# Reshaping data table to make column names into row names

I have a `data.table` in `R`

``````> dt
SAMPLE   junction count
1: R1        a       1
2: R2        a       1
3: R3        b       1
4: R3        a       1
5: R1        c       2
``````

Now I want to "reshape" the data table to form a `data frame` `m` (basically junction by sample matrix with index value to be corresponding count value). Also, observe that for `(SAMPLE,junction)` pairs that don't exist in `dt`, I am assuming the corresponding `count` value to be `zero`. Could someone help me how to achieve this?

``````> m
R1   R2   R3
a    1    1    1
b    0    0    1
c    2    0    0
``````

The `dcast` from `data.table` changes the dataset from 'long' to 'wide' format.

``````library(data.table)#v1.9.5+
dcast(dt, junction~SAMPLE, value.var='count', fill=0)
#   junction R1 R2 R3
#1:        a  1  1  1
#2:        b  0  0  1
#3:        c  2  0  0
``````

If you need a matrix output

``````library(reshape2)
acast(dt, junction~SAMPLE, value.var='count', fill=0)
#   R1 R2 R3
#a  1  1  1
#b  0  0  1
#c  2  0  0
``````

Or `xtabs` from `base R`

`````` xtabs(count~junction+SAMPLE, dt)
``````

An alternative approach using `spread` from `tidyr`:

``````library(tidyr)

spread(dt, SAMPLE, count, fill=0)
#   junction R1 R2 R3
#1:        a  1  1  1
#2:        b  0  0  1
#3:        c  2  0  0
``````

Or old school solution with `reshape` from `stats`:

``````reshape(dt, timevar='SAMPLE', idvar=c('junction'), direction='wide')
#   junction count.R1 count.R2 count.R3
#1:        a        1        1        1
#2:        b       NA       NA        1
#3:        c        2       NA       NA
``````

Data:

``````dt = structure(list(SAMPLE = c("R1", "R2", "R3", "R3", "R1"), junction = c("a",
"a", "b", "a", "c"), count = c(1, 1, 1, 1, 2)), .Names = c("SAMPLE",
"junction", "count"), row.names = c(NA, -5L), class = c("data.table",
"data.frame"), .internal.selfref = <pointer: 0x05e924a0>)
``````