2

Let's say we have two data frames in R, df.A and df.B, defined thus:

bin_name <- c('bin_1','bin_2','bin_3','bin_4','bin_5')
bin_min <- c(0,2,4,6,8)
bin_max <- c(2,4,6,8,10)
df.A <- data.frame(bin_name, bin_min, bin_max, stringsAsFactors = FALSE)

obs_ID <- c('obs_1','obs_2','obs_3','obs_4','obs_5','obs_6','obs_7','obs_8','obs_9','obs_10')
obs_min <- c(6.5,0,8,2,1,7,5,6,8,3)
obs_max <- c(7,3,10,3,9,8,5.5,8,10,4)
df.B <- data.frame(obs_ID, obs_min, obs_max, stringsAsFactors = FALSE)

df.A defines the ranges of bins, while df.B consists of rows of observations with min and max values that may or may not fall entirely within a bin defined in df.A.

We want to generate a new vector of length nrow(df.B) containing the row indices of df.A corresponding to the bin in which each observation falls entirely. If an observation straddles a bin falls or partially outside it, then it can't be assigned to a bin and should return NA (or something similar).

In the above example, the correct output vector would be this:

bin_rows <- c(4, NA, 5, 2, NA, 4, 3, 4, 5, 2)

I came up with a long-winded solution using sapply:

bin_assignments <- sapply(1:nrow(df.B), function(i) which(df.A$bin_max >= df.B$obs_max[i] & df.A$bin_min <= df.B$obs_min[i])) #get bin assignments for every observation
bin_assignments[bin_assignments == "integer(0)"] <- NA #replace "integer(0)" entries with NA
bin_assignments <- do.call("c", bin_assignments) #concatenate the output of the sapply call

Several months ago I discovered a simple, single-line solution to this problem that didn't use an apply function. However, I forgot how I did this and I have not been able to rediscover it! The solution might involve match() or which(). Any ideas?

3
  • If anyone can think of a more concise and descriptive title to this question, please suggest one!
    – Roger
    Nov 10 '16 at 12:33
  • 1
    Are the bins consecutive integer ranges? You could compare findInterval(df.B$obs_min, seq(0, 10, 2)) with findInterval(df.B$obs_max, seq(0, 10, 2), rightmost.closed = TRUE, left.open = TRUE) and replace with NA in case of inequality.
    – alexis_laz
    Nov 10 '16 at 13:56
  • Bins are not always consecutive interval ranges, although bins never overlap. Thanks for the suggestion, though. I haven't used findInterval before.
    – Roger
    Nov 10 '16 at 14:03
1

1) Using SQL it can readily be done in one statement:

library(sqldf)

sqldf('select a.rowid
       from "df.B" b 
       left join "df.A" a on obs_min >= bin_min and obs_max <= bin_max')

   rowid
1      4
2     NA
3      5
4      2
5     NA
6      4
7      3
8      4
9      5
10     2

2) merge/by We can do it in two statements using merge and by. No packages are used.

This does have the downside that it materializes the large join which the SQL solution would not need to do.

Note that df.B, as defined in the question, has obs_10 is the second level rather than the 10th level. If it were such that obs_10 were the 10th level then the second argument to by could have been just m$obs_ID so fixing up the input first could simplify it.

m <- merge(df.B, df.A)
stack(by(m, as.numeric(sub(".*_", "", m$obs_ID)), 
      with, c(which(obs_min >= bin_min & obs_max <= bin_max), NA)[1]))

giving:

   values ind
1       4   1
2      NA   2
3       5   3
4       2   4
5      NA   5
6       4   6
7       3   7
8       4   8
9       5   9
10      2  10

3) sapply Note that using the c(..., NA)[1] trick from (2) we can simplify the sapply solution in the quesiton to one statement:

sapply(1:nrow(df.B), function(i)
  c(which(df.A$bin_max >= df.B$obs_max[i] & df.A$bin_min <= df.B$obs_min[i]), NA)[1]) 

giving:

[1]  4 NA  5  2 NA  4  3  4  5  2

3a) mapply A nicer variation of (3) using mapply is given by @Ronak Shah` in the comments:

mapply(function(x, y) c(which(x >= df.A$bin_min & y <= df.A$bin_max), NA)[1], 
       df.B$obs_min, 
       df.B$obs_max)

4) outer Here is another one statement solution that uses no packages.

seq_len(nrow(df.A)) %*% 
  (outer(df.A$bin_max, df.B$obs_max, ">=") & outer(df.A$bin_min, df.B$obs_min, "<="))

giving:

     [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10]
[1,]    4    0    5    2    0    4    3    4    5     2
4
  • These are all really neat solutions containing clever and useful tricks; thanks! However, I'm going to wait a bit to if someone comes up with the solution that I discovered and lost before accepting your answer.
    – Roger
    Nov 10 '16 at 14:01
  • Added solution (4) Nov 10 '16 at 14:26
  • That one's also great, and seems much faster than the sapply solution. It's not the solution I found, but I'll accept your answer.
    – Roger
    Nov 10 '16 at 14:38
  • 1
    and similar with mapply , t(mapply(function(x, y) c(which(x >= df.A$bin_min & y <= df.A$bin_max), NA)[1], df.B$obs_min, df.B$obs_max))
    – Ronak Shah
    Nov 11 '16 at 4:16

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