[R] strange `nls' behaviour

Martin Maechler maechler at stat.math.ethz.ch
Mon Nov 12 15:25:38 CET 2007


>>>>> "DM" == Duncan Murdoch <murdoch at stats.uwo.ca>
>>>>>     on Mon, 12 Nov 2007 07:36:34 -0500 writes:

    DM> On 11/12/2007 6:51 AM, Joerg van den Hoff wrote:
    >> I initially thought, this should better be posted to r-devel
    >> but alas! no response. 

    DM> I think the reason there was no response is that your example is too 
    DM> complicated.  You're doing a lot of strange things (fitfunc as a result 
    DM> of deriv, using as.name, as.call, as.formula, etc.)  You should simplify 
    DM> it down to isolate the bug.  Thats a lot of work, but you're the one in 
    DM> the best position to do it.  I'd say there's at least an even chance 
    DM> that the bug is in your code rather than in nls().

yes.. and.. no : 
- His code is quite peculiar, but I think only slightly too complicated

- one could argue that the bug is in Joerg's thinking that
  something like
  	    nls(y ~ eval(fitfunc), ....)

  should be working at all.
  But then he had found by experiment that it (accidentally I   d'say)
  does work in many cases.

    DM> And 2.5.0 *is* ancient; please confirm the bug exists in R-patched if it 
    DM> turns out to be an R bug.

You are right, but indeed (as has Kate just said) it *does*
exist in current R versions.

I agree that the behavior of nls() here is sub-optimal.
It *should* be consistent, i.e. work the same for n=4,5,6,..

I had spent about an hour after Joerg's R-devel posting,
and found to be too busy with more urgent matters --
unfortunately forgetting to give *some* feedback about my findings.

It may well be that we find that nls() should give an
(intelligible) error message in such eval() cases - rather than
only in one case...

Martin Maechler


    DM> Duncan Murdoch




    DM> so  I  try  it  here.  sory  for  the
    >> lengthy explanation but it seems unavoidable. to quickly see
    >> the problem simply copy the litte example below and execute
    >> 
    >> f(n=5)
    >> 
    >> which  crashes. called with n !=  5 (and of course n>3 since
    >> there are 3 parameters in the model...) everything is as  it
    >> should be.
    >> 
    >> in detail:
    >> I  stumbled over the follwing _very_ strange behaviour/error
    >> when using `nls' which  I'm  tempted  (despite  the  implied
    >> "dangers") to call a bug:
    >> 
    >> I've  written a driver for `nls' which allows specifying the
    >> model and the data vectors using arbitrary  symbols.   these
    >> are  internally  mapped  to  consistent names, which poses a
    >> slight complication when using `deriv' to  provide  analytic
    >> derivatives. the following fragment gives the idea:
    >> 
    >> #-----------------------------------------
    >> f <- function(n = 4) {
    >> 
    >> x <- seq(0, 5, length  = n)
    >> 
    >> y <- 2 * exp(-1*x) + 2; 
    >> y <- rnorm(y,y, 0.01*y)
    >> 
    >> model <- y ~ a * exp (-b*x) + c
    >> 
    >> fitfunc <- deriv(model[[3]], c("a", "b", "c"), c("a", "b", "c", "x"))
    >> 
    >> #"standard" call of nls:
    >> res1 <- nls(y ~ fitfunc(a, b, c, x), start = c(a=1, b=1, c=1))
    >> 
    >> call.fitfunc <- 
    >> c(list(fitfunc), as.name("a"), as.name("b"), as.name("c"), as.name("x"))
    >> call.fitfunc <- as.call(call.fitfunc)
    >> frml <- as.formula("y ~ eval(call.fitfunc)")
    >> 
    >> #"computed" call of nls:
    >> res2 <- nls(frml, start = c(a=1, b=1, c=1))
    >> 
    >> list(res1 = res1, res2 = res2)
    >> }
    >> #-----------------------------------------
    >> 
    >> the  argument  `n'   defines  the number of (simulated) data
    >> points x/y which are going to be fitted by some model ( here
    >> y ~ a*exp(-b*x)+c )
    >> 
    >> the first call to `nls' is the standard way of calling `nls'
    >> when knowing all the variable and parameter names.
    >> 
    >> the second call (yielding `res2') uses a constructed formula
    >> in `frml' (which in this example is of course not necessary,
    >> but  in  the general case 'a,b,c,x,y' are not a priori known
    >> names).
    >> 
    >> now, here is the problem: the call
    >> 
    >> f(4)
    >> 
    >> runs fine/consistently, as does every call with n > 5.
    >> 
    >> BUT: for n = 5 (i.e. issuing f(5))
    >> 
    >> the second fit leads to the error message:
    >> 
    >> "Error in model.frame(formula, rownames, variables, varnames, extras, extranames,  : 
    >> invalid type (language) for variable 'call.fitfunc'"
    >> 
    >> I  cornered  this  to a spot in `nls' where a model frame is
    >> constructed in variable `mf'.  the parsing/constructing here
    >> seems  simply  to  be messed up for n = 5: `call.fitfunc' is
    >> interpreted as variable.
    >> 
    >> I,  moreover, empirically noted that the problem occurs when
    >> the total number of  parameters  plus  dependent/independent
    >> variables  equals  the number of data points (in the present
    >> example a,b,c,x,y).
    >> 
    >> so it is not the 'magic' number of 5 but rather the identity
    >> of data vector length and number of parameters+variables  in
    >> the model which leads to the problem.
    >> 
    >> this  is  with  2.5.0  (which  hopefully  is  not considered
    >> ancient) and MacOSX 10.4.10.
    >> 
    >> any ideas?
    >> 
    >> thanks
    >> 
    >> joerg
    >> 
    >> ______________________________________________
    >> R-help at r-project.org mailing list
    >> https://stat.ethz.ch/mailman/listinfo/r-help
    >> PLEASE do read the posting guide http://www.R-project.org/posting-guide.html
    >> and provide commented, minimal, self-contained, reproducible code.

    DM> ______________________________________________
    DM> R-help at r-project.org mailing list
    DM> https://stat.ethz.ch/mailman/listinfo/r-help
    DM> PLEASE do read the posting guide http://www.R-project.org/posting-guide.html
    DM> and provide commented, minimal, self-contained, reproducible code.



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