# In R why is factorial(100) displayed differently to prod(1:100)?

In R I am finding some odd behaviour that I can't explain and I am hoping someone here can. I believe that the value of 100! is this big number.

A few lines from the console showing expected behaviour...

``````>factorial( 10 )
[1] 3628800
>prod( 1:10 )
[1] 3628800
> prod( as.double(1:10) )
[1] 3628800
> cumprod( 1:10 )
[1]       1       2       6      24     120     720    5040   40320  362880 3628800
``````

However when I try 100! I get (notice how the resulting numbers begin to differ about 14 digits in):

``````> options(scipen=200) #set so the whole number shows in the output
> factorial(100)
[1] 93326215443942248650123855988187884417589065162466533279019703073787172439798159584162769794613566466294295348586598751018383869128892469242002299597101203456
> prod(1:100)
[1] 93326215443944102188325606108575267240944254854960571509166910400407995064242937148632694030450512898042989296944474898258737204311236641477561877016501813248
> prod( as.double(1:100) )
[1] 93326215443944150965646704795953882578400970373184098831012889540582227238570431295066113089288327277825849664006524270554535976289719382852181865895959724032
> all.equal( prod(1:100) , factorial(100) , prod( as.double(1:100) ) )
[1] TRUE
``````

If I do some tests against a variable set to the 'known' number of 100! then I see the following:

``````# This is (as far as I know) the 'true' value of 100!
> n<- as.double(93326215443944152681699238856266700490715968264381621468592963895217599993229915608941463976156518286253697920827223758251185210916864000000000000000000000000)
> factorial(100) - n
[1] -1902315522848807765998160811905210717565551993186466795054798772271710903343294674760811531554315419925519536152107160826913610179566298858520576
> prod(1:100) - n
[1] -48777321098687378615337456715518223527321845979140174232174327494146433419058837814379782860367062049372295798771978482741374619988879457910784
> prod(as.double(1:100)) - n
[1] 0
``````

The final result evaluates to zero, but the number returned for `prod( as.double( 1:100 ) )` does not display as I would expect, even though it correctly evaluates `prod( as.double( 1:100 ) ) - n` where `n` is a variable set to the value of 100!.

Can anyone explain this behaviour to me please? It should not be related to overflow etc as far as I am aware, as I am using a x64 system. Version and machine info below:

``````> .Machine\$double.xmax
[1] 1.798e+308
> str( R.Version() )
List of 14
\$ platform      : chr "x86_64-apple-darwin9.8.0"
\$ arch          : chr "x86_64"
\$ os            : chr "darwin9.8.0"
\$ system        : chr "x86_64, darwin9.8.0"
\$ status        : chr ""
\$ major         : chr "2"
\$ minor         : chr "15.2"
\$ year          : chr "2012"
\$ month         : chr "10"
\$ day           : chr "26"
\$ svn rev       : chr "61015"
\$ language      : chr "R"
\$ version.string: chr "R version 2.15.2 (2012-10-26)"
\$ nickname      : chr "Trick or Treat"
``````

Can anyone explain this to me? I don't doubt that R does everything correctly and this is most likely useR related. You might point out that since `prod( as.double( 1:100 ) ) - n` evaluates correctly what am I bothered about, but I am doing Project Euler Problem 20 so I needed the correct digits displayed.

Thanks

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To calculate the precise value of `100!` using R, do: `library(gmp); factorialZ(100)` – Josh O'Brien Jan 14 '13 at 15:15
@JoshO'Brien Many thanks! – Simon O'Hanlon Jan 14 '13 at 15:37
Thank you to all posters on this question. I think I now have a slightly better understanding of large integers in R. With `library(gmp)` as has been suggested by a couple of people I note that I can do `identical(factorialZ(100) , prod(as.bigz(1:100)))` which will return `[1]TRUE`. – Simon O'Hanlon Jan 14 '13 at 15:43

Your test with `all.equal` does not produce what you expect. `all.equal` can only compare two values. The third argument is positionally matched to `tolerance`, which gives the tolerance of the comparison operation. In your invocation to `all.equal` you give it a tolerance of `100!` which definitely leads to the comparison being true for absurdly differing values:

``````> all.equal( 0, 1000000000, prod(as.double(1:100)) )
[1] TRUE
``````

But even if you give it two arguments only, e.g.

``````all.equal( prod(1:100), factorial(100) )
``````

it would still produce `TRUE` because the default tolerance is `.Machine\$double.eps ^ 0.5`, e.g. the two operands have to match to about 8 digits which is definitely the case. On the other hand, if you set the tolerance to `0`, then neither three possible combinations emerge equal from the comparison:

``````> all.equal( prod(1:100), factorial(100), tolerance=0.0 )
[1] "Mean relative difference: 1.986085e-14"
> all.equal( prod(1:100), prod( as.double(1:100) ), tolerance=0.0 )
[1] "Mean relative difference: 5.22654e-16"
> all.equal( prod(as.double(1:100)), factorial(100), tolerance=0.0 )
[1] "Mean relative difference: 2.038351e-14"
``````

Also note that just because you've told R to print 200 significant numbers doesn't mean that they are all correct. Indeed, 1/2^53 has about 53 decimal digits but only the first 16 are considered meaningful.

This also makes your comparison to the "true" value flawed. Observe this. The ending digits in what R gives you for `factorial(100)` are:

``````...01203456
``````

You subtract `n` from it, where `n` is the "true" value of 100! so it should have 24 zeroes at the end and hence the difference should also end with the same digits that `factorial(100)` does. But rather it ends with:

``````...58520576
``````

This only shows that all those digits are non-significant and one should not really look into their value.

It takes 525 bits of binary precision in order to exactly represent 100! - that's 10x the precision of `double`.

-
Many thanks for the R-centric explanation. I will mark this one as the correct answer rather than Tim's (sorry!) because I feel it better answers my original question given the [r] tag. Thanks. – Simon O'Hanlon Jan 14 '13 at 14:03
And thanks, I should take more care with `all.equal()`! – Simon O'Hanlon Jan 14 '13 at 14:07

This has to do not with the maximum value for a `double` but with its precision.

`100!` has 158 significant (decimal) digits. IEEE `double`s (64 bit) have 52 bits of storage space for the mantissa, so you get rounding errors after about 16 decimal digits of precision have been exceeded.

Incidentally, `100!` is in fact, as you suspected,

``````93326215443944152681699238856266700490715968264381621468592963895217599993229915608941463976156518286253697920827223758251185210916864000000000000000000000000
``````

so all of the values R calculated are incorrect.

Now I don't know R, but it seems that `all.equal()` converts all three of those values to `float`s before comparing, and so their differences are lost.

-
Please carefully check my value of `n` above. It is EXACTLY the same as what you posted. I will wait a day or so to see if there are any other opinions on this before I mark this question as answered. Thanks. – Simon O'Hanlon Jan 14 '13 at 11:08
@SimonO101: You're right; I had overlooked that one when doing my comparisons. I have edited my answer accordingly. – Tim Pietzcker Jan 14 '13 at 11:10
Thanks Tim. Could you explain why R correctly evaluates `prod( as.double( 1:100 ) - 100!` (i.e. `=0`) if it is not correctly calculating the number in the first place? Also, if a 158 digit integer starts differing after the 14th digit that seems like a massive amount of rounding error? – Simon O'Hanlon Jan 14 '13 at 11:12
One possible solution would be the gmp package which provides an interface to the GNU Multiple Precision library from R. – Jackson Jan 14 '13 at 11:51
@TimPietzcker, that's correct - R does not have a built-in type for large integers like Python does. It's targeted at statistical data processing and not at solving challenges from the number theory. – Hristo Iliev Jan 14 '13 at 13:32

I will add a third answer just to graphically describe the behaviour you are encountering. Essentially, the double precision for factorial calculation is sufficient up to 22!, then it starts diverging more and more from the real value.

Around the 50!, there is a further distinction between the two methods factorial(x) and prod(1:x), with the latter yielding, as you indicated, values more similar to the "real" factor.

Code attached:

``````# Precision of factorial calculation (very important for the Fisher's Exact Test)
library(gmp)
perfectprecision<-list()
singleprecision<-c()
doubleprecision<-c()
for (x in 1:100){
perfectprecision[x][[1]]<-factorialZ(x)
singleprecision<-c(singleprecision,factorial(x))
doubleprecision<-c(doubleprecision,prod(1:x))
}

plot(0,col="white",xlim=c(1,100),ylim=c(0,log10(abs(doubleprecision[100]-singleprecision[100])+1)),
,ylab="Log10 Absolute Difference from Big Integer",xlab="x!")
for(x in 1:100) {
points(x,log10(abs(perfectprecision[x][[1]]-singleprecision[x])+1),pch=16,col="blue")
points(x,log10(abs(perfectprecision[x][[1]]-doubleprecision[x])+1),pch=20,col="red")
}
legend("topleft",col=c("blue","red"),legend=c("factorial(x)","prod(1:x)"),pch=c(16,20))
``````
-
+1 - sorry only just saw this answer. Thanks. – Simon O'Hanlon Nov 6 '13 at 0:43

Well, you can tell from the body of `factorial` that it calls `gamma`, which calls `.Primitive("gamma")`. What does `.Primitive("gamma")` look like? Like this.

For large inputs, `.Primitive("gamma")`'s behaviour is on line 198 of that code. It's calling

``````exp((y - 0.5) * log(y) - y + M_LN_SQRT_2PI +
((2*y == (int)2*y)? stirlerr(y) : lgammacor(y)));
``````

which is just an approximation.

By the way, the article on `Rmpfr` uses `factorial` as its example. So if you're trying to solve the problem, "just use the `Rmpfr` library".

-