How to create a new column with multiple values based on another column in R

I have a data frame in R called A.Data.

It has 8 different columns: `plate`, `row,` `col`, `TOF`, `EXT`, `green`, `red`, and `yellow`.

Below is an example of the data.

``````> head(A.Data)
plate row col TOF EXT green red yellow
1     1   A  12  20  21     2   0      0
2     1   C  12  20  17     0   1      0
3     1   C  11  20  17     0   0      1
4     1   A  10  20  16     1   1      3
5     1   A  10  20  16     0   0      0
6     1   A  10  20  15     0   0      0
``````

I'm trying to add a new column to `A.Data` called `conc` (short for concentration). The new column called `conc` depends on the value in the col column.

``````-If col is 1 or 7, conc should equal to 0
-If col is 2 or 8, conc should equal to 0.5
-If col is 3 or 9, conc should equal to 1
-If col is 4 or 10, conc should equal to 2
-If col is 5 or 11, conc should equal to 4
-If col is 6 or 12, conc should say NA
``````

So for the first 6 rows of data, the `conc` column should say `NA, NA, 4, 2, 2, 2` because the `col` column values for the first 6 rows are `12, 12, 11, 10, 10, 10`.

I asked my professor for help and he gave me this hint:

`df\$newcol <- rep(1, 1000)` will add a new column to the `df` data frame called `newcol` and will have 1 replicated 1000 times

Try to add a concentration column called `conc` with `0, 0.5, 1, 2, 4, NA` replicated as many times as you need for the entire column.

Here is the summary of `A.Data\$col`, in case you might find it useful...

``````> summary (A.Data\$col)
1    2    3    4    5    6    7    8    9   10   11   12 NA's
1128  703  538  256  156   30 2101 1039  741  294   73   60   11
``````

Thank you!

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4 Answers

Not tested, but this may work

``````map_column <- rep(c(0, 0.5, 1, 2, 4, NA),2)
df\$newcol <- map_column[df\$col]
``````

EDIT: The idea behind this code is: `map_column`, which is a vector of length 12, serves here as a map (in the mathematical sense) between the numbers 1 to 12 and the values in the vector. For instance,

``````map_column[[1]]
``````

returns the first element of the vector (0), and

``````map_column[[9]]
``````

returns the 9th element of the vector (1), and so on. Now R vectors have the capability to process several inputs at once, so that

``````map_column[c(1,9)]
``````

returns the corresponding elements (`c(0,1)`) at these positions in one go. Note that it is important to use a single square bracket `[` instead of `[[` here.

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I'm new to using R so would you please explain why/how this works please? Thank you! – hj14 Jan 8 '14 at 1:10
This works because the variables in df\$col index into the "map_column" vector - this is a very common R trick. So, as a shorter hint, try: m = c(3, 2, 1); m[c(1,1,1,1,2)], each time you see a '1' you'll pick out the first element in m which happens to be a 3. – jimmyb Jan 8 '14 at 1:28
This is a very good answer - much better than mine. – Henry David Thorough Jan 8 '14 at 6:34

This works.

``````convert <- function(number){
if(number == 1 | number == 7){return(0)}
if(number == 2 | number == 8){return(.5)}
if(number == 3 | number == 9){return(1)}
if(number == 4 | number == 10){return(2)}
if(number == 5 | number == 11){return(4)}
if(number == 6 | number == 12){return(NA)}
}

A.Data\$newcol <- do.call(rbind, lapply(A.Data\$col, convert))
``````
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As a beginner, i like the wordiness and clarity of this answer. As I get better at thinking in R, I'll graduate to the more "elegant" solutions. – mightypile Jan 13 at 4:52

Use merge.

``````augment <- data.frame(col=1:12,conc=rep(c(0, 0.5, 1, 2, 4, NA),2))
A.Data  <-merge(A.Data,augment,by="col",sort=F)
A.Data
#   col plate row TOF EXT green red yellow conc
# 1  12     1   A  20  21     2   0      0   NA
# 2  12     1   C  20  17     0   1      0   NA
# 3  11     1   C  20  17     0   0      1    4
# 4  10     1   A  20  16     1   1      3    2
# 5  10     1   A  20  16     0   0      0    2
# 6  10     1   A  20  15     0   0      0    2
``````

This creates an an augment dataframe with 2 columns, `col` corresponding to `col` in `A.Data`, and `conc` with the augment. Then merge that with A.Data based on col.

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Here's a very different approach based on mathematical and logical operations:

``````x <- c(1:12, NA) # an example vector including all possible values

floor(2 ^ (z <- x %% 6 - 2)) / 2 * (z + 2 | NA)
``````

The result:

``````[1] 0.0 0.5 1.0 2.0 4.0  NA 0.0 0.5 1.0 2.0 4.0  NA  NA
``````

(I fear that this solution may appear like obfuscation.)

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