Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a dataframe with millions of rows and three columns labeled Keywords, Impressions, Clicks. I'd like to add a column with values depending on the evaluation of this function:

isType <- function(Impressions, Clicks)
if (Impressions >= 1 & Clicks >= 1){return("HasClicks")} else if (Impressions >=1 & Clicks == 0){return("NoClicks")} else {return("ZeroImp")}

so far so good. I then try this to create the column but 1) it takes for ever and 2) it marks all the rows has "HasClicks" even the ones where it shouldn't.

# Creates a dataframe
Type <- data.frame()
# Loops until last row and store it in data.frame
for (i in c(1:dim(Mydf)[1])) {Type <- rbind(Type,isType(Mydf$Impressions[i], Mydf$Clicks[i]))}
# Add the column to Mydf
Mydf <- transform(Mydf, Type = Type)

input data:


Wanted output:


share|improve this question

3 Answers 3

up vote 8 down vote accepted

Building on Joshua's solution, I find it cleaner to generate Type in a single shot (note however that this presumes Clicks >= 0...)

Mydf$Type = ifelse(Mydf$Impressions >= 1,
    ifelse(Mydf$Clicks >= 1, 'HasClicks', 'NoClicks'), 'ZeroImp')
share|improve this answer
Thank you! I got to the same conclusion that ifelse needed to be used. I'm too new to R to understand why but thanks! –  datayoda Oct 13 '10 at 0:23
@datayoda: if() allows only a single condition. I.e. it allows, or uses, only a single TRUE or FALSE. In your code, you were getting many TRUE/FALSE values and only the first of which would be used. In an if() clause, you also shouldn't use & as that is vectorised and does the comparison for each element of the associated vectors. && is for comparing single values. Compare: runif(10) > 0.5 & runif(10) > 0.3 with runif(10) > 0.5 && runif(10) > 0.3. If one or more of the first version is FALSE, the second (&&) version will return an overall FALSE. ifelse is a vectorised if. –  Gavin Simpson Oct 13 '10 at 8:44

First, the if/else block in your function will return the warning:

Warning message:
In if (1:2 > 2:3) TRUE else FALSE :
the condition has length > 1 and only the first element will be used

which explains why it all the rows are the same.

Second, you should allocate your data.frame and fill in the elements rather than repeatedly combining objects together. I imagine this is causing your long run-times.

EDIT: My shared code. I'd love for someone to provide a more elegant solution.

Mydf <- data.frame(
  Keywords = sample(c("Hello","World","R"),20,TRUE),
  Impressions = sample(0:3,20,TRUE),
  Clicks = sample(0:3,20,TRUE) )

Mydf$Type <- "ZeroImp"
Mydf$Type <- ifelse(Mydf$Impressions >= 1 & Mydf$Clicks >= 1,
  "HasClicks", Mydf$Type)
Mydf$Type <- ifelse(Mydf$Impressions >= 1 & Mydf$Clicks == 0,
  "NoClicks", Mydf$Type)
share|improve this answer
Could you share some code? –  datayoda Oct 12 '10 at 23:26

This is a case where arithmetic can be cleaner and most likely faster than nested ifelse statements.

Again building on Joshua's solution:

Mydf$Type <- factor(with(Mydf, (Impressions>=1)*2 + (Clicks>=1)*1),
                    levels=1:3, labels=c("ZeroImp","NoClicks","HasClicks"))
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.