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I have a dataframe with four logical vectors, v1, v2, v3, v4 that are TRUE or FALSE. I need to classify each row of the dataframe based on the combination of the boolean vectors (for example, "None", "v1 only", "v1 and v3", "All", etc.). I would like to do this without taking a subset of the dataframe or nesting ifelse statements. Any suggestions for the best way to do this? Thanks!

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4 Answers 4

up vote 3 down vote accepted

Looks like I've arrived late at this party. Still, I might as well share what I've brought!

This works by treating the FALSE/TRUE possibilities like bits, and operating on them to assign to each combination of v1, v2, and v3 a unique integer between 1 and 8 (much like chmod can represent permission bits on *NIX systems). The integer is then used as an index to select the appropriate element of a vector of textual descriptors.

(For the demonstration, I've used just three columns, but this approach scales up nicely.)

# CONSTRUCT VECTOR OF DESCRIPTIONS
description <- c("None", "v1", "v2", "v1 and v2",
                 "v3", "v1 and v3", "v2 and v3", "All")

# DEFINE DESCRIPTION FUNCTION
getDescription <- function(X) {
    index <- 1 + sum(X*c(1,2,4))
    description[index]
}

# TRY IT OUT ON ALL COMBOS OF v1, v2, and v3
df <- expand.grid(v1=c(FALSE, TRUE),
                  v2=c(FALSE, TRUE),
                  v3=c(FALSE, TRUE))
df$description <- apply(df, 1, getDescription)

# YEP, IT WORKS.
df
#      v1    v2    v3 description
# 1 FALSE FALSE FALSE        None
# 2  TRUE FALSE FALSE          v1
# 3 FALSE  TRUE FALSE          v2
# 4  TRUE  TRUE FALSE   v1 and v2
# 5 FALSE FALSE  TRUE          v3
# 6  TRUE FALSE  TRUE   v1 and v3
# 7 FALSE  TRUE  TRUE   v2 and v3
# 8  TRUE  TRUE  TRUE         All
share|improve this answer
    
Thank You! If I add df$v3 <- TRUE and then try to run df$description <- apply(df, 1, getDescription) again I get the following error: Error in X * c(1, 2, 4) : non-numeric argument to binary operator Any ideas why this is happening? Thanks! –  Boom Shakalaka Dec 15 '11 at 4:01
    
@BoomShakalaka -- That works just fine for me. Did you possibly assign "TRUE" instead of TRUE? Your error message implies that one column in your data.frame is not numeric. Alternatively, does your df have more than just those three columns? If so, you'll need to do apply(df[c("v1", "v2", "v3")], 1, getDescription). Hope that helps. –  Josh O'Brien Dec 15 '11 at 17:10
    
There is another column that is not numeric so that was the issue. Thanks! –  Boom Shakalaka Dec 15 '11 at 19:19

Here's one approach relying on the fact that TRUE / FALSE can be represented as 0s and 1s. You can multiply the booleans by their column index and then paste all the values together. This will tell you which columns had a value of 1 for each row. Here's an example:

set.seed(1)
dat <- data.frame(v1 = sample(c(T,F), 10, TRUE),
                  v2 = sample(c(T,F), 10, TRUE),
                  v3 = sample(c(T,F), 10, TRUE),
                  v4 = sample(c(T,F), 10, TRUE)
                  )
#End fake data
#Multiple T/F times the column index
dat <- dat * rep(seq_len(ncol(dat)), each = nrow(dat))
#Paste together in a new column
dat$v5 <- apply(dat, 1, function(x) paste(x, collapse = ""))

> dat
   v1 v2 v3 v4   v5
1   0  0  3  4 0034
2   0  2  0  4 0204
...

Incorporating the helpful comments below and the additional question

I would create a lookup table using expand.grid() and then write the text labels to represent them however you see fit. Here's an example with two columns:

set.seed(1)
dat <- data.frame(v1 = sample(c(T,F), 10, TRUE),
                  v2 = sample(c(T,F), 10, TRUE)
       )

#Thanks @Joshua
dat$comp <- as.character(apply(1 * dat, 1, paste, collapse=""))

#Look up table
lookup <- data.frame(comp = apply(expand.grid(0:1, 0:1), 1, paste, collapse = ""),
                     text = c("none", "v1 only", "v2 only", "all"),
                     stringsAsFactors = FALSE
)

#Use merge to join the look up table to your data. Note the consistent naming of the comp column
> merge(dat, lookup)
   comp    v1    v2    text
1    00 FALSE FALSE    none
2    00 FALSE FALSE    none
3    01 FALSE  TRUE v2 only
....
share|improve this answer
    
+1 Nicely done. Another option also using the 0/1 representation would be to multiply each by a power of 10 and add; this can be done with matrix multiplication, like this as.matrix(dat) %*% 10^rev(seq_len(ncol(dat))-1). (Or use a power of 2 if you prefer thinking in binary.) –  Aaron Dec 14 '11 at 2:55
1  
+1 but I don't see the need for the "column index", since it's defined by the position of the 1s in the string. Alternatives would be apply(1*dat,1,paste,collapse="") or do.call(paste, c(1*dat,sep="")). –  Joshua Ulrich Dec 14 '11 at 3:15
    
Thanks. So building on your answer, I'm thinking of the following: v1 <- ifelse(v1 == TRUE, 1000, 0) v2 <- ifelse(v1 == TRUE, 100, 0) v3 <- ifelse(v1 == TRUE, 10, 0) v4 <- ifelse(v1 == TRUE, 1, 0) dat$v5 <- sum(v1, v2, v3, v4) Should I then create a list of the values to look up the label(e.g. 1111 == "All") or is there a better way? –  Boom Shakalaka Dec 14 '11 at 3:59
    
@BoomShakalaka - not sure I followed your code there, but think I understand what you need to accomplish. See my updated answer and let me know if I'm close. –  Chase Dec 14 '11 at 4:04
 set.seed(123)
> dat <- data.frame(v1 = sample(c(T,F), 10, TRUE),
+                   v2 = sample(c(T,F), 10, TRUE),
+                   v3 = sample(c(T,F), 10, TRUE),
+                   v4 = sample(c(T,F), 10, TRUE)
+                   )
> dat

The first strategy uses various combination of patterns to index into a vector of character with a default of 1 to index "Other":

> dat$bcateg <- c("Other", "v2 only", "v1 and v3", "All")[1+
+ with(dat, 1*(v2 & !v1 &!v3 &!v4))
+ +with(dat, 2*(v1&v3))+
+ with(dat, v1&v2&v3&v4)]
> dat
      v1    v2    v3    v4    bcateg
1   TRUE FALSE FALSE FALSE     Other
2  FALSE  TRUE FALSE FALSE   v2 only
3   TRUE FALSE FALSE FALSE     Other
4  FALSE FALSE FALSE FALSE     Other
5  FALSE  TRUE FALSE  TRUE     Other
6   TRUE FALSE FALSE  TRUE     Other
7  FALSE  TRUE FALSE FALSE   v2 only
8  FALSE  TRUE FALSE  TRUE     Other
9  FALSE  TRUE  TRUE  TRUE     Other
10  TRUE FALSE  TRUE  TRUE v1 and v3

The second strategy concatentate the column names of the TRUEs using a separator of ",":

> dat$bcateg2 <-paste( c("","v1")[dat[["v1"]]+1 ], c("","v2")[dat[["v2"]]+1 ], c("","v3")[dat[["v3"]]+1 ], c("","v4")[dat[["v4"]]+1 ], sep = ",")
> dat
      v1    v2    v3    v4    bcateg   bcateg2
1   TRUE FALSE FALSE FALSE     Other     v1,,,
2  FALSE  TRUE FALSE FALSE   v2 only     ,v2,,
3   TRUE FALSE FALSE FALSE     Other     v1,,,
4  FALSE FALSE FALSE FALSE     Other       ,,,
5  FALSE  TRUE FALSE  TRUE     Other   ,v2,,v4
6   TRUE FALSE FALSE  TRUE     Other   v1,,,v4
7  FALSE  TRUE FALSE FALSE   v2 only     ,v2,,
8  FALSE  TRUE FALSE  TRUE     Other   ,v2,,v4
9  FALSE  TRUE  TRUE  TRUE     Other ,v2,v3,v4
10  TRUE FALSE  TRUE  TRUE v1 and v3 v1,,v3,v4
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Thanks. I learned a lot from this answer too. –  Boom Shakalaka Dec 14 '11 at 5:09

Let me throw my hat in the ring as well

plyr::adply(dat, 1, function(x) paste(names(Filter(isTRUE, x)), collapse = " and "))

      v1    v2    v3    v4               V1
1   TRUE  TRUE FALSE  TRUE v1 and v2 and v4
2   TRUE  TRUE  TRUE FALSE v1 and v2 and v3
3  FALSE FALSE FALSE  TRUE               v4
4  FALSE  TRUE  TRUE  TRUE v2 and v3 and v4
5   TRUE FALSE  TRUE FALSE        v1 and v3
6  FALSE  TRUE  TRUE FALSE        v2 and v3
7  FALSE FALSE  TRUE FALSE               v3
8  FALSE FALSE  TRUE  TRUE        v3 and v4
9  FALSE  TRUE FALSE FALSE               v2
10  TRUE FALSE  TRUE  TRUE v1 and v3 and v4
share|improve this answer
    
That hat's worth a +1! Regular expressions could further refine this, replacing all but the last and with a , . Here's something that should work: txt <- "v1 and v2 and v3 and v4", then gsub("([[:space:]]and)(?![[:space:]]v[[:digit:]]$)", ",", txt, perl=TRUE). –  Josh O'Brien Dec 14 '11 at 7:03

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