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Very simple question and I regret having to ask it on SO. I'm hoping a creative mind out there has a better solution than I have thought of.

I want to find the differences between adjacent values of a matrix where the value for "type" is the same. For the below example, I would want a vector with the values 2,6,1.

     value type
[1,]  5   A
[2,]  7   A
[3,]  1   B
[4,]  2   C
[5,]  8   C
[6,]  9   C

I have tried implementing it in two ways, but both of them are quite slow:

  • Approach 1: If type(row 1) = type(row 2), then find value(row 2) - value(row 1), then increment by one. If type(row 1) != type(row 2), then increment by 2.

  • Approach 2: Loop through each different type and find all differences.

There are about 500,000 different "types" and 5 million different rows. Can anyone think of a more efficient way? I am programming in the language R, where there is already a function to find the differences for me (see: ?diff).

share|improve this question
I am not sure your output 2, 6, 1 concurs with what you are saying what you want to do. – asb Jul 16 '13 at 21:29
sorry for any confusion. To clarify, I will only want differences in values if there are two or more rows of the same "type". – user2588829 Jul 16 '13 at 21:31
Why a flat structure when you want something more composite? Maybe something like a map of arrays with types as keys? – user814628 Jul 16 '13 at 21:32
Please show the code you have tried, rather than pseudocode. This is an optimization question, which can't really be answered without the original code. – mattexx Jul 16 '13 at 21:47
Ahh, now I got it. – asb Jul 16 '13 at 22:07
up vote 2 down vote accepted

Since you say you have too many rows to do this, I'll suggest a data.table solution:

DT <- data.table(df) # where `df` is your data.frame

DT[, diff(value), by=type]$V1
# [1] 2 6 1

Simulating this code on a data of your dimensions:

It takes close to 20 seconds (bottleneck should be calls to diff) on data of your dimensions.

types <- sapply(1:5e5, function(x) paste0(sample(letters, 5, TRUE), collapse=""))

DT <- data.table(value=sample(100, 5e6, TRUE), type=sample(types, 5e6, TRUE))
system.time(t1 <- DT[, diff(value), by=type]$V1)
#   user  system elapsed 
# 18.610   0.238  19.166 

To compare against the other answer with tapply:

system.time(t2 <- tapply(DT[["value"]], DT[["type"]], diff))
#   user  system elapsed 
# 48.471   0.664  51.673 

Also, tapply orders the results by type where as data.table without key will preserve the original order.

Edit: Following @eddi's comment:

> system.time(t3 <- DT[, value[-1]-value[-.N], by=type]$V1)
#  user  system elapsed 
# 6.221   0.195   6.641 

There's a 3x improvement by removing the call to diff. Thanks @eddi.

share|improve this answer
wow, this not only works but is also very fast. Great solution, thank you so much. – user2588829 Jul 16 '13 at 21:48
replace diff(value) with value[-1] - value[-.N] to get ~4x speed improvement – eddi Jul 16 '13 at 21:52
@eddi: That's pretty slick! – asb Jul 16 '13 at 22:09


tapply(mat[["value"]], mat[["type"]], diff)

Then you can unlist your result to get it in a tidier format.

share|improve this answer

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