22

I have a data frame and I need to add another column to it which shows the count of NAs in all the other columns for that row and also the mean of the non-NA values. I think it can be done in dplyr.

> df1 <- data.frame(a = 1:5, b = c(1,2,NA,4,NA), c = c(NA,2,3,NA,NA))
> df1
  a  b  c
1 1  1 NA
2 2  2  2
3 3 NA  3
4 4  4 NA
5 5 NA NA

I want to mutate another column which counts the number of NAs in that row and another column which shows the mean of all the NON-NA values in that row.

2
  • 1
    This generally isn't a forum to ask us to write your code for you. What have you tried? Why do you want to use dplyr? FWIW, this can be done in base R quite easily any number of ways. One is: df1$na <- apply(is.na(df1), 1, sum)
    – Justin
    Commented Feb 16, 2016 at 21:30
  • The dplyr way is described here: stackoverflow.com/questions/21818181/… Commented Feb 16, 2016 at 21:42

4 Answers 4

23
library(dplyr)

count_na <- function(x) sum(is.na(x))    

df1 %>%
  mutate(means = rowMeans(., na.rm = T),
         count_na = apply(., 1, count_na))

#### ANSWER FOR RADEK ####
elected_cols <- c('b', 'c')

df1 %>%
  mutate(means = rowMeans(.[elected_cols], na.rm = T),
         count_na = apply(.[elected_cols], 1, count_na))
3
  • How would you modify this solution to work only on elected columns? For instance b & c?
    – user319487
    Commented Nov 21, 2017 at 7:31
  • @radek see my answer on this page
    – Jerry T
    Commented Nov 22, 2017 at 7:29
  • 1
    @radek - I updated the solution to answer your question. Commented Oct 2, 2020 at 14:38
13

As mentioned here https://stackoverflow.com/a/37732069/2292993

df1 <- data.frame(a = 1:5, b = c(1,2,NA,4,NA), c = c(NA,2,3,NA,NA))

df1 %>%
  mutate(means = rowMeans(., na.rm = T),
         count_na = rowSums(is.na(.)))

to work on selected cols (the example here is for col a and col c):

df1 %>%
  mutate(means = rowMeans(., na.rm = T),
       count_na = rowSums(is.na(select(.,one_of(c('a','c'))))))
8

You can try this:

#Find the row mean and add it to a new column in the dataframe
df1$Mean <- rowMeans(df1, na.rm = TRUE)

#Find the count of NA and add it to a new column in the dataframe
df1$CountNa <- rowSums(apply(is.na(df1), 2, as.numeric))
1

I recently faced a variation on this question where I needed to compute the percent of complete values, but for specific variables (not all variables). Here is an approach that worked for me.

df1 %>% 
  # create dummy variables representing if the observation is missing ----
  # can modify here for specific variables ----
  mutate_all(list(dummy = is.na)) %>% 
  # compute a row wise sum of missing ----
  rowwise() %>% 
  mutate(
    # number of missing observations ----
    n_miss = sum(c_across(matches("_dummy"))),
    # percent of observations that are complete (non-missing) ----
    pct_complete = 1 - mean(c_across(matches("_dummy")))
  ) %>% 
  # remove grouping from rowwise ---- 
  ungroup() %>% 
  # remove dummy variables ----
  dplyr::select(-matches("dummy"))

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.