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 would like to run through specific columns in a dataframe and replace all NAs with 0s using a loop.

extract = read.csv("2013-09 Data extract.csv")
extract$Premium1[is.na(extract$Premium1)] <- 0
extract$Premium1

gives me the required result for Premium1 in dataframe extract, but I would like to loop through all 27 columns of premiums, so what I am trying is

extract = read.csv("2013-09 Data extract.csv")

for(i in 1:27) { 
  thispremium <- get(paste("extract$Premium", i, sep="")) 
  thispremium[is.na(thispremium)] <- 0
}

which gives

Error in get(paste("extract$Premium", i, sep = "")) : 
  object 'extract$Premium1' not found

Any idea on what is causing the error?

share|improve this question
1  
get() will not parse a string. Perhaps: get("extract")[[paste0("Premium",i)]] although it looks rather tortured. Why do you need to get 'extract'. Why not just: extract[[paste0("Premium",i)]] –  BondedDust Oct 15 '13 at 14:39
    
Give a look at this answer: link –  user1886721 Oct 15 '13 at 14:44
    
Thank you for that observation, DWin. I am using for(i in 1:27) { extract[[paste0("Premium", i)]][is.na(extract[[paste0("Premium", i)]])] <-0 } now which gives the required result. –  Adriaan Joubert Oct 15 '13 at 14:46
    
@user1886721 I do not want to replace all NAs in my dataframe; nevertheless an interesting read, thanks. –  Adriaan Joubert Oct 15 '13 at 14:48

2 Answers 2

up vote 2 down vote accepted

Do you need the loop because of other requirements? Because it works just fine without one:

extract[is.na(extract)] <- 0

If you want to do the replacement for some columns only, select those columns first, perform the replacement, and substitute the columns back into the original set:

first5 <- extract[, 1 : 5]
first5[is.na(first5)] <- 0
extract[, 1 : 5] <- first5

More generally loops can (and should) be almost avoided in R – especially when manipulating data frames). Often operations vectorise automatically (like above). When they don’t, functions of the apply family can be used.

share|improve this answer
    
Thanks Konrad. I have seen this solution elsewhere on the internet but in my case I wish to remove the NAs only from a selected set of columns. –  Adriaan Joubert Oct 15 '13 at 14:58
    
@Adriaan Still no reason for a loop, see update. –  Konrad Rudolph Oct 15 '13 at 15:03
1  
@Adriaan Yes, of course. In fact you should use variables instead of hard-coded absolute columns. Just substitute the (variable) names of the columns instead of the range I’ve used. For instance, use something like c('Premium1', 'Premium3') instead of 1:5. –  Konrad Rudolph Oct 15 '13 at 15:08
1  
Wow, fantastic! What I am using now is working <- extract[, c(paste0("Premium", 1:27))] working[is.na(working)] <- 0 extract[, c(paste0("Premium", 1:27)) ] <- working and it solves the problem perfectly. Thanks! –  Adriaan Joubert Oct 15 '13 at 15:14
1  
@Adriaan In that case, no need for the c(…) even. Just use paste0("Premium", 1:27) directly. –  Konrad Rudolph Oct 15 '13 at 15:19

How about

for (colname in names(extract))
  extract[[colname]][is.na(extract[[colname]])] <- 0

(or even extract[is.na(extract)] <- 0)

Or, if you are not doing it to all the columns (I think I misread your question):

for(i in 1:27) { 
  colname <- paste0("Premium",i)
  extract[[colname]][is.na(extract[[colname]])] <- 0
}

Alternatively, you don't really need to know the number of such columns:

premium <- grep("^Premium[0-9]*$",names(extract))
extract[premium][is.na(extract[premium])] <- 0
share|improve this answer
    
Thanks sds; yes, I would like only to tamper with specific columns. Your and Dwin's solutions solve the problem but I found Konrad's solution more elegant :) –  Adriaan Joubert Oct 15 '13 at 15:18
    
@Adriaan: see the edit –  sds Oct 15 '13 at 16:44
    
I get this error: Warning message: In grep(names(extract), "^Premium") : argument 'pattern' has length > 1 and only the first element will be used. I am not sure what this solution is trying to achieve, but if it is to select all columns with "Premium" in the heading then I'm weary of implementing it because there are other columns (such as ReasPremium1 for reinsurance) that I would like not to touch. –  Adriaan Joubert Oct 16 '13 at 7:15
    
Sorry, fixed arg order. This regex selects the columns which start with "Premium" and then have digits. –  sds Oct 16 '13 at 13:25

Your Answer

 
discard

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.