Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I have a data set like this:

structure(list(var1 = c("APE", "APE", "APE", "APE", "APE", "APE", "GIT",
"APE", "APE", "APE", "APE", "APE", "APE", "APE", "GIT"), var2 = c("AVVAL",
"AULASU", "APALA", "AEA", "ATUPVA", "ASATAP", "ADLO"), var3 = c(NA,
NA, 1L, 101L, 17122009L, 1L, NA, 684L, NA, NA, 1L, 10L, 17122L,
1L, NA)), .Names = c("var1", "var2", "var3"), row.names = c(NA,
15L), class = "data.frame")

How can I reshape this data into wide format? I tried this

reshape(h, idvar="var2", v.names="var3", timevar="var1", direction="wide")

but it is not giving me a correct results. The correct result is:

1  APE  NaN 101   NA      1      1 17122009     NA    NA
2  APE  NaN  10   684     1      1    17122     NA    NA
3  GIT   NA NaN   NaN   NaN    NaN      NaN    NaN   NaN
4  GIT   NA NaN   NaN   NaN    NaN      NaN    NaN   NaN
share|improve this question
What do you mean with "not giving me correct results"? Would you like to obtain the result of Andrie? Then you should change idvar='var1' and timevar='var2' in your code. – Oscar Perpiñán Oct 17 '11 at 10:17
I want to reshape these records, so that all rows are preserved, not grouped by var1. – jrara Oct 17 '11 at 11:02
I suspect there is some information inherent in the construction of the data.frame that is not explicit in the data. Do every set of 8 rows form a single entity? – Andrie Oct 17 '11 at 11:14
Sorry, but I do not understand what you need. In the comment to Andrie you say that APE should have 2 rows. Why? – Oscar Perpiñán Oct 17 '11 at 11:16
I edited the data a litte bit to make my point clear. The idea is that var2 contains variable names for this resulting data.frame. GIT is actually a row terminator and could be omitted in the final data.frame. But anyways, you can't calculate mean from this data set, because you lose data in that way. The data is orignally in the long format and should be reshaped/transposed into wide format. – jrara Oct 17 '11 at 11:27
up vote 3 down vote accepted


The only way I can get to your expected results is to add a new column to the data.frame. It seems to me that there is some information implicit about your data that isn't contained in the data. In other words, there must be some kind of grouping variable that identifies certain records as belonging together.

Since I can't double-guess what this information is, in my answer I am going to assume that each occurrence of GIT marks the end of a record:

x <- grep("GIT", h$var1)
h$rec <- rep(seq_along(x), times=c(x[1], diff(x)))

mh <- melt(h, measure.vars="var3")
cast(mh, rec+var1~var2, id.var="rec", measure.var="value", fun.aggregate=mean)

1   1  APE  NaN  10   NaN     1      1 17122009     NA    NA
2   1  GIT   NA NaN   NaN   NaN    NaN      NaN    NaN   NaN
3   2  APE  NaN  10   684     1      1 17122009     NA    NA
4   2  GIT   NA NaN   NaN   NaN    NaN      NaN    NaN   Na

Original answer

I find the package reshape2 much easier to comprehend than the built-in reshape function. This package provides two functions:

  • melt to make a wide data.frame tall
  • cast to make a tall data.frame wide

In your case you need cast:

cast(h, var1~var2, value="var3", fun.aggregate=mean)

1  APE  NaN  10   684     1      1 17122009     NA    NA
2  GIT   NA NaN   NaN   NaN    NaN      NaN    NaN   NaN
share|improve this answer
Thanks, but I would like to have also duplicate records, so that APE should have 2 rows. Now this is grouping data based on var1, not reshaping it. – jrara Oct 17 '11 at 11:01
I edited the question. – jrara Oct 17 '11 at 11:08

I add a new variable due to the meaning of GIT:

 dat$id <- cumsum(dat$var1=='GIT')

First I do the aggregation:

datMean <- aggregate(var3 ~ var2 * id, data=dat, FUN=mean)

> datMean
    var2 id     var3
1    AEA  0      101
2  APALA  0        1
3 ASATAP  0        1
4 ATUPVA  0 17122009
5    AEA  1       10
6  AKOKU  1      684
7  APALA  1        1
8 ASATAP  1        1
9 ATUPVA  1    17122

and then the conversion from long to wide:

datWide <- reshape(datMean, direction='wide', idvar='id', timevar='var2')

> datWide
  id var3.AEA var3.APALA var3.ASATAP var3.ATUPVA var3.AKOKU
1  0      101          1           1    17122009         NA
5  1       10          1           1       17122        684
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.