2

I have data containing a unique identifier, a category, and a description. Below is a toy dataset.

prjnumber <- c(1,2,3,4,5,6,7,8,9,10)
category <- c("based","trill","lit","cold",NA,"epic", NA,NA,NA,NA)
description <- c("skip class",
                 "dunk on brayden",
                 "record deal",
                 "fame and fortune",
                 NA,
                 "female attention",
                 NA,NA,NA,NA)
toy.df <- data.frame(prjnumber, category, description)

> toy.df
       prjnumber category      description
    1          1    based       skip class
    2          2    trill  dunk on brayden
    3          3      lit      record deal
    4          4     cold fame and fortune
    5          5     <NA>             <NA>
    6          6     epic female attention
    7          7     <NA>             <NA>
    8          8     <NA>             <NA>
    9          9     <NA>             <NA>
    10        10     <NA>             <NA>

I want to randomly sample the 'category' and 'description' columns from rows that have been filled in to use as infill for rows with missing data. The final data frame would be complete and would only rely on the initial 5 rows which contain data. The solution would preserve between-column correlation. An expected output would be:

> toy.df
       prjnumber category      description
    1          1    based       skip class
    2          2    trill  dunk on brayden
    3          3      lit      record deal
    4          4     cold fame and fortune
    5          5      lit      record deal
    6          6     epic female attention
    7          7    based       skip class
    8          8    based       skip class
    9          9     lit       record deal
    10        10   trill   dunk on brayden
0

3 Answers 3

5
complete = na.omit(toy.df)
toy.df[is.na(toy.df$category), c("category", "description")] =
    complete[sample(1:nrow(complete), size = sum(is.na(toy.df$category)), replace = TRUE),
             c("category", "description")]
toy.df
#    prjnumber category      description
# 1          1    based       skip class
# 2          2    trill  dunk on brayden
# 3          3      lit      record deal
# 4          4     cold fame and fortune
# 5          5      lit      record deal
# 6          6     epic female attention
# 7          7     cold fame and fortune
# 8          8    based       skip class
# 9          9     epic female attention
# 10        10     epic female attention

Though it would seem a little more straightforward if you didn't start with the unique identifiers filled out for the NA rows...

1
  • Exactly, that's why it was so tricky. I have Identifier slots with no data in non-contiguous rows. May 12, 2015 at 17:52
5

You could try

library(dplyr)
toy.df %>%
      mutate_each(funs(replace(., is.na(.), sample(.[!is.na(.)]))), 2:3) 

Based on new information, we may need a numeric index to use in the funs.

toy.df %>% 
   mutate(indx= replace(row_number(), is.na(category), 
           sample(row_number()[!is.na(category)], replace=TRUE)))  %>%
   mutate_each(funs(.[indx]), 2:3) %>% 
   select(-indx)
11
  • Added the sample, may be that is what needed
    – akrun
    May 12, 2015 at 18:04
  • ...and maybe with a replace = TRUE. Also worth noting that this doesn't preserve correlation between the two columns. Not entirely clear if OP wants that or not. May 12, 2015 at 18:26
  • @Gregor Thanks for the comment. I am also not sure by reading the question.
    – akrun
    May 12, 2015 at 18:32
  • Thanks for both solutions, I was looking to preserve correlation and it seems via testing that both do May 12, 2015 at 18:33
  • 1
    Need that replace = TRUE in the sample ;) May 12, 2015 at 19:08
2

Using Base R to fill in a single field a at a time, use something like (not preserving the correlation between the fields):

fields  <-  c('category','description')
for(field in fields){
    missings  <-  is.na(toy.df[[field]])
    toy.df[[field]][missings]  <-  sample(toy.df[[field]][!missings],sum(missings),T)
}

and to fill them in simultaneously (preserving the correlation between the fields) use something like:

missings  <-  apply(toy.df[,fields],
                    1,
                    function(x)any(is.na(x)))

toy.df[missings,fields]  <-  toy.df[!missings,fields][sample(sum(!missings),
                                                           sum(missings),
                                                           T),]

and of course, to avoid the implicit for loop in the apply(x,1,fun), you could use:

rowAny <- function(x) rowSums(x) > 0
missings  <-  rowAny(toy.df[,fields])

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