# Multiply various subsets of a data frame by different vectors

I would like to multiply several columns in my data frame by a vector of values. The specific vector of values changes depending on the value in another column.

--EDIT--

What if I make the data set more complicated, i.e., more than 2 conditions and the conditions are randomly shuffled around the data set?

Here is an example of my data set:

``````df=data.frame(
Treatment=(rep(LETTERS[1:4],each=2)),
Species=rep(1:4,each=2),
Value1=c(0,0,1,3,4,2,0,0),
Value2=c(0,0,3,4,2,1,4,5),
Value3=c(0,2,4,5,2,1,4,5),
Condition=c("A","B","A","C","B","A","B","C")
)
``````

Which looks like:

`````` Treatment Species Value1 Value2 Value3 Condition
A       1      0      0      0         A
A       1      0      0      2         B
B       2      1      3      4         A
B       2      3      4      5         C
C       3      4      2      2         B
C       3      2      1      1         A
D       4      0      4      4         B
D       4      0      5      5         C
``````

If `Condition=="A"`, I would like to multiply columns 3-5 by the vector `c(1,2,3)`. If `Condition=="B"`, I would like to multiply columns 3-5 by the vector `c(4,5,6)`. If `Condition=="C"`, I would like to multiply columns 3-5 by the vector `c(0,1,0)`. The resulting data frame would therefore look like this:

`````` Treatment Species Value1 Value2 Value3 Condition
A       1      0      0      0         A
A       1      0      0     12         B
B       2      1      6     12         A
B       2      0      4      0         C
C       3     16     10     12         B
C       3      2      2      3         A
D       4      0     20     24         B
D       4      0      5      0         C
``````

I have tried subsetting the data frame and multiplying by the vector:

``````t(t(subset(df[,3:5],df[,6]=="A")) * c(1,2,3))
``````

But I can't return the subsetted data frame to the original. Is there any way to perform this operation without subsetting the data frame, so that other columns (e.g., Treatment, Species) are preserved?

-

Here's a fairly general solution that you should be able to adapt to fit your needs.

Note the first argument in the `outer` call is a logical vector and the second is numeric, so before multiplication `TRUE` and `FALSE` are converted to `1` and `0`, respectively. We can add the `outer` results because the conditions are non-overlapping and the `FALSE` elements will be zero.

``````multiples <-
outer(df\$Condition=="A",c(1,2,3)) +
outer(df\$Condition=="B",c(4,5,6)) +
outer(df\$Condition=="C",c(0,1,0))

df[,3:5] <- df[,3:5] * multiples
``````
-
+1 IMHO by far the coolest solution. – joran Jul 30 '11 at 2:50
+1 Really need to wrap my brain around these inner/outer functions. Thanks for a usage case. – Brandon Bertelsen Jul 30 '11 at 6:54
Also works great, although not quite sure what it's doing. Thanks! – jslefche Jul 30 '11 at 12:33

Edited to reflect some notes from the comments

Assuming that `Condition` is a factor, you could do this:

``````#Modified to reflect OP's edit - the same solution works just fine
m <- matrix(c(1:6,0,1,0),3,3,byrow = TRUE)
df[,3:5] <- with(df,df[,3:5] * m[Condition,])
``````

which makes use of fairly quick vectorized multiplication. And obviously, wrapping this in `with` isn't strictly necessary, it's just what popped out of my brain. Also note the subsetting comment below by Backlin.

More globally, remember that every subsetting you can do with `subset` you can also do with `[`, and crucially, `[` support assignment via `[<-`. So if you want to alter a portion of a data frame or matrix, you can always use this type of idiom:

``````df[rowCondition,colCondition] <- <replacement values>
``````

assuming of course that `<replacement values>` is the same dimension as your subset of `df`. It may work otherwise, but you will run afoul of R's recycling rules and R may kick back a warning.

-
Or how about `df[3:5] <- df[3:5] * t(matrix(1:6, 3, 2)[,df\$Condition])`? Even more compact. You don't need the comma when indexing data frames if you're getting entire columns and factors are automatically interpreted as integers when used for indexing. – Backlin Jul 29 '11 at 21:18
I totally agree with the `as.integer` being unnecessary. However, I generally prefer being explicit when subsetting about whether I intend it to apply to rows/cols, but that's a matter of style. Personally, I find it easier to read that way. But then, you can always nitpick this stuff to death. I mean, I used `with` to avoid typing `df\$`! ;) – joran Jul 29 '11 at 21:26
Haha, true. Sometimes I get carried away trying to compress everything as hard as possible. But `with` it is one letter longer than `df\$` after all, just think of everything you could have written with that letter you wasted! – Backlin Jul 29 '11 at 22:22
``````df[3:5] <- df[3:5] * t(sapply(df\$Condition, function(x) if(x=="B") 4:6 else 1:3))
``````

Or by vector multiplication

``````df[3:5] <- df[3:5] * (3*(df\$Condition == "B") %*% matrix(1, 1, 3)
+ matrix(1:3, nrow(df), 3, byrow=T))
``````
-
Hmm, interesting approach. How would I integrate if else statements if I had more than one condition? (see above) – jslefche Jul 29 '11 at 22:49
I'd go for something like what joran suggested. Making a matrix with rows corresponding to each possible case and then index them in some clever way. – Backlin Aug 8 '11 at 14:05

Here's a non-vectorized, but easy to understand solution:

`````` replaceFunction <- function(v){
m <- as.numeric(v[3:5])
if (v[6]=="A")
out <- m * c(1,2,3)
else if (v[6]=="B")
out <- m * c(4,5,6)
else
out <- m
return(out)
}

g <- apply(df, 1, replaceFunction)
df[3:5] <- t(g)
df
``````
-
Great answer! That did it, and I was finally able to successfully implement if else statements. R did kick out a warning after `df[3:5]=t(g)` when I applied it to my larger dataset, but the values appear correctly in the data frame. – jslefche Jul 29 '11 at 23:03