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so here is what i am trying to do. i have a data set that has all outcomes listed in one column, but the step they were observed at and the method used to observe them are in separate columns. there are multiple sites which i am treating as a unique identifier. not every site has the same number of steps or methods and not every method is done at every step. for example, site a1 may have steps s1-s5 and method m1-m25 at each step, while site a9 may have steps s1-s15, but only methods m3-m9. basically, there can be missing data for a given site/step/method. not every site has every step, and not every step has every method. the raw data set looks a little like this:

site step   method  outcome
a1   S 1    m1      5
a1   S 1    m2      1
a1   S 2    m6      4
a2   S 1    m6      1a
a2   S 1    m4      3
a2   S 3    m7      2
a2   S 4    m2      7
a3   S 1    m1      2a
a3   S 1    m2      c11
a4   S 1    m4      2
a4   S 2    m2      5
a5   S 3    m3      6
a6   S 2    m1      7   
a6   S 3    m4      8   

outcome has some numeric and character values, depending on method

step is the only real "time" variable, but i feel that i need to have r treat method as one as well. the way the data is now there are lots of rows and just these few columns, and the way the data is set up now i am having trouble running any analysis on it.

i used reshape as follows( i have tried other reshape statements but this is one for example), wont let me use 2 time variables unfortuneately


  site method.S 1 outcome.S 1 method.S 2 outcome.S 2 method.S 3 outcome.S 3
1    a1         m1           5         m6           4       <NA>          NA
4    a2         m6           1       <NA>          NA         m7           2
8    a3         m1           2       <NA>          NA       <NA>          NA
10   a4         m4           2         m2           5       <NA>          NA
12   a5       <NA>          NA       <NA>          NA         m3           6
13   a6       <NA>          NA         m1           7         m4           8
   method.S 4 outcome.S 4
1        <NA>          NA
4          m2           7
8        <NA>          NA
10       <NA>          NA
12       <NA>          NA
13       <NA>          NA

this is the output from r

it is correct that i only want to end up with 1 row per site, and many columns (even if a site had nothing done at a particular step). i am trying to get 1 row per site and then the outcome column will go away with all its values beneath an appropriate column like so

site  S1.m1.outcome S1.m2.outcome S1.m3.outcome ................ S9.m10.outcome
a1        1               c4.5           NA                         3.6

so basically one column per step and method combination, and i know that is alot of columns, but it will make it much easier to compare between steps which is one of my goals my main point of doing this is to be able to, for a given method, test changes in outcomes between steps using t-tests and such for differences in means. i imagine there is an easier way to go about doing the tests but i am still new to r and haven't found one yet. thanks for any advice cheers

share|improve this question
This would be clearer if you: a) used capitalization in your description, b) used an example that matched your discussion, and c) posted the desired output from the data offered as an example. – 42- Feb 28 '13 at 5:06
Thanks for the feedback. My original post was poorly written and unclear, as became clear to me as I read over it after some rest. I have fixed it up. Thanks again. – user2117897 Mar 1 '13 at 3:25
up vote 2 down vote accepted

Here are two options, if I understand your desired output correctly. In the examples below, for the last steps, I've sorted the columns so they would match from using each output, and I've only shown the first few and the last few columns from the resulting data.frames so you can see that they are giving you the same results. In other words, you should be able to stop at "T2" and "T3" for your actual needs--the rest is just for demonstration.

Option 1: reshape twice

T1 <- reshape(rawdata, idvar = c("site", "method"),
              timevar = "step", direction = "wide")
T2 <- reshape(T1, direction = "wide", idvar = "site", timevar = "method")
# [1]  6 25
#  [1] "site"          "outcome.S1.m1" "outcome.S2.m1" "outcome.S3.m1" "outcome.S4.m1"
#  [6] "outcome.S1.m2" "outcome.S2.m2" "outcome.S3.m2" "outcome.S4.m2" "outcome.S1.m6"
# [11] "outcome.S2.m6" "outcome.S3.m6" "outcome.S4.m6" "outcome.S1.m4" "outcome.S2.m4"
# [16] "outcome.S3.m4" "outcome.S4.m4" "outcome.S1.m7" "outcome.S2.m7" "outcome.S3.m7"
# [21] "outcome.S4.m7" "outcome.S1.m3" "outcome.S2.m3" "outcome.S3.m3" "outcome.S4.m3"
T2a <- T2[, order(names(T2))]
T2a[, c(1:3, 23:25)]
#    outcome.S1.m1 outcome.S1.m2 outcome.S1.m3 outcome.S4.m6 outcome.S4.m7 site
# 1              5             1          <NA>          <NA>          <NA>   a1
# 4           <NA>          <NA>          <NA>          <NA>          <NA>   a2
# 8             2a           c11          <NA>          <NA>          <NA>   a3
# 10          <NA>          <NA>          <NA>          <NA>          <NA>   a4
# 12          <NA>          <NA>          <NA>          <NA>          <NA>   a5
# 13          <NA>          <NA>          <NA>          <NA>          <NA>   a6

Option 2: Use dcast from "reshape2"

T3 <- dcast(rawdata, site ~ step + method, value.var = "outcome", drop = FALSE)
# [1]  6 25
#  [1] "site"  "S1_m1" "S1_m2" "S1_m3" "S1_m4" "S1_m6" "S1_m7" "S2_m1" "S2_m2" "S2_m3"
# [11] "S2_m4" "S2_m6" "S2_m7" "S3_m1" "S3_m2" "S3_m3" "S3_m4" "S3_m6" "S3_m7" "S4_m1"
# [21] "S4_m2" "S4_m3" "S4_m4" "S4_m6" "S4_m7"
T3a <- T3[, order(names(T3))]
T3a[, c(1:3, 23:25)]
#   S1_m1 S1_m2 S1_m3 S4_m6 S4_m7 site
# 1     5     1  <NA>  <NA>  <NA>   a1
# 2  <NA>  <NA>  <NA>  <NA>  <NA>   a2
# 3    2a   c11  <NA>  <NA>  <NA>   a3
# 4  <NA>  <NA>  <NA>  <NA>  <NA>   a4
# 5  <NA>  <NA>  <NA>  <NA>  <NA>   a5
# 6  <NA>  <NA>  <NA>  <NA>  <NA>   a6

Both use the following as the input for "rawdata"

rawdata <- structure(list(site = c("a1", "a1", "a1", "a2", "a2", "a2", "a2", 
"a3", "a3", "a4", "a4", "a5", "a6", "a6"), step = c("S1", "S1", 
"S2", "S1", "S1", "S3", "S4", "S1", "S1", "S1", "S2", "S3", "S2", 
"S3"), method = c("m1", "m2", "m6", "m6", "m4", "m7", "m2", "m1", 
"m2", "m4", "m2", "m3", "m1", "m4"), outcome = c("5", "1", "4", 
"1a", "3", "2", "7", "2a", "c11", "2", "5", "6", "7", "8")), .Names = c("site", 
"step", "method", "outcome"), row.names = c(NA, -14L), class = "data.frame")
share|improve this answer
Thanks for the help. Your idea worked great. Unfortunately, my goals have shifted slightly, or rather increased in scope, so I had to revise my post, but you answered my original one perfectly. Thanks again for that. – user2117897 Mar 1 '13 at 3:23
I understand. My bad. Thanks again for the help. – user2117897 Mar 2 '13 at 18:18

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