Let's say we have two data frames in R,
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
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
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
which(). Any ideas?