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I am looking for a fast way to convert a list into a matrix with an additional column containing a repeating 1:5 pattern. For instance, the list mat looks like this. The list and the repeating pattern can get to thousands of values in length and so a fast approach would be ideal.

I can convert the list to a matrix using melt (may not be ideal for large matrices though), however, I am having trouble getting the repeating pattern to work.

The matrix looks like this

mat

[[1]]
[1] 5

[[2]]
[1] 1 4 5

[[3]]
[1] 3 1

[[4]]
[1] 4 6 5 3

The output should contain the values of the list as well as an index column containing a 1:5 repeating pattern depending on the length of each index in the list. For instance, mat[[4]] contains 4 values, therefore the index column should contain a values 1:4

output

[,1] [,2]
  5  1
  1  1
  4  2
  5  3
  3  1
  1  2
  4  1
  6  2
  5  3
  3  4
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mat <- list(5, c(1,4,5), c(3,1), c(4,6,5,3))  ## your example data

We can use basic operations:

cbind( unlist(mat), sequence(lengths(mat)) )

#      [,1] [,2]
# [1,]    5    1
# [2,]    1    1
# [3,]    4    2
# [4,]    5    3
# [5,]    3    1
# [6,]    1    2
# [7,]    4    1
# [8,]    6    2
# [9,]    5    3
#[10,]    3    4

Alternatively,

cbind( unlist(mat), unlist(lapply(mat, seq_along)) )
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Here is another option with Map. We get the sequence of each list element with lapply, cbind the corresponding elements of list using Map and rbind it.

do.call(rbind, Map(cbind, mat, lapply(mat, seq_along)))
#     [,1] [,2]
#[1,]    5    1
#[2,]    1    1
#[3,]    4    2
#[4,]    5    3
#[5,]    3    1
#[6,]    1    2
#[7,]    4    1
#[8,]    6    2
#[9,]    5    3
#[10,]   3    4

Or with data.table, we melt the list to a 2 column data.frame, convert it to data.table with setDT and assign (:=) the sequence of 'L1' to 'L1' after grouping by 'L1'

library(data.table)
setDT(melt(mat))[, L1 := seq_len(.N), L1][]
#    value L1
# 1:     5  1
# 2:     1  1
# 3:     4  2
# 4:     5  3
# 5:     3  1
# 6:     1  2
# 7:     4  1
# 8:     6  2
# 9:     5  3
#10:     3  4
  • @DavidArenburg THanks, I added the reshape2 – akrun Jan 1 '17 at 8:01
  • @DavidArenburg I tried the setDT and data.table(mat), but it is not working in 1.10.0 i.e. melt(data.table(mat))# mat 1: 5 2: 1,4,5 3: 3,1 4: 4,6,5,3 Warning message: In melt.data.table(data.table(mat)) : – akrun Jan 1 '17 at 8:09

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