Recalculate each point in dataframe with lapply/sapply

I write my own function named batcheffect to recalculate all values in a dataframe. The function only needs the dataframe as import. First, the mean is calculated in the function and then for each point in the dataframe the calculation is made and create a new dataframe.

``````batcheffect <- function (experiment){
corr<-list()
matrixexp<-as.matrix(experiment)
expmean <-mean(matrixexp)

for (i in 1:length(matrixexp)){
correction <- (matrixexp[i]-overallmean - expmean)+overallmean
corr[[i]]<- matrix(correction)
}
return(unlist(corr))
}
``````

For a large dataframe the loop inside a function is slow. So i want to use a sapply or lapply function to speed up the process. Has anyone a suggestion?

Thanks

UPDATE: For example I have a dataframe like this df<- data.frame(A=1:10,B=10:1,C=11:20,C1=21:30,B1=31:40,A2=41:50)

To calculate the mean for all values in the dataframe. The dataframe is converted to a matrix df1<-as.matrix(df) overallmean<-mean(df1)

The first goal of the data is to make subsets by colnames. You generate three groups, group with A's, group with B's and group with C's. the subsets are defined by the following code:

``````"selectexperiments" <- function (partialname, data)
{
result <- data[,grep(partialname, colnames(data))]
return(result)
}
A<-selectexperiments('A', df)
B<-selectexperiments('B', df)
C<-selectexperiments('C', df)
``````

The three groups are created. For each value in e.g.group A I want to caluclate the following sum: (value - overallmean -meanofthegroup) + overallmean. therefore I create this batcheffect function.

``````"batcheffect" <- function (group)
{
corr<-list()
matrixexp<-as.matrix(group)
expmean <-mean(matrixexp) #mean of the group
for (i in 1:length(matrixexp)){
correction <- (matrixexp[i]-overallmean - expmean)+overallmean
corr[[i]]<- matrix(correction)
}
return(unlist(corr))
}

Abatch<-batcheffect(A)
``````

The result is OK now, But I will returned the result as a dataframe. And for my own data this function is realy slow so, i thought maby is there a speeding up method like sapply of something.

-
could you give an example dataframe, and explain where overallmean comes from? –  Joris Meys Apr 5 '11 at 9:03
@csgillespie : please refrain from editing code in a question. You shouldn't "optimalize" code when editing. This can lead to utter confusion. –  Joris Meys Apr 5 '11 at 10:43
@Joris: Sorry, my mistake. I didn't mean to alter the code, only indent it. I accidentally deleted (as you spotted) the `as.matrix` line. I presume that you don't have a problem with "code formatting"? –  csgillespie Apr 5 '11 at 10:50
@csgillespie : no problem with formatting, and I only noticed it was gone given the comment of Richie on my answer. –  Joris Meys Apr 5 '11 at 10:52

Your function is pretty odd. It can be simplified to :

``````batcheffect <- function (experiment){
matrixexp<-as.matrix(experiment)
expmean <-mean(matrixexp)
c(matrixexp - expmean)
}
``````

and will give exactly the same result. Simple calculus shows that

`(matrixexp[i]-overallmean - expmean)+overallmean`

is perfectly equal to

`matrixexp[i]- expmean`

And as R calculations are vectorized a loop is not necessary. It returns a vector (hence the `c()` function).

Using `unlist()`, you can further simplify to:

``````batcheffect2 <- function(experiment){
x <- unlist(experiment,use.names=F)
x - mean(x)
}
``````

which again returns exactly the same result. Are you sure this is what you had in mind?

EDIT :

Given your comments, I add here the test code. I named your original function `old.batcheffect()`. As you see, on a sample dataframe (and after initialization of the mystery `overallmean`) the result of all functions is identical :

``````> Df <- data.frame(A1=1:10,B1=10:1,C1=11:20)
> overallmean <- runif(1)
> X1 <- old.batcheffect(Df)
> X2 <- batcheffect(Df)
> X3 <- batcheffect2(Df)

> all.equal(X1,X2)
[1] TRUE
> all.equal(X2,X3)
[1] TRUE
``````

EDIT2 :

To get batcheffect returning a dataframe like the original, you just need one line of code :

``````batcheffect <- function(x) x - mean(unlist(x))
``````

You can now process the complete original dataframe within one function :

``````summaryBatch <- function(data,groups){
tmp <- lapply(groups,function(x){
data[,grep(x,names(data))]
})
out <- lapply(tmp,function(x){
x - mean(unlist(x))

})
do.call(cbind,out)
}
``````

Then :

``````summaryBatch(df,c("A","B","C"))
``````

returns a dataframe with all columns, where for each column the group mean is substracted. As said before, you can add and subsequently remove the overallmean, but that doesn't make a difference at all.

-
Yeah that is what I mean but, now you created an list with values. to convert it to a dataframe, the values aren't on the good place. The c(matrixexp - expmean) reads vertically and the unlist() function replace hozitontally. Do you know what I mean? –  Lisann Apr 5 '11 at 9:24
@Lisann : I get twice exactly the same vector. And if I set an overallmean of eg 20 in my global, I get exactly the same vector with all three functios. So I don't know what you mean, these functions do exactly the same. unless your experiment is not a dataframe off course... –  Joris Meys Apr 5 '11 at 9:32
@Lisann : btw, unlist() works vertically as well. Try following code to see : `Df <- data.frame(A=1:10,B=10:1,C=11:20) ; all.equal(unlist(Df,use.names=F),c(as.matrix(Df)))` –  Joris Meys Apr 5 '11 at 9:32
More oddities: `matrixexp` and `overallmean` are used by the function but not defined there. That means that your function behaves differently depending upon the state of other environments (e.g., whether or not you defined those variables in your user workspace). This will invariably lead to buggy code. –  Richie Cotton Apr 5 '11 at 10:37
my experiment is not ok! It calulate each value vertically and put it back horizontally. Is there a way to change that? –  Lisann Apr 5 '11 at 10:40