Here's a dummy data :

father<- c(1, 1, 1, 1, 1)
mother<- c(1, 1, 1, NA, NA) 
children <- c(NA, NA, 2, 5, 2) 
cousins   <- c(NA, 5, 1, 1, 4) 

dataset <- data.frame(father, mother, children, cousins)  

father  mother  children cousins
1      1       NA      NA
1      1       NA       5
1      1        2       1
1     NA        5       1
1     NA        2       4

I want to filter this row :

  father  mother  children cousins
    1      1       NA      NA

I can do it with :

test <- dataset %>% 
filter(father==1 & mother==1) %>%
filter (is.na(children)) %>%
filter (is.na(cousins))

My question : I have many columns like grand father, uncle1, uncle2, uncle3 and I want to avoid something like that:

  filter (is.na(children)) %>%
  filter (is.na(cousins)) %>%
  filter (is.na(uncle1)) %>%
  filter (is.na(uncle2)) %>%
  filter (is.na(uncle3)) 
  and so on...

How can I use dplyr to say filter all the column with na (except father==1 & mother==1)


A possible dplyr( <= version < 1.0) solution is:

# > packageVersion('dplyr')
# [1] ‘’

dataset %>%
    filter(!is.na(father), !is.na(mother)) %>%
    filter_at(vars(-father, -mother), all_vars(is.na(.)))


  • vars(-father, -mother): select all columns except father and mother.
  • all_vars(is.na(.)): keep rows where is.na is TRUE for all the selected columns.

note: any_vars should be used instead of all_vars if rows where is.na is TRUE for any column are to be kept.

Update (2020-11-28)

As the _at functions and vars have been superseded by the use of across since dplyr 1.0, the following way (or similar) is recommended now:

dataset %>%
    filter(across(c(father, mother), ~ !is.na(.x))) %>%
    filter(across(c(-father, -mother), is.na))

See more example of across and how to rewrite previous code with the new approach here: Colomn-wise operatons or type vignette("colwise") in R after installing the latest version of dplyr.


None of the answers seems to be an adaptable solution. I think the intention is not to list all the variables and values to filter the data.

One easy way to achieve this is through merging. If you have all the conditions in df_filter then you can do this:

df_results = df_filter %>% left_join(df_all)
  • it is unclear what "all the conditions in df_filter " means. I would suspect all conditions in dplyr code, but your code example suggests otherwise. Please clarify
    – Agile Bean
    Jan 8 at 8:59
  • It means all cells meet the condition. Like the example given in the question under "I want to filter this row :".
    – Feng Jiang
    Jan 16 at 0:02

A dplyr solution:

test <- dataset %>% 
  filter(father==1 & mother==1 & rowSums(is.na(.[,3:4]))==2)

Where '2' is the number of columns that should be NA.

This gives:

> test
  father mother children cousins
1      1      1       NA      NA

You can apply this logic in base R as well:

dataset[dataset$father==1 & dataset$mother==1 & rowSums(is.na(dataset[,3:4]))==2,]

dplyr >= 1.0.0

If you're using dplyr version >= 1.0.0 you really should use if_any or if_all, which specifically combines the results of the predicate function into a single logical vector making it very useful in filter. The syntax is identical to across, but these verbs were added to help fill this need: if_any/if_all.


dataset %>% 
  filter(if_all(-c(father, mother), ~ is.na(.)) & if_all(c(father, mother), ~ !is.na(.)))


  father mother children cousins
1      1      1       NA      NA

Here is a base R method using two Reduce functions and [ to subset.

keepers <- Reduce(function(x, y) x == 1 & y == 1, dataset[, 1:2]) &
           Reduce(function(x, y) is.na(x) & is.na(y), dataset[, 3:4])

Each Reduce consecutively takes the variables provided and performs a logical check. The two results are connected with an &. The second argument to the Reduce functions can be adjusted to include whatever variables in the data.frame that you want.

Then use the logical vector to subset

  father mother children cousins
1      1      1       NA      NA
  • 1
    Thank you a lot . I am looking for dplyr
    – Wilcar
    May 12 '17 at 13:33

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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