Replace all 0 values to NA

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?

• 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

Replacing all zeroes to NA:

df[df == 0] <- NA

Explanation

1. It is not NULL what you should want to replace zeroes with. As it says in ?'NULL',

NULL represents the null object in R

which is unique and, I guess, can be seen as the most uninformative and empty object.1 Then it becomes not so surprising that

data.frame(x = c(1, NULL, 2))
#   x
# 1 1
# 2 2

That is, R does not reserve any space for this null object.2 Meanwhile, looking at ?'NA' we see that

NA is a logical constant of length 1 which contains a missing value indicator. NA can be coerced to any other vector type except raw.

Importantly, NA is of length 1 so that R reserves some space for it. E.g.,

data.frame(x = c(1, NA, 2))
#    x
# 1  1
# 2 NA
# 3  2

Also, the data frame structure requires all the columns to have the same number of elements so that there can be no "holes" (i.e., NULL values).

Now you could replace zeroes by NULL in a data frame in the sense of completely removing all the rows containing at least one zero. When using, e.g., var, cov, or cor, that is actually equivalent to first replacing zeroes with NA and setting the value of use as "complete.obs". Typically, however, this is unsatisfactory as it leads to extra information loss.

2. Instead of running some sort of loop, in the solution I use df == 0 vectorization. df == 0 returns (try it) a matrix of the same size as df, with the entries TRUE and FALSE. Further, we are also allowed to pass this matrix to the subsetting [...] (see ?'['). Lastly, while the result of df[df == 0] is perfectly intuitive, it may seem strange that df[df == 0] <- NA gives the desired effect. The assignment operator <- is indeed not always so smart and does not work in this way with some other objects, but it does so with data frames; see ?'<-'.

1 The empty set in the set theory feels somehow related.
2 Another similarity with the set theory: the empty set is a subset of every set, but we do not reserve any space for it.

• What would the equivalent syntax be for a data.table object? – itpetersen 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>. – 42- Dec 16 '14 at 2:57

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

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 can 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

dplyr::na_if() is an option:

library(dplyr)

df <- data_frame(col1 = c(1, 2, 3, 0),
col2 = c(0, 2, 3, 4),
col3 = c(1, 0, 3, 0),
col4 = c('a', 'b', 'c', 'd'))

na_if(df, 0)
# A tibble: 4 x 4
col1  col2  col3 col4
<dbl> <dbl> <dbl> <chr>
1     1    NA     1 a
2     2     2    NA b
3     3     3     3 c
4    NA     4    NA d
#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

Because someone asked for the Data.Table version of this, and because the given data.frame solution does not work with data.table, I am providing the solution below.

Basically, use the := operator --> DT[x == 0, x := NA]

library("data.table")

status = as.data.table(occupationalStatus)

origin destination  N
1:      1           1 50
2:      2           1 16
3:      3           1 12
4:      4           1 11
5:      5           1  2
6:      6           1 12
7:      7           1  0
8:      8           1  0
9:      1           2 19
10:      2           2 40

status[N == 0, N := NA]

origin destination  N
1:      1           1 50
2:      2           1 16
3:      3           1 12
4:      4           1 11
5:      5           1  2
6:      6           1 12
7:      7           1 NA
8:      8           1 NA
9:      1           2 19
10:      2           2 40
• Or for (j in names(DT)); set(DT,which(DT[[j]] == 0),j,NA). See here for a more detailed discussion of using data.table to find and replace values. – JWilliman Nov 22 '16 at 0:24

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).

• I am not sure this is correct solution. What about columns 6 and more. They will get cut. – userJT Feb 19 '15 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 '15 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). – userJT Feb 20 '15 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 '15 at 20:23