12

Background

Here's a toy df:

df <- data.frame(ID = c("a","b","c","d","e","f"), 
                gender = c("f","f","m","f","m","m"), 
                zip = c(48601,NA,29910,54220,NA,44663),stringsAsFactors=FALSE)

As you can see, I've got a couple of NA values in the zip column.

Problem

I'm trying to randomly sample 2 entire rows from df -- but I want them to be rows for which zip is not null.

What I've tried

This code gets me a basic (i.e. non-conditional) random sample:

df2 <- df[sample(nrow(df), 2), ]

But of course, that only gets me halfway to my goal -- a bunch of the time it's going to return a row with an NA value in zip. This code attempts to add the condition:

df2 <- df[sample(nrow(df$zip != NA), 2), ]

I think I'm close, but this yields an error invalid first argument.

Any ideas?

9

We can use is.na

tmp <- df[!is.na(df$zip),]
> tmp[sample(nrow(tmp), 2),]
5
  • Thanks! This works, and it'll definitely do in a pinch, but the real dataset I'm working on has ~200m rows (and ~15 cols) and I'm wondering if making the first tmp is going to take a bunch of time. Let me try running it and seeing how we do.
    – logjammin
    Aug 5 at 18:59
  • 1
    @logjammin if it is big, why not use data.table i.e. library(data.table);setDT(df)[!is.na(tmp)][sample(.N, 2)]
    – akrun
    Aug 5 at 19:00
  • I'll try that now and report back. Thanks akrun.
    – logjammin
    Aug 5 at 19:02
  • 1
    I get an error when running your most recent code on the real dataset (` i is invalid type (matrix)), but thankfully your original answer actually works very well. My concerns about the speed of running tmp <- df[!is.na(df$zip),]` on that many rows were unfounded; it only took 3 seconds or so. The subsequent sample took no time at all, either, and I get the new df I wanted out of it. Much appreciated.
    – logjammin
    Aug 5 at 19:09
  • @logjammin that error seems to be related to type of dataset. i.e. data.frame vs matrix
    – akrun
    Aug 5 at 19:10
8

We can use rownames + na.omit to sample the rows

> df[sample(rownames(na.omit(df["zip"])), 2),]
  ID gender   zip
3  c      m 29910
4  d      f 54220
2
  • In na.omit can we make it na.omit(df$zip)? I don't mind if other columns have NA, just if zip does.
    – logjammin
    Aug 5 at 22:37
  • 1
    @logjammin Okay, I see. Please check with my update. Aug 5 at 22:41
6

Here is a base R solution with complete.cases()

# define a logical vector to identify NA
x <- complete.cases(df)

# subset only not NA values
df_no_na <- df[x,]

# do the sample
df_no_na[sample(nrow(df_no_na), 2),]

Output:

  ID gender   zip
3  c      m 29910
6  f      m 44663
4
  • 1
    This is great, and fast. Thanks. I'm going to benchmark it against akrun's solution above and see who wins on the "real" dataset, which is fairly large (~200m x ~15).
    – logjammin
    Aug 5 at 19:15
  • This is indeed great. Aug 5 at 19:19
  • Ah wait but suppose there are other columns with NA in the real dataset -- wouldn't complete cases choose only rows with every column complete (i.e. with no NA anywhere)? I don't care about having other NA in other columns, only about zip.
    – logjammin
    Aug 5 at 19:23
  • 1
    You colud do x <- complete.cases(df[,3]). Is only for column 3 e.g. zip.
    – TarJae
    Aug 5 at 19:30
4

For the tidyverse lovers out there...

library("dplyr")
df %>% 
  tidyr::drop_na() %>% 
  dplyr::slice_sample(n = 2)

If it only NA in the zip column you care about, then:

df %>% 
  tidyr::drop_na(zip) %>% 
  dplyr::slice_sample(n = 2)
2

The important thing here is to avoid creating an unnecessary second data frame with the NA values dropped. You could use the solution using na.omit given in another answer, but alternatively you can use which to return a list of valid rows to sample from. For example:

nsamp <- 23
df[sample(which(!is.na(df$zip)), nsamp), ]

The advantage to doing it this way is that the condition inside the which can be anything you like, whether or not it involves missing values. For example this version will sample from all the rows with female gender in zip codes starting with 336:

df[sample(which(df$gender=='f' & grepl('^336', df$zip)), nsamp), ]

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