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I'm trying to find an easy way in R to take a dataset with a person_id, date, and several variables fields (let's say 20, named x1, x2...x20) and convert it to a 3-dimensional array (m by n by p) where m is the number of people, n is the number of discrete time-periods, and p are the number of variables.

Current data appears as:

m1 n1 x1 x2 x3 ... x20    
m1 n2 x1 x2 x3 ... x20
m1 nN   . .  . ...  .
m2 n1 x1 x2 x3 ... x20
.  .  .  .  .  ...  .
.  .  .  .  .  ...  .
mM nN x1 x2 x3 x4 ... x2

In the end, I would like it to look like the following:

[, , 1]     
                    [, 1, ] [, 2, ] [, 3, ][, ..., ][, n, ]    
             [1, , ]    
             [2, , ]    
             [3 , ,]    
           [... , ,]    
             [m, , ]   
[, , 2]    
[, , 3]    
[, , ...]
[, , p]

For the sake of simplicity, we'll assume that the time-series is well-aligned (each m has exactly the same number of n).

Thanks!

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1 Answer 1

up vote 0 down vote accepted

Use reshape2:

library(reshape2)
# You probably need to melt your data first
dataset.m <- melt(dataset, id.vars = c("m", "n"))

acast(dataset.m, m ~ n ~ variable)
share|improve this answer
    
Thanks. I read through the melt and acast functions. This will work perfectly. I'd vote it up, but I don't have enough street cred yet. –  Jeremy Mar 20 '13 at 15:31

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