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I have a dataframe with some numeric columns. Some row has a 0 value which should be considered as null in statistical analysis. What is the fastest way to replace all the 0 value to NULL in R?

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7  
I don't think you want/can replace with NULL values, but NA serves that purpose in R lingo. –  Chase Jun 14 '12 at 16:12

6 Answers 6

up vote 43 down vote accepted

Replacing 0 to NA:

df[df == 0] <- NA
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What would the equivalent syntax be for a data.table object? –  dadrivr Dec 7 '14 at 5:33
    
I see you've gotten a lot of votes but do not think this appropriately covers the edge cases of non-numeric columns with values of "0" which were not requested to be set to <NA>. –  BondedDust Dec 16 '14 at 2:57
#Sample data
set.seed(1)
dat <- data.frame(x = sample(0:2, 5, TRUE), y = sample(0:2, 5, TRUE))
#-----
  x y
1 0 2
2 1 2
3 1 1
4 2 1
5 0 0

#replace zeros with NA
dat[dat==0] <- NA
#-----
   x  y
1 NA  2
2  1  2
3  1  1
4  2  1
5 NA NA
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An alternative way without the [<- function:

A sample data frame dat (shamelessly copied from @Chase's answer):

dat

  x y
1 0 2
2 1 2
3 1 1
4 2 1
5 0 0

Zeroes could be replaced with NA by the is.na<- function:

is.na(dat) <- !dat


dat

   x  y
1 NA  2
2  1  2
3  1  1
4  2  1
5 NA NA
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Well, you cannot replace with NULL, but you can replace with NA. And I'm assuming you do not want any character or factor columns getting the test:

  is.na(dfrm[ , unlist(lapply(dfrm, is.numeric))] ) <- 
                 dfrm[ , unlist(lapply(dfrm, is.numeric))] == 0
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Let me assume that your data.frame is a mix of different datatypes and not all columns need to be modified.

to modify only columns 12 to 18 (of the total 21), just do this

df[, 12:18][df[, 12:18] == 0] <- NA
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You can replace 0 with NA only in numeric fields (i.e. excluding things like factors), but it works on a column-by-column basis:

col[col == 0 & is.numeric(col)] <- NA

With a function, you can apply this to your whole data frame:

changetoNA <- function(colnum,df) {
    col <- df[,colnum]
    if (is.numeric(col)) {  #edit: verifying column is numeric
        col[col == -1 & is.numeric(col)] <- NA
    }
    return(col)
}
df <- data.frame(sapply(1:5, changetoNA, df))

Although you could replace the 1:5 with the number of columns in your data frame, or with 1:ncol(df).

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I am not sure this is correct solution. What about columns 6 and more. They will get cut. –  user56 Feb 19 at 10:44
    
That's why I suggested replacing 1:5 with 1:ncol(df) at the end. I didn't want to make the equation overly complex or difficult to read. –  Alium Britt Feb 19 at 11:55
    
but what if in the columns 6 and 7 - the datatype is char and no replacement should be done. In my problem, I need replacement only in columns 12 to 15 but the whole df has 21 columns (many must not be touched at all). –  user56 Feb 20 at 14:05
    
For your data frame you could just change the 1:5 to the column numbers you want changed, like 12:15, but if you wanted to confirm that it will only affect numeric columns then just wrap the second line of the function in an if statement, like this: if (is.numeric(col)) { col[col == -1 & is.numeric(col)] <- NA }. –  Alium Britt Feb 20 at 20:23

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