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This probably has incredibly simple answer, but I've been working on this for hours and I still can't figure it out. All I want to do is take a data frame with two columns (BEFORE table) and alter it so that each unique value in the first column becomes the name of each new column and the second column values fill in below their respective column name (AFTER table).

BEFORE

ID  age
N1   7
N1   8
N2   5
N3   9
N3   4
N3   9

AFTER

N1   N2   N3
7    5    9
8    NA   4
NA   NA   9

I've tried the melt() and cast() functions in the package reshape2, but they don't seem to do what I want. Any suggestions? Thank you in advance!

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marked as duplicate by Ferdinand.kraft, thelatemail, Ananda Mahto, sgibb, Thomas Sep 18 '13 at 19:52

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

3 Answers 3

You're missing unique IDs, which you can easily create with ave. Once you have those, you can use reshape() from base R or dcast() from "reshape2" to get what you are looking for:

mydf$ID2 <- ave(as.character(mydf$ID), mydf$ID, FUN = seq_along)
reshape(mydf, direction = "wide", idvar="ID2", timevar="ID")
#   ID2 age.N1 age.N2 age.N3
# 1   1      7      5      9
# 2   2      8     NA      4
# 6   3     NA     NA      9

library(reshape2)
dcast(mydf, ID2 ~ ID, value.var="age")
#   ID2 N1 N2 N3
# 1   1  7  5  9
# 2   2  8 NA  4
# 3   3 NA NA  9
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Bingo. Beat me to it while I was a tracking down the duplicate. Haven't you got enough reshape tag points already? ;-) –  thelatemail Sep 12 '13 at 1:32
    
@thelatemail, nope. I need to hit silver or gold first :) –  Ananda Mahto Sep 12 '13 at 1:33
    
That works perfectly! Thank you! –  user2770197 Sep 12 '13 at 17:40

acast will get you partially there:

Original data:

df <- structure(list(ID = structure(c(1L, 1L, 2L, 3L, 3L, 3L), .Label = c("N1", 
    "N2", "N3"), class = "factor"), age = c(7L, 8L, 5L, 9L, 4L, 5L
    )), .Names = c("ID", "age"), class = "data.frame", row.names = c(NA, 
    -6L))
> df
  ID age
1 N1   7
2 N1   8
3 N2   5
4 N3   9
5 N3   4
6 N3   5

df2 <- acast(df, age~ID)

> df2
  N1 N2 N3
4 NA NA  4
5 NA  5  5
7  7 NA NA
8  8 NA NA
9 NA NA  9
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Using cbind.fill from here, you can do:

do.call(cbind.fill, split(df$age, df$ID))
#     [,1] [,2] [,3]
#[1,]    7    5    9
#[2,]    8   NA    4
#[3,]   NA   NA    5
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