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I have a matrix with very large number of rows and only two paired columns. I want to calculate the differences between each rows in column 1 and if the difference is less than a predefined value(.001) then calculate the average of those rows in both columns. For example I have a matrix called weights,

  A      B
185.0765 10
185.3171 20
186.0777 30
186.0780 40
188.0078 50

bins<-weights[A %between% c(A[3],(A[3]+.001))]

and the resulting matrix will be,

  A      B
185.0765 10
185.3171 20
186.0779 35
188.0078 50

I would be thankful if someone could please advice me how to do this for large number of rows. I think using a for loop would not be very efficient.

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+1 for input data and desired output and interesting problem. – Simon O'Hanlon Jun 12 '13 at 12:49

1 Answer 1

up vote 5 down vote accepted

This should achieve what you want to do, using data.table:

DT <- data.table( weights )
DT[ , Group :=( cumsum( c( 1 , ifelse( diff(weights$A) < 0.001 , 0 , 1 ) ) ) ) ]
DT[ , lapply(.SD, mean) , by=Group ,  .SDcols = c("A","B") ]
#   Group        A  B
#1:     1 185.0765 10
#2:     2 185.3171 20
#3:     3 186.0779 35
#4:     4 188.0078 50

The idea is we use a cumulative sum to find the groups of A that have a difference of < 0.001. If the difference is under this threshold we put a 0 in our Group column, so in the cumulative sum it will be part of the same group.

As suggested by @eddi a more succinct and efficient way of doing this would be to do the grouping and the calculation all at the same time, in one call:

DT <- data.table( weights )
DT[ , lapply(.SD, mean) , by = list(Group = cumsum(c(1,diff(A)) >= 0.001)) ,  .SDcols = c("A","B") ]    

As an aside, it is always helpful to have an absolute number of rows. A very large number of rows mean different things to different people and use-cases. Are we talking million? Hundreds of millions?

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+1 That's ideal use of .SD since it's using all the information in .SD. The main inefficiency of using .SD is if taking a subset of rows from it; e.g., head(.SD,2) wastefully creates all of .SD even though only the first 2 rows are needed. But lapply through .SD uses all the data, and is what .SD is there for, especially with .SDcols, too. – Matt Dowle Jun 12 '13 at 12:44
@MatthewDowle ah ok, I think I am slowly beginning to understand .SD and the wonderful data.table package! (thanks and a hat-tip!) – Simon O'Hanlon Jun 12 '13 at 12:46
using by = list(Group = cumsum(c(1,diff(A)) >= 0.001)) would achieve the exact same output in less lines and without using ifelse – eddi Jun 12 '13 at 12:59
@eddi Yes that's intended: any symbols used in by are excluded from .SD as most often that's what is needed; e.g., by=month(date). But can force them into .SD using .SDcols if needed. – Matt Dowle Jun 12 '13 at 13:44
@eddi, IIUC, I had the same question as well on the data.table mailing list: – Arun Jun 13 '13 at 11:16

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