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I am attempting to work through Hadley Wickham's R for Data Science and have gotten tripped up on the following question: "How could you use arrange() to sort all missing values to the start? (Hint: use is.na())" I am using the flights dataset included in the nycflights13 package. Given that arrange() sorts all unknown values to the bottom of the dataframe, I am not sure how one would do the opposite across the missing values of all variables. I realize that this question can be answered with base R code, but I am specifically interested in how this would be done using dplyr and a call to the arrange() and is.na() functions. Thanks.

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  • 7
    You can use arrange(dat, desc(is.na(variable)))
    – akrun
    Jun 11, 2016 at 6:14

4 Answers 4

12

We can wrap it with desc to get the missing values at the start

flights %>% 
    arrange(desc(is.na(dep_time)),
           desc(is.na(dep_delay)),
           desc(is.na(arr_time)), 
           desc(is.na(arr_delay)),
           desc(is.na(tailnum)),
           desc(is.na(air_time)))

The NA values were only found in those variables based on

names(flights)[colSums(is.na(flights)) >0]
#[1] "dep_time"  "dep_delay" "arr_time"  "arr_delay" "tailnum"   "air_time" 

Instead of passing each variable name at a time, we can also use NSE arrange_

nm1 <- paste0("desc(is.na(", names(flights)[colSums(is.na(flights)) >0], "))")

r1 <- flights %>%
        arrange_(.dots = nm1) 

r1 %>%
   head()
#year month   day dep_time sched_dep_time dep_delay arr_time sched_arr_time arr_delay carrier flight tailnum
#  <int> <int> <int>    <int>          <int>     <dbl>    <int>          <int>     <dbl>   <chr>  <int>   <chr>
#1  2013     1     2       NA           1545        NA       NA           1910        NA      AA    133    <NA>
#2  2013     1     2       NA           1601        NA       NA           1735        NA      UA    623    <NA>
#3  2013     1     3       NA            857        NA       NA           1209        NA      UA    714    <NA>
#4  2013     1     3       NA            645        NA       NA            952        NA      UA    719    <NA>
#5  2013     1     4       NA            845        NA       NA           1015        NA      9E   3405    <NA>
#6  2013     1     4       NA           1830        NA       NA           2044        NA      9E   3716    <NA>
#Variables not shown: origin <chr>, dest <chr>, air_time <dbl>, distance <dbl>, hour <dbl>, minute <dbl>,
#  time_hour <time>.

Update

With the newer versions of tidyverse (dplyr_0.7.3, rlang_0.1.2) , we can also make use of arrange_at, arrange_all, arrange_if

nm1 <- names(flights)[colSums(is.na(flights)) >0]
r2 <- flights %>% 
          arrange_at(vars(nm1), funs(desc(is.na(.))))

Or use arrange_if

f <- rlang::as_function(~ any(is.na(.)))
r3 <- flights %>% 
          arrange_if(f, funs(desc(is.na(.))))


identical(r1, r2)
#[1] TRUE

identical(r1, r3)
#[1] TRUE
5

Try the easiest way, what he just showed you:

arrange(flights, desc(is.na(dep_time)))

The other nice shortcuts:

arrange(flights, !is.na(dep_time))

or

arrange(flights, -is.na(dep_time))
3

The following arranges the rows in descending order by their number of NAs:

flights %>% 
    arrange(desc(rowSums(is.na(.))))

    # A tibble: 336,776 × 19
    year month   day dep_time sched_dep_time dep_delay arr_time sched_arr_time
   <int> <int> <int>    <int>          <int>     <dbl>    <int>          <int>
1   2013     1     2       NA           1545        NA       NA           1910
2   2013     1     2       NA           1601        NA       NA           1735
3   2013     1     3       NA            857        NA       NA           1209
4   2013     1     3       NA            645        NA       NA            952
5   2013     1     4       NA            845        NA       NA           1015
6   2013     1     4       NA           1830        NA       NA           2044
7   2013     1     5       NA            840        NA       NA           1001
8   2013     1     7       NA            820        NA       NA            958
9   2013     1     8       NA           1645        NA       NA           1838
10  2013     1     9       NA            755        NA       NA           1012
# ... with 336,766 more rows, and 11 more variables: arr_delay <dbl>, carrier <chr>,
#   flight <int>, tailnum <chr>, origin <chr>, dest <chr>, air_time <dbl>,
#   distance <dbl>, hour <dbl>, minute <dbl>, time_hour <dttm>
0

Solution by @akrun works fine. However, arrange_ is deprecated SE versions of main verbs. to avoid it, we can use eval

nmf <- names(flights)[colSums(is.na(flights)) > 0]
rules = paste0("!is.na(", nmf, ")")
rc <- paste(rules, collapse = ",")
arce <-  paste("arrange(flights," , rc , ")")
expr <- parse(text = arce)
ret <- eval(expr)

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