Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Specifically,

I used the following set up:

newdata <- tapply(mydata(#), list(mydata(X), mydata(Y)), sum)

I currently have a table that currently is listed as follows:

X= State, Y= County within State, #= a numerical total of something

  • __ Y1 Y2 Y3 Yn
  • X1 ## ## ## ##
  • X2 ## ## ## ##
  • X3 ## ## ## ##
  • Xn ## ## ## ##

What I need is a table listed as follows:

  • X1 Y1 ##
  • X1 Y2 ##
  • X1 Y3 ##
  • X1 Yn ##
  • X2 Y1 ##
  • X2 Y2 ##
  • X2 Y3 ##
  • X2 Yn ##
  • Xn Y1 ##
  • Xn Y2 ##
  • Xn Y3 ##
  • Xn Yn ##
share|improve this question

2 Answers 2

library(reshape2)
new_data <- melt(old_data, id.vars=1)

Look into ?melt for more details on syntax.

example:

> df <- data.frame(x=1:5, y1=rnorm(5), y2=rnorm(5))
> df
  x         y1         y2
1 1 -1.3417817 -1.1777317
2 2 -0.4014688  1.4653270
3 3  0.4050132  1.5547598
4 4  0.1622901 -1.2976084
5 5 -0.7207541 -0.1203277
> melt(df, id.vars=1)
   x variable      value
1  1       y1 -1.3417817
2  2       y1 -0.4014688
3  3       y1  0.4050132
4  4       y1  0.1622901
5  5       y1 -0.7207541
6  1       y2 -1.1777317
7  2       y2  1.4653270
8  3       y2  1.5547598
9  4       y2 -1.2976084
10 5       y2 -0.1203277
share|improve this answer
    
+1 you win, dunno why it takes so long to update... –  Justin Jun 6 '12 at 23:12

Some example data

mydata <- data.frame(num=rnorm(40),
                     gp1=rep(LETTERS[1:2],2),
                     gp2=rep(letters[1:2],each=2))

And applying tapply to it:

tmp <- tapply(mydata$num, list(mydata$gp1, mydata$gp2), sum)

The result of tapply is a matrix, but you can treat it like a table and use as.data.frame.table to convert it. This does not rely on any additional packages.

as.data.frame.table(tmp)

The two different data structures look like:

> tmp
         a         b
A 8.381483  6.373657
B 2.379303 -1.189488
> as.data.frame.table(tmp)
  Var1 Var2      Freq
1    A    a  8.381483
2    B    a  2.379303
3    A    b  6.373657
4    B    b -1.189488
share|improve this answer
    
Nice, as.data.frame.table is considerably faster than melt but still takes a lot of memory. –  Hansi Jun 7 '12 at 11:32

Your Answer

 
discard

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.