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My results of using splines::ns with a least-squares fit varied with no rhyme or reason that I could see, and I think I have traced the problem to the ns function itself.

I have reduced the problem to this:

N <- 0
for (i in 1:100) N <- N + identical(ns(1:10,3),ns(1:10,3))

My results average about 39, range 34--44 or so, but I expected 100 every time. Why should the results of ns be random? If I substitute bs for ns in both places, I get 100, as expected. My set.seed(1) hopes to demonstrate that the randomness I get is not what R intended.

In a clean session, using RStudio and R version 2.14.2 (2012-02-29), I get 39, 44, 38, etc. Everyone else seems to be getting 100.

Further info:

Substituing splines::ns for ns gives the same results. A clean vanilla session gives the same results. My computer has 8 cores.

The differences, when they happen, are generally or always 2^-54:

Max <- 0
for (i in 1:1000) Max <- max( Max, abs(ns(1:10,3)-ns(1:10,3)) )

with result [1] 5.551115e-17 5.551115e-17. This variability causes me big problems down the line, because my optimize(...)$min now varies sometimes even in the first digit, making results not repeatable.

My sessionInfo with a clean vanilla session:

I created what I understand to be known as a clean vanilla session using

> .Last <- function() system("R --vanilla") 
> q("no")

This blows away the session, and when I restart it, I get my clean vanilla session. Then, in answer to Ben Bolker's clarifying question, I did this at the beginning of my clean vanilla session:

> sessionInfo()
R version 2.14.2 (2012-02-29)
Platform: x86_64-pc-mingw32/x64 (64-bit)

[1] LC_COLLATE=English_United States.1252 
[2] LC_CTYPE=English_United States.1252   
[3] LC_MONETARY=English_United States.1252
[4] LC_NUMERIC=C                          
[5] LC_TIME=English_United States.1252    

attached base packages:
[1] stats     graphics  grDevices utils     datasets  methods   base     

other attached packages:
[1] Revobase_6.1.0   RevoMods_6.1.0   RevoScaleR_3.1-0 lattice_0.20-0  
[5] rpart_3.1-51    

loaded via a namespace (and not attached):
[1] codetools_0.2-8   foreach_1.4.0     grid_2.14.2       iterators_1.0.6  
[5] pkgXMLBuilder_1.0 revoIpe_1.0       tools_2.14.2      XML_3.9-1.1      
> require(splines)
Loading required package: splines
> N <- 0
> set.seed(1)
> for (i in 1:100) N <- N + identical(ns(1:10,3),ns(1:10,3))
> N
[1] 32
share|improve this question
Start a clean session. I get 100 every time. –  Tyler Rinker Dec 14 '12 at 2:36
My version: "R version 2.15.1 (2012-06-22)" and "2.15.1" for splines. –  Tyler Rinker Dec 14 '12 at 3:18
I downloaded R 2.14.2 for windows and still get 100. Start a clean vanilla session (LINK). –  Tyler Rinker Dec 14 '12 at 3:34
Sorry see the link above, I suspect you have a session file in your working directory that loads automatically. It'll probably be a .Rhistory or .Rdata file. –  Tyler Rinker Dec 14 '12 at 3:40
Well, clicking on the nice "help" link next to the AddComment button AND clicking on "learn more..." would seem to be the only logical thing to do. –  Carl Witthoft Dec 14 '12 at 13:46

1 Answer 1

This is the answer I got from REvolution Technical Suppoort (posted here with permission):

The problem here is an issue of floating point arithmetic. Revolution R uses the Intel mkl BLAS library for some computations, which differs from what CRAN-R uses and uses this library for the 'ns()' computation. In this case you will also get different results depending on whether you are doing the computation on a Intel-processor based machine or a machine with an AMD chipset.

We do ship the same BLAS and Lapack DLL's that are shipped with CRAN-R, but they are not the default ones used with Revolution R. Customers can revert the installed DLL's if they so choose and prefer, by doing the following:

1). Renaming 'Rblas.dll' to 'Rblas.dll.bak' and 'Rlapack.dll' to 'Rlapack.dll.bak' in the folder 'C:\Revolution\R-Enterprise-6.1\R-2.14.2\bin\x64'.

2). Rename the files 'Rblas.dll.0' and 'Rlapack.dll.0' in this folder to Rblas.dll and Rlpack.dll respectively.

Their suggestion worked perfectly. I have renamed these files back and forth several times, using both RStudio (with Revolution R) and Revolution R's own IDE, always with the same result: The BLAS dlls give me N==40 or so, and the CRAN-R dlls give me N==100.

I will probably go back to BLAS, because in my tests, it is 8-times faster for %*% and 4-times faster for svd(). And that is just using one of my cores (verified by the CPU usage column of the Processes tab of Windows Task Manager).

I am hoping someone with better understanding can write a better answer, for I still don't really understand the full ramifications of this.

share|improve this answer
Yes, but ... how can you get different answers on different repeated runs when running on the same machine ?? @flodel suggested above that maybe different runs were getting run on different CPUs etc. within the same machine, but hard to imagine the chipsets varying within runs on a single machine ... –  Ben Bolker Dec 18 '12 at 20:45
I agree. While RevolutionR's response may be technically correct, if the Intel libraries produce randomly varying results, that would be BAD . If there are other readers out there who have R-Enterprise installed, I'd love to see them run this same test (w/ the different libraries). –  Carl Witthoft Dec 18 '12 at 21:03
I realise the thread is a year old by now, but wanted to add. The same (or worse) behavior is seen in the new Revolution R 7.0 (R 3.0.2), with MKL. I get values which differ substantially. In the problem here if I modify the code to use all.equal() rather than identical(), the MKL library does OK. My question is here: link –  Peter Dec 19 '13 at 13:46

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