I need to make tutorial for beginner using the R *apply function (without using reshape or plyr package in a first time)

I try to `lapply` (because i read `apply` is not good for dataframe) a simple function to this dataframe, and i want to use named column to access data :

``````fDist <- function(x1,x2,y1,y2) {
return (0.1*((x1 - x2)^2 + (y1-y2)^2)^0.5)
}

data <- read.table(textConnection("X1 Y1 X2 Y2
1 3.5 2.1 4.1 2.9
2 3.1 1.2 0.8 4.3
"))

data\$dist <- lapply(data,function(df) {fDist(df\$X1 , df\$X2 , df\$Y1 , df\$Y2)})
``````

I have this error `\$ operator is invalid for atomic vectors`, it is probably because the dataframe is modified by laply ?... is there a best way to do that with \$ named column?

I resolve my first question with @DWin answer. But i have another problem, misunderstanding, with mixed dataframe (numeric + character) :

In my new use case, i use two function to compute distance, because my objective is to compare a distance Point between all of other Point.

``````data2 <- read.table(textConnection("X1 Y1 X2 Y2
1 3.5 2.1 4.1 2.9
2 3.1 1.2 0.8 4.3
"))

data2\$char <- c("a","b")

fDist <- function(x1,y1,x2,y2) {
return (0.1*((x1 - x2)^2 + (y1-y2)^2)^0.5)
}

fDist2 <- function(fixedX,fixedY,vec) {
fDist(fixedX,fixedY,vec[['X2']],vec[['Y2']])
}

# works with data (dataframe without character), but not with data2 (dataframe with character)
#ok
data\$f_dist <- apply(data, 1, function(df) {fDist2(data[1,]\$X1,data[1,]\$Y1,df)})
#not ok
data2\$f_dist <- apply(data2, 1, function(df) {fDist2(data2[1,]\$X1,data2[1,]\$Y1,df)})
``````
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If you are looping over columns of a dataframe, which is what `lapply` does, the internal function will only see one column at a time. –  IShouldBuyABoat Mar 8 '12 at 21:20

In this case `apply` is what you need. All of the data columns are of the same type and you don't have any worries about loosing attributes, which is where apply causes problems. You will need to write your function differently so it just takes one vector of length 4:

`````` fDist <- function(vec) {
return (0.1*((vec[1] - vec[2])^2 + (vec[3]-vec[4])^2)^0.5)
}
data\$f_dist <- apply(data, 1, fDist)
data
X1  Y1  X2  Y2    f_dist
1 3.5 2.1 4.1 2.9 0.1843909
2 3.1 1.2 0.8 4.3 0.3982462
``````

If you wanted to use the names of the columns in 'data' then they need to be spelled correctly:

`````` fDist <- function(vec) {
return (0.1*((vec['X1'] - vec['X2'])^2 + (vec['Y1']-vec['Y2'])^2)^0.5)
}
data\$f_dist <- apply(data, 1, fDist)
data
#--------
X1  Y1  X2  Y2    f_dist
1 3.5 2.1 4.1 2.9 0.1000000
2 3.1 1.2 0.8 4.3 0.3860052
``````

Your updated (and very different) question is easy to resolve. When you use `apply` it coerces to the lowest common mode denominator, in this case 'character'. You have two choices: either 1) add `as.numeric` to all of your arguments inside the functions, or 2) only send the columns that are needed which I will illustrate:

``````data2\$f_dist <- apply(data2[ , c("X2", "Y2") ], 1, function(coords)
{fDist2(data2[1,]\$X1,data2[1,]\$Y1, coords)} )
``````

I really do not like how you are passing parameters to this function. Using "[" and "\$" within the formals list "just looks wrong." And you should know that "df" will not be a dataframe, but rather a vector. Because it's not a dataframe (or a list) you should alter the function inside so that it uses "[" rather than "[[". Since you only want two of the coordinates, then only pass the two (numeric) ones that you would be using.

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I have some problem with conversion of my dataframe into fDist, don't understand why : `fDist2 <- function(X1,X2,columnVector) {fDist(X1,X2,as.numeric(columnVector[["X"]]),as.numeric(columnVector[["Y"]]))}` and `apply(data99_07,1, function(df) { fDist2 (data99_07[data99_07\$CODCOM==75101,]\$X,data99_07[data99_07\$CODCOM==75101,]\$Y,df)‌​})` I need to make conversion because anonymous function return a character vector :/ –  reyman64 Mar 9 '12 at 16:24
If a column, vec, is class "factor", then the approved method is to convert it to numeric with `as.numeric(as.character(vec)`. You cannot just use `as.numeric(vec)` and get interpretable results. –  IShouldBuyABoat Mar 9 '12 at 17:43
Before the anonymous function, columnVector is numeric, and after it is a character vector, so i need to convert it into numeric to make calculation, so is it possible apply or anonymous function make implicit conversion of vector ? –  reyman64 Mar 9 '12 at 21:00
If a vector is of class "character" then just using `as.numeric(colVec)` will succeed in supplying numeric values to any function. But if it's a factor (and you MUST check) you need the "double-function-wrapping" method. The double-wrapping is safer if you are not aware of how to check , i.e., ... `class(colVec)`, –  IShouldBuyABoat Mar 9 '12 at 23:12
Thanks for answer, but i think my question was not clear, i update my post for better comprehension. –  reyman64 Mar 12 '12 at 9:24

As a side note, generally, its best to avoid using `data` as a variable name since its a function in base R:

``````dat <- read.table(textConnection("X1 Y1 X2 Y2
1 3.5 2.1 4.1 2.9
2 3.1 1.2 0.8 4.3
"))
``````

`lapply` feeds a single column of the data.frame to the function.

``````lapply(dat, function(df) print(df))
``````

Instead, you want `apply`. But it feeds a single row as a vector, which doesn't use the `\$` operator. Instead, you can index directly:

``````apply(dat, 1, function(vec) {fDist(vec[1] , vec[3] , vec[2] , vec[4])})
``````

Or rewrite the function to take the positional arguments as additional arguments.

``````fDist <- function(vec, pos1, pos2, pos3, pos4) {
return (0.1*((vec[pos1] - vec[pos2])^2 + (vec[pos3]-vec[pos4])^2)^0.5)
}

apply(dat, 1, fDist, pos1=1, pos2=3, pos3 = 2, pos4=4)
``````

However, the best solution would be to vectorize your function completely:

``````fDist <- function(df) {
return (0.1*((df\$X1 - df\$X2)^2 + (df\$Y1-df\$Y2)^2)^0.5)
}
``````
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