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I have a list of data frames and I would like to calculate the nonlinear bestfit to each dataframe in the list and to get a list with the best fit objects. I am trying to use lapply but I am having problems with the parameters.

# define a function for D
fncTtr <- function(n,d) (d/n)*((sqrt(1+2*(n/d))-1))
# define a function for best fit
bestFitD <- function(dat,fun) {
 res <- nls(dat$ttr~fun(n,d),data=dat,start=list(d=25),trace=T)
 return(res)
}

resL <- lapply(dData2,bestFitD,dat=dData2,fun=fncTtr)

When I execute this code I am getting the following error:

Error in FUN(X[[1L]], ...) : unused argument(s) (X[[1]])

I want the lapply to go thru each dataframe in dData2 and to execute the bestFitD function. How should I define the parameters for the function in lapply. The dData2 object is a list. I am using it as a parameter for bestFitD but this function expects one dataframe as a parameter. How can I define this parameter? When I execute the function bestFitD by itself with one dataframe, it is running correctly. example of a dData2 list with components that are dataframes:

$`1`
    n    ttr      d id
1  35 0.6951 27.739  1
2  36 0.6925 28.072  1
3  37 0.6905 28.507  1
4  38 0.6887 28.946  1
5  39 0.6790 28.003  1
6  40 0.6703 27.247  1
7  41 0.6566 25.735  1
8  42 0.6605 26.981  1
9  43 0.6567 27.016  1
10 44 0.6466 26.026  1
11 45 0.6531 27.667  1
12 46 0.6461 27.128  1
13 47 0.6336 25.751  1
14 48 0.6225 24.636  1
15 49 0.6214 24.992  1
16 50 0.6248 26.011  1

$`2`
    n    ttr      d id
17 35 0.6951 27.739  2
18 36 0.6925 28.072  2
19 37 0.6905 28.507  2
20 42 0.6605 26.981  2

The following code seems to be ok:

res <- bestFitD(dData2[[1]],fncTtr)

but when I execute the following:

res <- bestFitD(dData2[[2]],fncTtr)

I am getting the followin error:

Error in model.frame.default(formula = ~dat + ttr + n, data = dat) : 
  invalid type (list) for variable 'dat'

Why? Both are dataframes! But it seems that There is something strange with the second component!

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1  
Can you please add a sample of a data.frame when nls it works? –  agstudy Mar 3 '13 at 9:33
1  
With what you've provided my only suggestion is to try resL <- lapply(dData2, function(x) bestFitD(dat = x,fun = fncTtr) to see if it works. –  Arun Mar 3 '13 at 9:33
    
I tried your suggestion but I got the following error:Error in model.frame.default(formula = ~dat + ttr + n, data = dat) : invalid type (list) for variable 'dat' –  user963386 Mar 3 '13 at 9:49
    
@user963386 yes well that's not lapply's fault anymore. try bestFitD( dData2[[2]] , fun = fncTtr ) -- same error –  Anthony Damico Mar 3 '13 at 10:36
    
I agree that it is not a problem with lapply in this case. But it is strange that it works ok with dData[[1]] but I get the error when I run dData[[2]] –  user963386 Mar 3 '13 at 13:19

2 Answers 2

up vote 4 down vote accepted

just get rid of the dat$ in your nls function call. i believe it's looking for dat$dat$ttr which obviously will break. That is, your bestFitD function should be:

bestFitD <- function(dat,fun) {
    res <- nls(ttr~fun(n,d),data=dat,start=list(d=25),trace=T)
    return(res)
}

Now, call using lapply as:

resL <- lapply(dData2, bestFitD, fun = fncTtr)
share|improve this answer
    
I made some edit to wrap the whole code. hope that's okay. –  Arun Mar 3 '13 at 11:09
    
Thanks Anthony. Your solution is working and it has a good explanation and it is similar to what I had done! –  user963386 Mar 3 '13 at 13:15
    
+1! nice solution! –  agstudy Mar 3 '13 at 13:43

This should work:

resL <- lapply(dData2, function(x,fun){
                 bestFitD(x,fun)
               },fun='fncTtr')

Where I rewrite,bestFitD using do.call

bestFitD <- function(dat,fun){
  nls(ttr~do.call(fun,list(n,d)), data=dat,
      start=list(d=25),trace=T)
  res
}

0.003237457 :  25 
0.0009393089 :  26.77943 
0.0009362902 :  26.84895 
0.0009362902 :  26.84898 
0.001282807 :  25 
4.771935e-05 :  27.64267 
4.389588e-05 :  27.80729 
4.389584e-05 :  27.80781 

EDIT

my solution can be simplified to (similar but not exactly to Anthony solution)

lapply(dData2, bestFitD, fun = 'fncTtr')
share|improve this answer
1  
Thanks agstudy. Your solution is working but it is a little more complicated. –  user963386 Mar 3 '13 at 13:16

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