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I need to calculate a list of very small numbers such as

(0.1)^1000, 0.2^(1200),

and then normalize them so they will sum up to one i.e.

a1 = 0.1^1000, a2 = 0.2^1200

And I want to calculate a1' = a1/(a1+a2), a2'=a2(a1+a2).

I'm running into underflow problems, as I get a1=0. How can I get around this? Theoretically I could deal with logs, and then log(a1) = 1000*log(0.l) would be a way to represent a1 without underflow problems - But in order to normalize I would need to get log(a1+a2) - which I can't compute since I can't represent a1 directly.

I'm programming with R - as far as I can tell there is no data type such Decimal in c# which allows you to get better than double-precision value.

Any suggestions will be appreciated, thanks

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Given that you are doing a division can you factorize the numbers by hand first? –  James Apr 27 '11 at 10:33
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4 Answers 4

Mathematically spoken, one of those numbers will be appx. zero, and the other one. The difference between your numbers is huge, so I'm even wondering if this makes sense.

But to do that in general, you can use the idea from the logspace_add C-function that's underneath the hood of R. One can define logxpy ( =log(x+y) ) when lx = log(x) and ly = log(y) as :

logxpy <- function(lx,ly) max(lx,ly) + log1p(exp(-abs(lx-ly)))

Which means that we can use :

> la1 <- 1000*log(0.1)
> la2 <- 1200*log(0.2)

> exp(la1 - logxpy(la1,la2))
[1] 5.807714e-162

> exp(la2 - logxpy(la1,la2))
[1] 1

This function can be called recursively as well if you have more numbers. Mind you, 1 is still 1, and not 1 minus 5.807...e-162 . If you really need more precision and your platform supports long double types, you could code everything in eg C or C++, and return the results later on. But if I'm right, R can - for the moment - only deal with normal doubles, so ultimately you'll lose the precision again when the result is shown.


EDIT :

to do the math for you :

log(x+y) = log(exp(lx)+exp(ly))
         = log( exp(lx) * (1 + exp(ly-lx) )
         = lx + log ( 1 + exp(ly - lx)  )

Now you just take the largest as lx, and then you come at the expression in logxpy().

EDIT 2 : Why take the maximum then? Easy, to assure that you use a negative number in exp(lx-ly). If lx-ly gets too big, then exp(lx-ly) would return Inf. That's not a correct result. exp(ly-lx) would return 0, which allows for a far better result:

Say lx=1 and ly=1000, then :

> 1+log1p(exp(1000-1))
[1] Inf
> 1000+log1p(exp(1-1000))
[1] 1000
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Thanks for the reply. Regarding the difference of magnitude in my example - it was just an illustration, in practice i assume that at least some of the numbers would be of the same magnitude. Regarding your solution - could you maybe expand more why it works mathematically? I'm not sure myself... –  dan12345 Apr 27 '11 at 11:54
    
@user206903 : I'm tempted to say "I leave the exercise to the reader". This is basic math from highschool, but well. –  Joris Meys Apr 27 '11 at 12:14
    
@Joris Meys Why bother with taking the largest as lx rather than using the previous expression directly? –  James Apr 27 '11 at 12:46
    
@James : assuring you take the exp() of a negative number. if lx-ly is positive and too big, exp(lx-ly) returns Inf. If lx-ly is negative and too small, it returns 0. Say lx=1 and ly=1000, then 1000 + 0 is a far better answer than 1 + Inf. –  Joris Meys Apr 27 '11 at 13:00
    
Thanks, that was very helpful –  dan12345 Apr 27 '11 at 13:02
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The Brobdingnag package deals with very large or small numbers, essentially wrapping Joris's answer into a convenient form.

a1 <- as.brob(0.1)^1000
a2 <- as.brob(0.2)^1200
a1_dash <- a1 / (a1 + a2)
a2_dash <- a2 / (a1 + a2)
as.numeric(a1_dash)
as.numeric(a2_dash)
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+1 thx for the pointer –  Joris Meys Apr 27 '11 at 13:06
    
Hi, I'm running into problems regarding the usage of the Brobdingnag package - after setting a2 <- as.brob(0.1)^1000, a1 <- as.brob(0.1)^800, I get different results for using sum(a1,a2) and sum(a2,a1) - Each time the result equals the first argument given to the sum function. It seems that maybe sum is not overrided by the Brobdingang package even't though its supposed to? Or maybe i'm doing something wrong –  dan12345 Apr 28 '11 at 9:43
    
I created a new question for this problem, see –  dan12345 Apr 29 '11 at 15:23
    
I created a new question for this problem, see stackoverflow.com/questions/5822770/… –  dan12345 Apr 29 '11 at 15:23
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Maybe you can treat a1 and a2 as fractions. In your example, with

a1 = (a1num/a1denom)^1000  # 1/10
a2 = (a2num/a2denom)^1200  # 1/5

you would arrive at

a1' = (a1num^1000 * a2denom^1200)/(a1num^1000 * a2denom^1200 + a1denom^1000 * a2num^1200)
a2' = (a1denom^1000 * a2num^1200)/(a1num^1000 * a2denom^1200 + a1denom^1000 * a2num^1200)

which can be computed using the gmp package:

library(gmp)
a1 <- as.double(pow.bigz(5,1200) / (pow.bigz(5,1200)+ pow.bigz(10,1000)))
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Try the arbitrary precision package mpfr.

Ryacas may also be able to do arbitrary precision.

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