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Can you please explain to me why the code complains saying that Samdat is not found?

I am trying to switch between models, so I declared a function that contains these specific models and I just need to call this function as one of the argument in the get.f function where the resampling will change the structure for each design matrix in the model. The code complains that Samdat is not found when it is found.

Also, is there a way I can make the conditional statement if(Model == M1()) instead of having to create another argument M to set if(M==1)?

Here is my code:

dat <-  cbind(Y=rnorm(20),rnorm(20),runif(20),rexp(20),rnorm(20),runif(20), rexp(20),rnorm(20),runif(20),rexp(20))
nam <- paste("v",1:9,sep="")
colnames(dat) <- c("Y",nam)

M1 <- function(){
    a1 = cbind(Samdat[,c(2:5,7,9)])
    b1 = cbind(Samdat[,c(2:4,6,8,7)])
    c1 = b1+a1
    list(a1=a1,b1=b1,c1=c1)}

M2 <- function(){
    a1= cbind(Samdat[,c(2:5,7,9)])+2
    b1= cbind(Samdat[,c(2:4,6,8,7)])+2
    c1 = a1+b1
    list(a1=a1,b1=b1,c1=c1)}

M3 <- function(){
    a1= cbind(Samdat[,c(2:5,7,9)])+8
    b1= cbind(Samdat[,c(2:4,6,8,7)])+8
    c1 = a1+b1
    list(a1=a1,b1=b1,c1=c1)}
#################################################################
get.f <- function(asim,Model,M){
    sse <-c()
    for(i in 1:asim){
        set.seed(i)
        Samdat <- dat[sample(1:nrow(dat),nrow(dat),replace=T),]
        Y <- Samdat[,1]
        if(M==1){
            a2 <- Model$a1
            b2 <- Model$b1
            c2 <- Model$c1
            s<- a2+b2+c2
            fit <- lm(Y~s)
            cof <- sum(summary(fit)$coef[,1])
            coff <-Model$cof
            sse <-c(sse,coff)
        }
        else if(M==2){
            a2 <- Model$a1
            b2 <- Model$b1
            c2 <- Model$c1
            s<- c2+12
            fit <- lm(Y~s)
            cof <- sum(summary(fit)$coef[,1])
            coff <-Model$cof
            sse <-c(sse,coff)
        }
        else {
            a2 <- Model$a1
            b2 <- Model$b1
            c2 <- Model$c1
            s<- c2+a2
            fit <- lm(Y~s)
            cof <- sum(summary(fit)$coef[,1])
            coff <- Model$cof
            sse <-c(sse,coff)
        }
    }
    return(sse)
}

get.f(10,Model=M1(),M=1)
get.f(10,Model=M2(),M=2)
get.f(10,Model=M3(),M=3)
share|improve this question
3  
Could you please reindent your code to see where functions start and end? Maybe that will also help you to solve your problem. –  Gabor Csardi Sep 1 '12 at 12:35
    
I separated with a line space, what do you mean by reindent –  Stat Sep 1 '12 at 14:21
    
What I meant was exactly what Jilber did for you. –  Gabor Csardi Sep 1 '12 at 15:14
    
It wasn't me who did the indentation, it was @themel, credits go for him. :) –  Jilber Sep 2 '12 at 21:11

2 Answers 2

up vote 2 down vote accepted

When you call

get.f(10, Model=M1(), M=1)

your M1 function is immediately called. It dies because inside the body of M1 you are using Samdat which is only defined later, in the body of get.f.

Somehow, you need to call M1 after Samdat is defined. One way of doing that is to make M1 (the function) an argument to get.f and call the function from inside get.f:

get.f <- function(asim, Model.fun, M) {
   ...
   Sambat <- ...
   Model  <- Model.fun()
   ...
}
get.f(10, Model.fun = M1, M=1)

Also, in general, it is bad programming to use global variables, i.e., make your function use variables that are defined outside their scope. Instead, it is recommended that everything a function uses be passed as input arguments. You have two such cases in your code: M1 (M2, and M3) use Samdat and get.f uses dat. They should be arguments to your functions. Here is a nicer version of your code. I have not fixed everything, so you'll have to do a little more to get it to work:

M1 <- function(sampled.data) {
   a1 <- sampled.data[, c("v1", "v2", "v3", "v4", "v6", "v8")]
   b1 <- sampled.data[, c("v1", "v2", "v3", "v5", "v7", "v6")]
   c1 <- a1 + b1
   list(a1 = a1, b1 = b1, c1 = c1)
}

get.f <- function(dat, asim, Model.fun, offset, M) {
   sse <- c()
   for(i in 1:asim){
      set.seed(i)
      Samdat <- dat[sample(1:nrow(dat), nrow(dat), replace = TRUE), ]
      Y      <- Samdat[, "Y"]
      Model  <- Model.fun(sampled.data = Samdat)
      a2     <- Model$a1
      b2     <- Model$b1
      c2     <- Model$c1      
      s      <- switch(M, a2 + b2 + c2, c2 + 12, c2 + a2)
      fit    <- lm(Y ~ s)
      cof    <- sum(summary(fit)$coef[,1])
      coff   <- Model$cof        # there is a problem here...
      sse    <- c(sse, coff)     # this is not efficient
   }
   return(sse)
}

dat <- cbind(Y = rnorm(20), v1 = rnorm(20), v2 = runif(20), v3 = rexp(20),
                            v4 = rnorm(20), v5 = runif(20), v6 = rexp(20),
                            v7 = rnorm(20), v8 = runif(20), v9 = rexp(20))

get.f(dat, 10, Model.fun = M1, M = 1)

One last thing that jumps out: if the definition of s (what I gathered under switch() is related to the Model you use, then consider merging the definitions of Model and s together: add s to the list output of your M1, M2, M3 functions so that s can just be defined as s <- Model$s, and you can then drop the M input to get.f.

share|improve this answer

You might want to have a look at the R scoping rules. In particular, there's no reason to expect that variables you define in a function are visible in other functions.

You might be confused because the global environment (i.e. the top-level outside all functions) is an exception from this rule. I'm not going to go into your other questions, but let me note that the entire script looks very messed up to me - i.e. M1 to M3 are essentially one function, and the wad of copy/paste in get.f is definitely terrible. Whatever it is that you're trying to do can definitely be written in a less convoluted way.

Let's have a look at the Ms first - why not one function with a parameter? Including the solution to your scope problem, that makes two parameters -

M <- function(sampleData, offset) { 
    a1 = sampleData[,c(2:5,7,9)] + offset
    b1 = sampleData[,c(2:4,6,8,7)] + offset
    c1 = b1+a1
    list(a1=a1,b1=b1,c1=c1)
}

If you insist on defining aliases, you can also do something like

M1 <- function(sampleData) M(sampleData, 0) 
M2 <- function(sampleData) M(sampleData, 2) 
M3 <- function(sampleData) M(sampleData, 8) 

This is already less repetitive, but ideally you want the computer to do the repetition for you (DRY!):

offsets <- c(0,2,8)
Models <- sapply(offsets, FUN=function(offset) function(sampleData) M(sampleData, offset))

Looking at get.f, it's not quite clear what you're trying to do - you're trying to fit something and collect something from the results, but the part about Model$cof refers to an undefined variable (your Model just has a1,b1 and c1 entries). Assuming you want to actually collect cof and discarding the interim code, get.f probably looks like this:

M <- function(sampleData, offset) { 
    a1 = sampleData[,c(2:5,7,9)] + offset
    b1 = sampleData[,c(2:4,6,8,7)] + offset
    c1 = b1+a1
    list(a1=a1,b1=b1,c1=c1)
}

get.f <- function(asim,Model,M){
    sse <-c()
    for(i in 1:asim){
        set.seed(i)
        Samdat <- dat[sample(1:nrow(dat),nrow(dat),replace=T),]
        Y <- Samdat[,1]
        model <- Model()
        if(M==1){
            a2 <- model$a1
            b2 <- model$b1
            c2 <- model$c1
            s<- a2+b2+c2
            fit <- lm(Y~s)
            cof <- sum(summary(fit)$coef[,1])
            sse <-c(sse,cof)
        }
        else if(M==2){
            a2 <- model$a1
            b2 <- model$b1
            c2 <- model$c1
            s<- c2+12
            fit <- lm(Y~s)
            cof <- sum(summary(fit)$coef[,1])
            sse <-c(sse,cof)
        }
        else {
            a2 <- model$a1
            b2 <- model$b1
            c2 <- model$c1
            s<- c2+a2
            fit <- lm(Y~s)
            cof <- sum(summary(fit)$coef[,1])
            sse <-c(sse,cof)
        }
    }
    return(sse)
}


get.f(10,Model=M1,M=1) 
get.f(10,Model=M2,M=2)
get.f(10,Model=M3,M=3)

That's still terribly repetitive, so why don't we think about it for a minute? All you're doing with your samples is to calculate one column from them to use in your fit. I don't see why you need to do the calculation in an M function and then do the extraction of the single value in get.f (dependent on which particular M you were using) - this seems indicative that the extraction should much rather be part of M... but if you need to keep them separate, okay, let's use separate extraction functions. Still comes in under half of your code size in reasonably-written R:

# Set up test data
dat <-  cbind(Y=rnorm(20),rnorm(20),runif(20),rexp(20),rnorm(20),runif(20), rexp(20),rnorm(20),runif(20),rexp(20))
nam <- paste("v",1:9,sep="")
colnames(dat) <- c("Y",nam)

# calculate a1..c1 from a sample
M <- function(sampleData, offset) { 
    a1 = sampleData[,c(2:5,7,9)] + offset
    b1 = sampleData[,c(2:4,6,8,7)] + offset
    c1 = b1+a1
    list(a1=a1,b1=b1,c1=c1)
}

# create a fixed-offset model from the variable offset model by fixing offset
makeModel <- function(offset) function(sampleData) M(sampleData, offset)   

# run model against asim subsamples of data and collect coefficients
get.f <- function(asim,model,expected) 
    sapply(1:asim,  function (i){
        set.seed(i)
        Samdat <- dat[sample(1:nrow(dat),nrow(dat),replace=T),]
        Y <- Samdat[,1]
        s <- expected(model(Samdat))
        fit <- lm(Y~s)
        sum(summary(fit)$coef[,1])
    })

# list of models to run and how to extract the expectation values from the model reslts
todo <- list(
        list(model=makeModel(0), expected=function(data) data$a1+data$b1+data$c1),
        list(model=makeModel(2), expected=function(data) data$c1+12),
        list(model=makeModel(8), expected=function(data) data$c1+data$a1))

sapply(todo, function(l) { get.f(10, l$model, l$expected)})
share|improve this answer
    
Thank you for your answer.I tried to create an example similar to what I am trying to do. First: the function M1-M3 are similar but are not the same, I added different constant to each one. However in the actual job I am coding they have different matrices. What I am trying to do is call these functions (M1-M3) in get.f function to create the new matrices with M1-M3. I would do this after sampling the data so I can fit the new model. I don't understand what is the terrible part you are talking about. I have more than M1-M3 (there are M1-M30) so I can't just code them in get.f function. –  Stat Sep 1 '12 at 14:44
    
I expanded my answer. –  themel Sep 1 '12 at 15:35
    
I enjoyed the narrative, +1. –  flodel Sep 1 '12 at 15:49
    
Hi @themel, I have created 3 scripts in r. The 1st is for sampling the data and creates different matrices for the sampled data. Then in the 2nd script I created the model functions (M1-M3) that compined different matrices and check some results. The 3rd script I created the get.f to fit different models based on these different matrices in the 2nd script. My main objective is to achieve SSE results. I have around 3000 columns –  Stat Sep 1 '12 at 16:13

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