100

Having a data frame, how do I go about replacing all particular values along all rows and columns. Say for example I want to replace all empty records with NA's (without typing the positions):

df <- data.frame(list(A=c("", "xyz", "jkl"), B=c(12, "", 100)))

    A   B
1      12
2  xyz    
3  jkl 100

Expected result:

    A   B
1  NA   12
2  xyz  NA  
3  jkl  100
151

Like this:

> df[df==""]<-NA
> df
     A    B
1 <NA>   12
2  xyz <NA>
3  jkl  100
5
  • 15
    is there a way to do this efficiently for more than 1 value!? – PikkuKatja Mar 11 '15 at 10:23
  • 28
    This doesn't work for factors, df[df=="xyz"]<-"abc" will error with "invalid factor level." Is there a more general solution? – glallen Sep 2 '15 at 4:22
  • 1
    not working for me. I tried this: dfSmallDiscreteCustomSalary[dfSmallDiscreteCustomSalary$salary=="<=50K"] <- "49K". Still for unique(dfSmallDiscreteCustomSalary$salary) i get: [1] >50K <=50K – Codious-JR Nov 5 '15 at 12:24
  • 3
    glallen ... if you're trying to modify a factor column with a new value that already a factor, there are probably more clever ways that what I'm about to suggest, but you could df$factorcolumn <- as.character(df$factorcolumn), then make your modification, and finish off by turning it back into a factor again... df$factorcolumn <- as.factor(df$factorcolumn); it'll be complete with your new level and desired value. – Joshua Eric Turcotte Oct 25 '17 at 22:54
  • Found it out: df.na.replace(df.columns, Map("" -> "NA")).show. Interestingly I am not able to replace with null as value. I am getting : java.lang.IllegalArgumentException: Unsupported value type java.lang.String (null). at org.apache.spark.sql.DataFrameNaFunctions.org$apache$spark$sql$DataFrameNaFunctions$$convertToDouble(DataFrameNaFunctions.scala:434) – sriram Oct 27 '17 at 20:24
35

Since PikkuKatja and glallen asked for a more general solution and I cannot comment yet, I'll write an answer. You can combine statements as in:

> df[df=="" | df==12] <- NA
> df
     A    B
1  <NA> <NA>
2  xyz  <NA>
3  jkl  100

For factors, zxzak's code already yields factors:

> df <- data.frame(list(A=c("","xyz","jkl"), B=c(12,"",100)))
> str(df)
'data.frame':   3 obs. of  2 variables:
 $ A: Factor w/ 3 levels "","jkl","xyz": 1 3 2
 $ B: Factor w/ 3 levels "","100","12": 3 1 2

If in trouble, I'd suggest to temporarily drop the factors.

df[] <- lapply(df, as.character)
24

Here are a couple dplyr options:

library(dplyr)

# all columns:
df %>% 
  mutate_all(~na_if(., ''))

# specific column types:
df %>% 
  mutate_if(is.factor, ~na_if(., ''))

# specific columns:  
df %>% 
  mutate_at(vars(A, B), ~na_if(., ''))

# or:
df %>% 
  mutate(A = replace(A, A == '', NA))

# replace can be used if you want something other than NA:
df %>% 
  mutate(A = as.character(A)) %>% 
  mutate(A = replace(A, A == '', 'used to be empty'))
2
  • How would you go about using the all columns solution to replace several strings by NAs in the whole dataset? – Tea Tree Sep 20 '19 at 16:19
  • These options are still perfectly valid, just note that the the "mutate_at" and "mutate_all" functions have been superseded with the "across()." They're still supported, but R recommends "across()" instead. More details here: dplyr.tidyverse.org/reference/across.html – Ryan Bradley Jun 17 at 21:10
4

We can use data.table to get it quickly. First create df without factors,

df <- data.frame(list(A=c("","xyz","jkl"), B=c(12,"",100)), stringsAsFactors=F)

Now you can use

setDT(df)
for (jj in 1:ncol(df)) set(df, i = which(df[[jj]]==""), j = jj, v = NA)

and you can convert it back to a data.frame

setDF(df)

If you only want to use data.frame and keep factors it's more difficult, you need to work with

levels(df$value)[levels(df$value)==""] <- NA

where value is the name of every column. You need to insert it in a loop.

2
  • 2
    Why would you use an external library for this use case? Why a loop if this can be solved with one line? How does your answer add value beyond the answers already present? I don't intend to be harsh, I think I am missing something, hence the questions. – sedot Jun 21 '17 at 23:34
  • 2
    It's much faster for large datasets. It adds an alternative so that the user can choose the best for him. – skan Jun 22 '17 at 9:12
0

If you want to replace multiple values in a data frame, looping through all columns might help.

Say you want to replace "" and 100:

na_codes <- c(100, "")
for (i in seq_along(df)) {
    df[[i]][df[[i]] %in% na_codes] <- NA
}

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