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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.


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:


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?

share|improve this question
up vote 7 down vote accepted

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)) +

df[,3:5] <- df[,3:5] * multiples
share|improve this answer
+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.

share|improve this answer
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))
share|improve this answer
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)
     out <- m

 g <- apply(df, 1, replaceFunction)
 df[3:5] <- t(g)
share|improve this answer
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

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