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This question is related to data.table class, from the homonymous R package.

Given a data.table object I would like to divide it into slices according to the values ​​of some of its columns.

To make clear what I must do I give an example.

Suppose this is the input data.table.

dataf <- data.frame(list(
  T = c(1.80,1.81,1.82,1.83,1.85,1.87,1.90,1.95,2.00),
  A = c(1,0,1,1,1,0,1,1,0),
  B = c(0,0,0,0,0,0,1,0,0),
  C = c(0,1,0,1,1,0,1,1,0),
  D = c(0,0,1,1,1,0,0,1,0))
)
datat <- data.table(dataf)
datat
#       T A B C D
# 1: 1.80 1 0 0 0
# 2: 1.81 0 0 1 0
# 3: 1.82 1 0 0 1
# 4: 1.83 1 0 1 1
# 5: 1.85 1 0 1 1
# 6: 1.87 0 0 0 0
# 7: 1.90 1 1 1 0
# 8: 1.95 1 0 1 1
# 9: 2.00 0 0 0 0

The goal is to split this table into sub-tables, based on the values ​​of n selected columns (with n = 0, ..., ncol(datat) - 1).

For this input, selecting as anchor columns C and D, the output have to be something like:

# $`0|0`
#       T A B C D
# 1: 1.80 1 0 0 0

# $`1|0`
#       T A B C D
# 1: 1.81 0 0 1 0

# $`0|1`
#       T A B C D
# 1: 1.82 1 0 0 1

# $`1|1`
#       T A B C D
# 1: 1.83 1 0 1 1
# 2: 1.85 1 0 1 1

# $`0|0`
#       T A B C D
# 1: 1.87 0 0 0 0

# $`1|0`
#       T A B C D
# 1: 1.90 1 1 1 0

# $`1|1`
#       T A B C D
# 1: 1.95 1 0 1 1

# $`0|0`
#       T A B C D
# 1: 2.00 0 0 0 0

As deducible from the example just shown, the splitting condition is:

  • the value of the selected columns is different from its value in the previous line?

Important: in this example the word "value" has to be intended as the couple of column values.

Note:

I thought to this output structure as then (the second goal) I have to apply one (or two) function to this sub-tables, get their outputs and aggregate them (e.g. sum, merge or other operations) by the common name of the element list (i.e. 0|0 with 0|0, 1|0 with 1|0 etc. etc.).

If you think that there is a better fitted or easier output structure that will permit also this second goal, your suggests are very welcome.

Obiviously, the performances of the solution are important because I have to process big tables.

Unfortunately, I consider myself a newbie with data.table package, infact I know only few things about it: how to subset by colnames, etc. etc..

So your help is greatly appreciated, as it will help me to learn something new. Thanks in advance.

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1 Answer 1

up vote 3 down vote accepted

I'd do it with rle and split as follows:

ids <- do.call(paste, c(datat[, 4:5, with = FALSE], sep="|"))
rle.ids <- rle(ids)
datat.spl <- split(datat, rep(seq_along(rle.ids$values), rle.ids$lengths))
names(datat.spl) <- rle.ids$values

Reading your note section, since your objective is to apply functions to these sub tables by grouping/aggregating them, I'd suggest just adding an additional column to data.table like so:

datat[, grp1 := do.call(paste, c(datat[, 4:5, with = FALSE], sep="|"))]

If you want you can also add another grouping like so:

datat[, grp2 := rep(seq_along(rle.ids$values), rle.ids$lengths)]

Now if you want all the "0|0" grouped together, then subset by grp1.

# example
datat[, list(s.A = sum(A)), by = grp1]

If you want the aggregation to be done for every separate set of "0|0", then, subset by grp2.

# example
datat[, list(grp1 = grp1[1], s.A = sum(A)), by = grp2]

Hope this helps.

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