a bit rusty, so I can't figure the exact values for you, but it should be clear that these lead to predictable values.

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You seem to have read the problem the same way I did, which is incorrect. His source code illustrates that there may be a third roll, or a fourth, or a fifth... – Sparr Nov 19 '08 at 21:12
But the additional rolls all have a probability which quickly approaches 0. So it should be possible to bound them. – Aaron Digulla Nov 20 '08 at 7:56
This attempt is not so bad. I can confirm these "child" bell curves (you can easily see them by importing the output in Excel and rendering the respective columns). Now all that is missing is the correct limes function for the recursive probabilities. – Aaron Digulla Nov 20 '08 at 8:02