Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have imported data from a file into a data frame in R. It is something like this.

Name      Count   Category
A         100     Cat1
C         10      Cat2
D         40      Cat1 
E         30      Cat3
H         3       Cat3
Z         20      Cat2
M         50      Cat10

So now i want to add the Category column depending on the values in the column Name. So something like if Name = (A, D), Category = 'Cat1' etc.

This is only a simple example I am giving. I have a large number of Names and Categories so I want a compact syntax. How can I do this?

Edit: I've changed the example to better suit my needs as the name can be anything not numeric. Sorry for not being too clear before.

share|improve this question
up vote 2 down vote accepted

You can use a map. (UPDATED to use stringsAsFactors = FALSE)

df <- data.frame( Name = c('A', 'C', 'D', 'E', 'H', 'Z', 'M'), 
                  Count = c(100,10,40,30,3,20,50), stringsAsFactors = FALSE)
Categories <- list(Cat1 = c('A','D'), 
                   Cat2 = c('C','Z'), 
                   Cat3 = c('E','H'), 
                   Cat10 = 'M')
nams <- names( Categories )
nums <- sapply(Categories, length)
CatMap <- unlist( Map( rep, nams, nums ) )
names(CatMap) <- unlist( Categories )

df <- transform( df, Category = CatMap[ Name ])
share|improve this answer
+1 Nice use of Map(). This is the second time in a week someone here has used Map() in an answer and they seem very useful indeed. – Gavin Simpson Dec 30 '10 at 13:05
@Gavin thanks. Actually that other post taught me about Map! – Prasad Chalasani Dec 30 '10 at 13:26
@pchalasani Thanks this is a nice way to do the recoding. However I tried this and the mapping is all wrong somehow when I did it in my actual data. The example you give works just fine. Any possible reasons for this? – sfactor Dec 30 '10 at 13:39
@sfactor that is hard to say unless I see more of your actual data – Prasad Chalasani Dec 30 '10 at 13:58
@sfactor: got it! You can fix it if you use stringsAsFactors = FALSE in the first line when you are constructing the data frame. I fixed my solution to do this. Incidentally, R's default behavior of treating string-valued data-frame columns as Factors often bites me. I have to keep saying stringsAsFactors = FALSE in many places in my code. Sometimes I just set it to FALSE globally as in options(stringsAsFactors = FALSE) because I rarely need to interpret strings as factors in my work, but your use may be different. – Prasad Chalasani Dec 30 '10 at 15:01

You can use ifelse. If your data frame were called df you would do:

df$cat <- ifelse(df$name<100, "Ones", "Hundreds")
df$cat <- ifelse(df$name<1000, df$cat, "Thousands")
share|improve this answer
sorry I should have been more clear, so I changed the example, the name can be any alphabetical value not numeric. but thanks i'll try to apply a logic like this and see. – sfactor Dec 30 '10 at 12:39

[Update following the OP's comment and altered Q]

DF <- data.frame(Name = c("A","C","D","E","H","Z","M"),
                 Count = c(100,10,40,30,3,20,50), stringsAsFactors = FALSE)
lookup <- data.frame(Name = c("A","C","D","E","H","Z","M"),
                     Category = paste("Cat", c(1,2,1,3,3,2,10), sep = ""),
                     stringsAsFactors = FALSE)

Using the above data frames, we can do a data base merge. You need to set-up lookup for the Name Category combinations you want, which is OK if there aren't a very large number of Names (At least you only need to list them once each in lookup and you don't have to do it in order - list all Cat1 Names first, etc):

> merge(DF, lookup, by = "Name")
  Name Count Category
1    A   100     Cat1
2    C    10     Cat2
3    D    40     Cat1
4    E    30     Cat3
5    H     3     Cat3
6    M    50    Cat10
7    Z    20     Cat2
> merge(DF, lookup, by = "Name", sort = FALSE)
  Name Count Category
1    A   100     Cat1
2    C    10     Cat2
3    D    40     Cat1
4    E    30     Cat3
5    H     3     Cat3
6    Z    20     Cat2
7    M    50    Cat10

One option is indexing:

foo <- function(x) {
    out <- character(length = length(x))
    chars <- c("Ones", "Tens", "Hundreds", "Thousands")
    out[x < 10] <- chars[1]
    out[x >= 10 & x < 100] <- chars[2]
    out[x >= 100 & x < 1000] <- chars[3]
    out[x >= 1000 & x < 10000] <- chars[4]
    return(factor(out, levels = chars))

An alternative that scales better is,

bar <- function(x, cats = c("Ones", "Tens", "Hundreds", "Thousands")) {
    out <- cats[floor(log10(x)) + 1]
    factor(out, levels = cats)
share|improve this answer

check out:

  • cut()
  • recode() in the car package
share|improve this answer

Perhaps simpler and more readable using ifelse and %in%:

df <- data.frame( Name = c('A', 'C', 'D', 'E', 'H', 'Z', 'M'), 
Count =c(100,10,40,30,3,20,50), stringsAsFactors = FALSE)

cat1 = c("A","D")
cat2 = c("C","Z")
cat3 = c("E","H")
cat10 = c("M")

df$Category = ifelse(df$Name %in% cat1, "Cat1",
              ifelse(df$Name %in% cat2, "Cat2",
              ifelse(df$Name %in% cat3, "Cat3",
              ifelse(df$Name %in% cat10, "Cat10",

   Name Count Category
1    A   100     Cat1
2    C    10     Cat2
3    D    40     Cat1
4    E    30     Cat3
5    H     3     Cat3
6    Z    20     Cat2
7    M    50    Cat10
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.