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I need to convert a "wide" dataframe of annually repeated measures on individuals into "long" format so that I can model it like lm(y_year2 ~ x_year1) as well as lm(z_year2 ~ y_year2)

I can get it into the format I want "by hand" but cannot get figure out how to melt/dcast it into the shape I want

Below I've illustrated what I'm doing with some simulated data

The dataframe is like this in wide format, one individual per line

ID  SITE    L_03  M_03  R_03  L_04  M_04  R_04  L_05  M_05  R_05
1   forest    X     a   YES     Y     b   YES     Z     c   NO
2   forest    ... 

I'd like it in LONG format:

ID  SITE    L_year1  L_year2  M_year1  M_year2  R_year1   R_year2   year1  year2
1   forest      Z       Y       a         b       YES       YES       03    04
1   forest      Y       Z       b         c       YES       NO        04    05
2   forest      ...  
2   forest      ...

Some Simulated data: L and M are numeric (length & mass), R is a Yes/No factor (reproductive), 3 years of repeated measurements (2003-2005)

    ID <- 1:10; SITE <- c(rep("forest",3), rep("swamp",3), rep("field",4))
    L_03 <- round(rnorm(10, 100, 1),3) ; M_03 <- round((10 + L_03*0.25 + rnorm(10, 0, 1)), 3)
    R_03 <- sample(c("Yes", "No"), 10, replace = TRUE) ; L_04 <- round((2 + L_03*1.25 + rnorm(10, 1,10)), 3) 
    M_04 <- round((10 + L_04*0.25 + rnorm(10, 0,10)), 3) ;R_04 <- sample(c("Yes", "No"), 10, replace = TRUE)
    L_05 <- round((2 + L_04*1.25 + rnorm(10, 1,10)),3) ; M_05 <- round((10 + L_05*0.25 + abs(rnorm(10, 0,10))),3)
    R_05 <- sample(c("Yes", "No"), 10, replace = TRUE); rm_data <- data.frame(ID, SITE, L_03, M_03, R_03, L_04, M_04,R_04, L_05, M_05, R_05)

Approach 1: My ad hoc reshaping "by hand" with rbind 1st, make subset with 2003 & 2004 data, then another w/ 2004 & 2005

rm_data1 <- cbind(rm_data[ ,c(1,2,3:5, 6:8)], rep(2003,10), rep(2004,10))
rm_data2 <- cbind(rm_data[ ,c(1,2,6:8, 9:11)],rep(2004,10), rep(2005,10))
names(rm_data1)[3:10]<- c("L1", "M1", "R1", "L2", "M2", "R2", "yr1", "yr2")
names(rm_data2)[3:10]<- c("L1", "M1", "R1", "L2", "M2", "R2", "yr1", "yr2")
data3 <- rbind(rm_data1, rm_data2)

Approach 2?: I'd like to do this with reshape/melt/dcast. I can't figure out if I can use dcast directly on the wide dataframe or, once I melt it, how to dcast it into the format I want.

library(reshape2)
rm_measure_vars <- c("L_03", "M_03", "R_03", "L_04", "M_04","R_04", "L_05", "M_05", "R_05")
rm_data_melt <-  melt(data = rm_data, id.vars = c("ID", "SITE"), measure.vars = rm_measure_vars, value.name = "data")

I add a designator of the year the measurement was taken to the melted data

obs_year <- gsub("(.*)([0-9]{2})", "\\2", rm_data_melt$variable)
rm_data_melt <- cbind(rm_data_melt, obs_year)

The dcast seems like it should be something like this, but this is not yet what I need

dcast(data = rm_data_melt, formula = ID + SITE + obs_year ~ variable)
   ID   SITE obs_year    L_03   M_03 R_03    L_04   M_04 R_04    L_05   M_05 R_05
1   1 forest       03   99.96 35.364   No    <NA>   <NA> <NA>    <NA>   <NA> <NA>
2   1 forest       04    <NA>   <NA> <NA> 129.595 47.256  Yes    <NA>   <NA> <NA>
3   1 forest       05    <NA>   <NA> <NA>    <NA>   <NA> <NA> 177.607 58.204  Yes

Any suggestions would be greatly appreciated

share|improve this question
    
You appear to be asking to duplicate portions of the data. Year values for the second year are being expected to be in two different columns, the end of year one col and the beginning of year 2 col. – 42- Jan 4 '13 at 19:01
    
Exactly. These data are being used for parameterizing an individual-based demographic model. Individuals will be treated as a random effect during parameter estimation. – N Brouwer Jan 4 '13 at 19:07
    
Well, I would add 3 columns and then do the reshaping. – 42- Jan 4 '13 at 19:27

I gave it some try. The reshape is the easy part. The rest needs some semi-manual handling, I believe. The following should give you what you want.

output <- reshape(rm_data, idvar=c("ID","SITE"), varying=3:11, 
                v.names=c("L_","M_","R_"), direction="long")
output$time <- output$time + 2    # to get the year
names(output)[3:6] <- c("year1", "L_year1", "M_year1", "R_year1")
output$year2 <- output$year1+1
rownames(output) <- c()

sapply(output[,4:6], function(x) {
  i <- ncol(output)+1
  output[,i] <<- x[c(2:length(x), NA)]
  names(output)[i] <<- sub("1","2",names(output)[i-4])
})

output <- output[,c(1,2,4,8,5,9,6,10,3,7)]    # rearrange columns as necessary

Hope this helps!

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