Problem with 64 bit R's optim under windows 7

I am currently in the final phase of developing my first R package which is supposed to fit multinomial processing tree (MPT) models (see its homepage for the current version). The model fitting is achieved by R's `optim` function.
Today I was playing around with it for the first time on a windows 7 machine and noticed something really strange: `optim` does not converge succesfully when using the 64 bit version of R. This looks like a bug to me (especially as `nlminb` converges for both R versions). As `optim` is at the core of my package, any help on this question is greatly appreciated.

Here comes a minimally reproducible example (normally the model is specified via expressions and not specified in the objective function, but for simplicity I put everything in the objective function here):

``````# The objective function:
llk.tree <- function (Q, data)
{
p <- Q[1]
q <- Q[2]
r <- Q[3]
e <- rep(NA,4)
e[1] <- p * q * r
e[2] <- p * q * (1-r)
e[3] <- p * (1-q) * r
e[4] <- p * (1-q) * (1-r) + (1-p)

llk <- sum(data * log(e))
if (is.na(llk))
llk <- -1e+19
if (llk == -Inf)
llk <- -1e+19
return(-llk)
}

# The call to optim:
optim(runif(3, 0.1, 0.9), llk.tree, data = c(24, 65, 30, 61), method = "L-BFGS-B", lower = rep(0, 3), upper = rep(1, 3))
``````

This example reproduces an example from a seminal paper on MPTs by Riefer & Batchelder, namely row 1 in Table 1 p. 327 (expected parameter values would be p = 1, q = .49 and r = .30).

Running it on a 32 bit R always gives the correct result (tried with versions 2.12.2 and 2.13.0):

``````\$par
[1] 1.0000000 0.4944449 0.3000001

\$value
[1] 234.7110

\$counts
11       11

\$convergence
[1] 0

\$message
[1] "CONVERGENCE: REL_REDUCTION_OF_F <= FACTR*EPSMCH"
``````

(Note that count may differ due to random starting values.)

Running it on a 64 bit R on the other hand may produce such a (wrong) result:

``````\$par
[1] 0.8668081 0.6326655 0.1433857

\$value
[1] 257.7328

\$counts
3        3

\$convergence
[1] 0

\$message
[1] "CONVERGENCE: REL_REDUCTION_OF_F <= FACTR*EPSMCH"
``````

The returned value of the objective function and the returned parameter values differ on each run, but count is always 3!

Note that running `nlminb` produces correct results on 32 bit and 64 bit R:

``````nlminb(runif(3, 0.1, 0.9), llk.tree, data = c(24, 65, 30, 61), lower = 0, upper = 1)

\$par
[1] 1.0000000 0.4944445 0.3000000

\$objective
[1] 234.711

\$convergence
[1] 0

\$iterations
[1] 14

\$evaluations
19       55

\$message
[1] "relative convergence (4)"
``````

One final note: We have examples (this is our simplest example model) that worked on 64 bit R and `optim` but more examples (like the one shown here) did not work.

And count is always 3...

EDIT:

When fixing the starting values (thanks to Joshua Ulrich) `optim` does not move away from those fixed values under 64 bit R:

``````optim(c(0.5, 0.5, 0.5), llk.tree, data = c(24, 65, 30, 61), method = "L-BFGS-B", lower = rep(0, 3), upper = rep(1, 3))

\$par
[1] 0.5 0.5 0.5

\$value
[1] 276.1238

\$counts
3        3

\$convergence
[1] 0

\$message
[1] "CONVERGENCE: REL_REDUCTION_OF_F <= FACTR*EPSMCH"
``````
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Can you provide a value for `set.seed()` that produces the incorrect result? –  Joshua Ulrich Apr 18 '11 at 20:28
running it with specified instead of random starting values produces the error on my machine e.g. .5: `optim(c(0.5, 0.5, 0.5), llk.tree, data = c(24, 65, 30, 61), method = "L-BFGS-B", lower = rep(0, 3), upper = rep(1, 3))` –  Henrik Apr 18 '11 at 20:32
@ Joshua, please see my edit which makes me even more speechless... –  Henrik Apr 18 '11 at 20:37
For as far as I can see it, you ran into a bug. –  Joris Meys Apr 19 '11 at 8:58
@Joshua Thanks for the comment. I will wait another day for other comments here, and then post on the mailing list. –  Henrik Apr 19 '11 at 9:29

We did some more testing today and found the same problem as described in the question under Linux using 64 bit R.

However, thanks to Joachim Vandekerckhove for this ingenious idea, we tried a simple change that solved the problem (although the issue remains suspicious). At the end of the objective function if `llk` is `Inf` we set it to an extremely high value (was `1e19`).
Using a smaller value (e.g., `1e10`) removes the problem on 64 bit machines (so far tested on Linux):

``````llk.tree <- function (Q, data)
{
p <- Q[1]
q <- Q[2]
r <- Q[3]
e <- rep(NA,4)
e[1] <- p * q * r
e[2] <- p * q * (1-r)
e[3] <- p * (1-q) * r
e[4] <- p * (1-q) * (1-r) + (1-p)

llk <- sum(data * log(e))
if (is.na(llk))
llk <- -1e+10
if (llk == -Inf)
llk <- -1e+10
return(-llk)
}

# The call to optim:
optim(runif(3, 0.1, 0.9), llk.tree, data = c(24, 65, 30, 61), method = "L-BFGS-B", lower = rep(0, 3), upper = rep(1, 3))
``````

This returns the correct result!

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