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I have a dataframe df:

colour  shape
'red'   circle
'blue'  square
'blue'  circle
'green' sphere

And a double matrix m with named rows/columns

      circle square sphere  
red   1      4      7
blue  2      5      8
green 3      6      9

I'd like to add a new column to DF such that I obtain:

id  colour  shape
1   'red'   circle
5   'blue'  square
2   'blue'  circle
9   'green' sphere

I've tried doing this with the following code but it doesn't seem to work:

df$id <- m[df$colour,df$shape]

I've also tried apply(); and similar but with no luck. Can anyone tell me the right approach to doing this without using a loop?

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Thanks all for help. Both @Tommy 's answer below, and DWin's answers below work great for this. I went with DWin's for my scenario as I had character vectors in my real data. –  Ina Mar 22 '12 at 14:26
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6 Answers

up vote 3 down vote accepted

I think I might win the shortest answer contest here as long as those are character vectors rather than factors which might be more expected unless you made specifid effort to avoid. It really only adds cbind to convert the two df "character" vectors to a two column matrix expected by the [.matrix function that you were very close to success in using. (And it also seems reasonably expressive.)

# Data construct
d <- data.frame(color=c('red','blue','blue','green'), 
shape=c('circle','square','circle','sphere'), stringsAsFactors=FALSE)
 m <- matrix(1:9, 3,3, dimnames=list(c('red','blue','green'), c('circle','square','sphere')))
# Code:

 d$id <- with( d, m [ cbind(color, shape) ] )
 d
  color  shape id
1   red circle  1
2  blue square  5
3  blue circle  2
4 green sphere  9
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Note that this only works if the levels in d have the same order as the rownames/colnames in m. I tried to explain that in my answer. Try it again with m<-m[3:1,] and see that it fails... –  Tommy Mar 21 '12 at 23:16
    
Oh, sorry, didn't read carefully enough: given that d contains character vectors and not factors it actually works... My solution works in either case though ;-) –  Tommy Mar 21 '12 at 23:23
2  
One could also use m[ cbind(as.character(d$color), as.character(d$shape)] which I think is both general and more clear. –  BondedDust Mar 22 '12 at 5:38
    
...which is what I suggested in my (earlier) answer ;-) - I only split it into two lines for clarity. However, this solution is a bit slower than mine that uses match... –  Tommy Mar 22 '12 at 15:56
    
@Tommy: I do see that your answer has similarities but I thought (incorrectly now that I checked it) that using a second cbind would silently coerce all its columns to a common class. I see now that cbind.data.frame doesn't do that. The help page says in two different places that cbind.data.frame will silently covert character columns to factors. In this case it's not a problem , but I have been burned by cbind.data.frame behavior in the past and I avoid it. –  BondedDust Mar 22 '12 at 16:23
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A rather simple (and fast!) alternative is to use a matrix to index into your matrix:

# Your data
d <- data.frame(color=c('red','blue','blue','green'), shape=c('circle','square','circle','sphere'))
m <- matrix(1:9, 3,3, dimnames=list(c('red','blue','green'), c('circle','square','sphere')))

# Create index matrix - each row is a row/col index
i <- cbind(match(d$color, rownames(m)), match(d$shape, colnames(m)))

# Now use it and add as the id column...
d2 <- cbind(id=m[i], d)

d2
#  id color  shape
#1  1   red circle
#2  5  blue square
#3  2  blue circle
#4  9 green sphere

The match function is used to find the corresponding numeric index for a particular string.

Note that in newer version of R (2.13 and newer I think), you can use character strings in the index matrix. Unfortunately, the color and shape columns are typically factors, and cbind doesn't like that (it uses the integer codes), so you need to coerce them with as.character:

i <- cbind(as.character(d$color), as.character(d$shape))

...I suspect that using match is more efficient though.

EDIT I measured and it seems to be about 20% faster to use match:

# Make 1 million rows
d <- d[sample.int(nrow(d), 1e6, TRUE), ]

system.time({
  i <- cbind(match(d$color, rownames(m)), match(d$shape, colnames(m)))
  d2 <- cbind(id=m[i], d)
}) # 0.46 secs


system.time({
  i <- cbind(as.character(d$color), as.character(d$shape))
  d2 <- cbind(id=m[i], d)
}) # 0.55 secs
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As long as @Tommy brings it up, the solution converting m to a vector takes 0.14 seconds compared to 0.50 seconds for the first example above on my machine ;) –  BenBarnes Mar 22 '12 at 9:49
    
I've marked @DWin 's answer are correct as that's the one I used (I prefer the simplicity and don't have time constraints), but this answer works great too and I really appreciate the effort that went into it. Thanks! –  Ina Mar 22 '12 at 14:14
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Another answer Using the reshape2 and plyr (optional just for join) packages.

require(plyr)
require(reshape2)

Df <- data.frame(colour = c("red", "blue", "blue", "green"), 
                  shape = c("circle", "square", "circle", "sphere"))

Mat <- matrix(1:9, dimnames = list(c("red", "blue", "green"),
                                   c("circle", "square", "sphere")), 
                    nrow = 3)

Df2 <- melt.array(Mat, varnames = c("colour", "shape"))

join(Df, Df2)
result <- join(Df, Df2)

join(Df, Df2)
Joining by: colour, shape
  colour  shape value
1    red circle     1
2   blue square     5
3   blue circle     2
4  green sphere     9

Hope this help

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merge() is your friend here. To use it, we need an appropriate data frame to merge with containing the stacked version of your ID matrix. I create that as newdf with the code below:

df <- data.frame(matrix(1:9, ncol = 3))
colnames(df) <- c("circle","square","sphere")
rownames(df) <- c("red","blue","green")

newdf <- cbind.data.frame(ID = unlist(df), 
                          expand.grid(colour = rownames(df), 
                                      shape = colnames(df)))

Which results in:

> newdf
        ID colour  shape
circle1  1    red circle
circle2  2   blue circle
circle3  3  green circle
square1  4    red square
square2  5   blue square
square3  6  green square
sphere1  7    red sphere
sphere2  8   blue sphere
sphere3  9  green sphere

Then with your original data in object df2, defined using

df2 <- data.frame(colour = c("red","blue","blue","green"),
                  shape = c("circle","square","circle","sphere"))

use merge()

> merge(newdf, df2, sort = FALSE)
  colour  shape ID
1    red circle  1
2   blue circle  2
3   blue square  5
4  green sphere  9

You can store that and rearrange the columns if you need that:

> res <- merge(newdf, df2, sort = FALSE)
> res <- res[,c(3,1,2)]
> res
  ID colour  shape
1  1    red circle
2  2   blue circle
3  5   blue square
4  9  green sphere
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You could also convert the matrix m to a vector and then match the ID to the colour and shape values:

df<-data.frame(colour=c("red","blue","blue","green"),
  shape=c("circle","square","circle","sphere"))


m<-matrix(1:9,nrow=3,dimnames=list(c("red","blue","green"),
  c("circle","square","sphere")))


mVec<-as.vector(m)

The next step matches the colour in df to the appropriate dimname in the m matrix, then adds an integer corresponding to the shape. The result in the index of the m vector with the corresponding ID.

df$ID<-mVec[match(df$colour, dimnames(m)[[1]]) + (dim(m)[1]*
  (match(df$shape, dimnames(m)[[2]]) - 1))]
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+1 for being the fastest! –  Tommy Mar 22 '12 at 16:01
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#recreating your data
dat <- read.table(text="colour  shape
'red'   circle
'blue'  square
'blue'  circle
'green' sphere", header=TRUE)

d2 <- matrix(c(1:9), ncol=3, nrow=3, byrow=TRUE)
dimnames(d2) <-list(c('circle', 'square', 'sphere'),
c("red", "blue", "green"))
d2<-as.table(d2)

#make a list of matching to the row and colounm names of the look up matrix
LIST <- list(match(dat[, 2], rownames(d2)), match(dat[, 1], colnames(d2)))
#use sapply to index the lookup matrix using the row and col values from LIST 
id <- sapply(seq_along(LIST[[1]]), function(i) d2[LIST[[1]][i], LIST[[2]][i]])
#put it all back together
data.frame(id=id, dat)
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