Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

My data consists of 4 columns: date, low, high, and position.

I am trying to find the ranges by summarizing the data into groups based on the position field.

  1. If diff(position) < 3, then group the data together and apply the range function to each group.
  2. If diff(position) >= 3 calculate range on the current point and the previous one only.

An example of the first 15 positions, the 4th field of the data:

c(12,14,17,18,19,20,21,22,24,28,33,36,37,38,43)

and the expected outcome is to group (12,14) then (17:24), (24,28), (28,33), (33,36), (36:38), and finally (38,43) and find the range for each of the groups.

share|improve this question
    
I think creating a factor field along the position field which would increment by 1 at each "gap" in position that is >= 3 would solve, half of the problem, leaving the overlaps issues still open. the factor field I am thinking of would look like this c(1,1,2,2,2,2,2,2,2,3,4,5,5,5,6) –  user2004820 Feb 25 '13 at 20:09
    
Shouldn't (14,17) also be included among the output groups? –  regetz Feb 26 '13 at 1:04
    
yes you are right (14,17) should be included. thanks for the answer! –  user2004820 Feb 26 '13 at 3:10

3 Answers 3

up vote 1 down vote accepted

Here is an option using diff to identify the bounds between groups.

groupBy <- function(dat, thresh=3)  {
    # bounds will grab the *END* of every group (except last element)
    bounds <- which(! diff(dat) < thresh) 

    # add the last index of dat to the "stops" indecies
    stops  <- c(bounds, length(dat))

    # starts are 1 more than the bounds. We also add the first element 
    starts <- c(1, bounds+1) 

    # mapply to get `seq(starts, stops)`
    indecies <- mapply(seq, from=starts, to=stops)

    # return: lapply over each index to get the results
    lapply(indecies, function(i) dat[i])
}

Testing:

dat1 <- c(12,14,17,18,19,20,21,22,24,28,33,36,37,38,43)
dat2 <- c(5,6,7,9,13,17,21,35,36,41)

groupBy(dat1)
groupBy(dat2)
groupBy(dat2, 5)
share|improve this answer
    
tx Ricardo I prefer using the apply family of functions, your code did that. I appreciate all three responses. Thanks everyone! –  user2004820 Feb 26 '13 at 17:06
    
Oops, the code as is generates grouping error when there are back to back groups of one element. When the data is: dat <- c(5,6,7,9,13,17,21,35,36,41) the code above grouped[[2]] return is: 13,17,21,35,36 these elements are separated by >3 but were grouped in one group. –  user2004820 Feb 26 '13 at 18:09
    
@user2004820, great catch. Sorry I missed it originally. Please see the edit (now wrapped in a nice little function!) –  Ricardo Saporta Feb 26 '13 at 18:47
    
Excellent, really appreciated!! –  user2004820 Feb 26 '13 at 19:06

Here is a function that uses base R functions to return a list of positional indices grouped according to the stated rule. If the values might not be monotonic, and you just care about the absolute differences, I think it would be sufficient to change diff(x) to abs(diff(x)) (and remove the subsequent monotonicity check).

groupIndexes <- function(x, gap=3) {
    d <- diff(x)
    # currently assuming x is in increasing order
    if (any(d<0)) stop("x must be monotonically increasing")
    is.near <- (d < gap)
    # catch case of a single group
    if (all(is.near)) return(list(seq_along(x)))
    runs <- rle(ifelse(is.near, 0, seq_along(is.near)))
    gr <- rep(seq.int(runs$lengths), times=runs$lengths)
    lapply(unique(gr), function(i) {
        ind <- if(runs$values[i]>0) {
            match(i, gr)
        } else {
            which(gr==i)
        }
        c(ind, max(ind)+1)
    })
}

This produces this grouped values themselves:

x <- c(12,14,17,18,19,20,21,22,24,28,33,36,37,38,43)
lapply(groupIndexes(x), function(ind) x[ind])

If in your real case you have a data frame 'dat', you can generate groups based on the 'position' column and then compute group-wise ranges for the 'low' column like so:

lapply(groupIndexes(dat$position), function(ind) range(dat$low[ind]))
share|improve this answer

Using IRanges:

require(IRanges)
x <- c(12,14,17,18,19,20,21,22,24,28,33,36,37,38,43)
o <- reduce(IRanges(x, width=1), min.gapwidth=2)

gives:

IRanges of length 6
    start end width
# [1]    12  14     3
# [2]    17  24     8
# [3]    28  28     1
# [4]    33  33     1
# [5]    36  38     3
# [6]    43  43     1

This solves half your problem. Those places where width = 1, you want to get appropriate previous values. So, let's convert this to a data.frame.

o <- as.data.frame(o)
o$start[o$width == 1] <- o$end[which(o$width == 1)-1]
o$width <- NULL

#   start end
# 1    12  14
# 2    17  24
# 3    24  28
# 4    28  33
# 5    36  38
# 6    38  43

That gives the final result.

Edit: Seems like the OP missed (14,17) in the ranges required.

ir <- IRanges(x, width = 1)
o1 <- reduce(ir, min.gapwidth = 2)
o2 <- gaps(o1)
start(o2) <- start(o2) - 1
end(o2) <- end(o2) + 1
o1 <- as.data.frame(o1[width(o1) > 1])
o2 <- as.data.frame(o2)
out <- rbind(o1, o2)
out <- out[with(out, order(start, end)), ]

#   start end width
# 1    12  14     3
# 4    14  17     4
# 2    17  24     8
# 5    24  28     5
# 6    28  33     6
# 7    33  36     4
# 3    36  38     3
# 8    38  43     6
share|improve this answer
    
getting familiar with the biocLite() package. I had trouble with the installation. But its working now. Thanks for the answer –  user2004820 Feb 26 '13 at 3:43

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.