107

There are a lot of posts about replacing NA values. I am aware that one could replace NAs in the following table/frame with the following:

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

But, what if I want to restrict it to only certain columns? Let's me show you an example.

First, let's start with a dataset.

set.seed(1234)
x <- data.frame(a=sample(c(1,2,NA), 10, replace=T),
                b=sample(c(1,2,NA), 10, replace=T), 
                c=sample(c(1:5,NA), 10, replace=T))

Which gives:

    a  b  c
1   1 NA  2
2   2  2  2
3   2  1  1
4   2 NA  1
5  NA  1  2
6   2 NA  5
7   1  1  4
8   1  1 NA
9   2  1  5
10  2  1  1

Ok, so I only want to restrict the replacement to columns 'a' and 'b'. My attempt was:

x[is.na(x), 1:2]<-0

and:

x[is.na(x[1:2])]<-0

Which does not work.

My data.table attempt, where y<-data.table(x), was obviously never going to work:

y[is.na(y[,list(a,b)]), ]

I want to pass columns inside the is.na argument but that obviously wouldn't work.

I would like to do this in a data.frame and a data.table. My end goal is to recode the 1:2 to 0:1 in 'a' and 'b' while keeping 'c' the way it is, since it is not a logical variable. I have a bunch of columns so I don't want to do it one by one. And, I'd just like to know how to do this.

Do you have any suggestions?

12 Answers 12

145

You can do:

x[, 1:2][is.na(x[, 1:2])] <- 0

or better (IMHO), use the variable names:

x[c("a", "b")][is.na(x[c("a", "b")])] <- 0

In both cases, 1:2 or c("a", "b") can be replaced by a pre-defined vector.

9
  • That does the job. What about if I want to search for '1'? I tried to change it around but I couldn't get it to work.
    – jnam27
    Commented Oct 15, 2013 at 11:07
  • 6
    Probably like this: x[, 1:2][x[, 1:2] == 1] <- 0
    – flodel
    Commented Oct 15, 2013 at 11:08
  • @flodel why does the datatable x accept a matrix as its first member only when doing assignation ? Is this feature documented somewhere ? Also I think you forgot to put a comma before the vectors with column names in you second example. Commented Dec 9, 2016 at 2:35
  • 1
    In both cases, 1:2 or c("a", "b") can be replaced by a pre-defined vector. When I used a predefined vector like this x[Vpredefined][is.na(x[Vpredefined])] <- 0 it gives me error Commented Feb 28, 2018 at 12:37
  • 1
    @RohitSaluja is correct, using a predefined vector, this approach doesn't work. One can do x[,..Vpredefined], but the second call does not work. Commented Jan 15, 2021 at 17:37
51

Building on @Robert McDonald's tidyr::replace_na() answer, here are some dplyr options for controlling which columns the NAs are replaced:

library(tidyverse)

# by column type:
x %>%
  mutate_if(is.numeric, ~replace_na(., 0))

# select columns defined in vars(col1, col2, ...):
x %>%
  mutate_at(vars(a, b, c), ~replace_na(., 0))

# all columns:
x %>%
  mutate_all(~replace_na(., 0))
1
  • 1
    With this function I get the Error: Error in replace_na(., 0) : argument "value" is missing, with no default. Any suggestions what to change? Commented Apr 5, 2019 at 9:58
44

Edit 2020-06-15

Since data.table 1.12.4 (Oct 2019), data.table gains two functions to facilitate this: nafill and setnafill.

nafill operates on columns:

cols = c('a', 'b')
y[ , (cols) := lapply(.SD, nafill, fill=0), .SDcols = cols]

setnafill operates on tables (the replacements happen by-reference/in-place)

setnafill(y, cols=cols, fill=0)
# print y to show the effect
y[]

This will also be more efficient than the other options; see ?nafill for more, the last-observation-carried-forward (LOCF) and next-observation-carried-backward (NOCB) versions of NA imputation for time series.


This will work for your data.table version:

for (col in c("a", "b")) y[is.na(get(col)), (col) := 0]

Alternatively, as David Arenburg points out below, you can use set (side benefit - you can use it either on data.frame or data.table):

for (col in 1:2) set(x, which(is.na(x[[col]])), col, 0)
6
  • thanks for this. Just wanted to know, 3 years on, if there are ways to do the above without a for loop? I imagine this would have been made more concise by data.table team? Thanks. Commented Jan 14, 2016 at 13:18
  • 1
    @info_seekeR I don't know of a more concise way
    – eddi
    Commented Jan 14, 2016 at 15:43
  • 1
    this is a better solution than the selected answer by flodel. Flodel's approach uses the assignment operator <- and therefore involves unnecessary data copying.
    – Michael
    Commented Dec 19, 2018 at 0:12
  • @MichaelChirico In the first part of your comment, did you added the step out <- x to avoid missunderstanding with the x data.frame from the question ? Otherwise this is an even shorter command: y[, (cols):=lapply(.SD, function(i){i[is.na(i)] <- 0; i}), .SDcols = cols] skipping the 'out' variable name and use of 'x'. Commented Jun 15, 2020 at 14:41
  • @MichaelChirico True ! I totally forgot about nafill() Commented Jun 15, 2020 at 22:56
21

This is now trivial in tidyr with replace_na(). The function appears to work for data.tables as well as data.frames:

tidyr::replace_na(x, list(a=0, b=0))
3

Not sure if this is more concise, but this function will also find and allow replacement of NAs (or any value you like) in selected columns of a data.table:

update.mat <- function(dt, cols, criteria) {
  require(data.table)
  x <- as.data.frame(which(criteria==TRUE, arr.ind = TRUE))
  y <- as.matrix(subset(x, x$col %in% which((names(dt) %in% cols), arr.ind = TRUE)))
  y
}

To apply it:

y[update.mat(y, c("a", "b"), is.na(y))] <- 0

The function creates a matrix of the selected columns and rows (cell coordinates) that meet the input criteria (in this case is.na == TRUE).

1

We can solve it in data.table way with tidyr::repalce_na function and lapply

library(data.table)
library(tidyr)
setDT(df)
df[,c("a","b","c"):=lapply(.SD,function(x) replace_na(x,0)),.SDcols=c("a","b","c")]

In this way, we can also solve paste columns with NA string. First, we replace_na(x,""),then we can use stringr::str_c to combine columns!

1
  • 2
    Thank you for this code snippet, which might provide some limited, immediate help. A proper explanation would greatly improve its long-term value by showing why this is a good solution to the problem and would make it more useful to future readers with other, similar questions. Please edit your answer to add some explanation, including the assumptions you’ve made. Commented Sep 1, 2019 at 14:50
1

Starting from the data.table y, you can just write:
y[, (cols):=lapply(.SD, function(i){i[is.na(i)] <- 0; i}), .SDcols = cols]
Don't forget to library(data.table) before creating y and running this command.

1

This needed a bit extra for dealing with NA's in factors.

Found a useful function here, which you can then use with mutate_at or mutate_if:

replace_factor_na <- function(x){
    x <- as.character(x)
    x <- if_else(is.na(x), 'NONE', x)
    x <- as.factor(x)
}

df <- df %>%
    mutate_at(
        vars(vector_of_column_names), 
        replace_factor_na
    )

Or apply to all factor columns:

df <- df %>%
  mutate_if(is.factor, replace_factor_na)
0

For a specific column, there is an alternative with sapply

DF <- data.frame(A = letters[1:5],
             B = letters[6:10],
             C = c(2, 5, NA, 8, NA))

DF_NEW <- sapply(seq(1, nrow(DF)),
                    function(i) ifelse(is.na(DF[i,3]) ==
                                       TRUE,
                                       0,
                                       DF[i,3]))

DF[,3] <- DF_NEW
DF
0

For completeness, built upon @sbha's answer, here is the tidyverse version with the across() function that's available in dplyr since version 1.0 (which supersedes the *_at() variants, and others):

# random data
set.seed(1234)
x <- data.frame(a = sample(c(1, 2, NA), 10, replace = T),
                b = sample(c(1, 2, NA), 10, replace = T), 
                c = sample(c(1:5, NA), 10, replace = T))
library(dplyr)
#> 
#> Attaching package: 'dplyr'
#> The following objects are masked from 'package:stats':
#> 
#>     filter, lag
#> The following objects are masked from 'package:base':
#> 
#>     intersect, setdiff, setequal, union
library(tidyr)
# with the magrittr pipe
x %>% mutate(across(1:2, ~ replace_na(.x, 0)))
#>    a b  c
#> 1  2 2  5
#> 2  2 2  2
#> 3  1 0  5
#> 4  0 2  2
#> 5  1 2 NA
#> 6  1 2  3
#> 7  2 2  4
#> 8  2 1  4
#> 9  0 0  3
#> 10 2 0  1
# with the native pipe (since R 4.1)
x |> mutate(across(1:2, ~ replace_na(.x, 0)))
#>    a b  c
#> 1  2 2  5
#> 2  2 2  2
#> 3  1 0  5
#> 4  0 2  2
#> 5  1 2 NA
#> 6  1 2  3
#> 7  2 2  4
#> 8  2 1  4
#> 9  0 0  3
#> 10 2 0  1

Created on 2021-12-08 by the reprex package (v2.0.1)

1
  • ah, maybe because I was applying it to columns 2:3 instead of 1:2...? Fixed now.
    – stragu
    Commented Dec 8, 2021 at 8:48
0

it's quite handy with data.table and stringr

library(data.table)
library(stringr)

x[, lapply(.SD, function(xx) {str_replace_na(xx, 0)})]

FYI

-4

this works fine for me

DataTable DT = new DataTable();

DT = DT.AsEnumerable().Select(R =>
{
      R["Campo1"] = valor;
      return (R);
}).ToArray().CopyToDataTable();
1
  • 1
    is this R? looks like C# Commented Nov 9, 2016 at 12:41

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