8

I conducted a study that, in retrospect (one lives, one learns :-)) appears to generate multilevel data. Now I'm trying to restructure the dataset from wide to long so that I can analyse it using e.g. lme4.

In doing so, I encounter an, um, challenge, that I've ran into a few times before, but for which I've never found a good solution. I've searched again this time, but I probably use the wrong keywords - or this problem is much rarer than I thought.

Basically, in this dataset, the variablenames indicate for which measure data is collected. I asked participants to grade (rate) interventions (could be anything really). Each intervention is in one of 6 behavioral domains. In addition, participants rated each intervention either when it was presented on its own, or simultaneously with one other intervention, or with two other interventions. There were three types of interventions, and they were all rated before (t0) and after (t1) I presented them with some information.

So, in effect, I have a dataframe that can be regenerated like this:

### Elements of the variable names
measurementMomentsVector <- c("t0", "t1");
interventionTypesVector <- c("fear", "know", "scd");
nrOfInterventionsSimultaneouslyVector <- c(1, 2, 3);
behaviorDomainsVector <- c("diet", "pox", "alc", "smoking", "traff", "adh");

### Generate a vector with all variable names
variableNames <-
  apply(expand.grid(measurementMomentsVector,
                    interventionTypesVector,
                    nrOfInterventionsSimultaneouslyVector,
                    behaviorDomainsVector),
        1, paste0, collapse="_");

### Generate 5 'participants' worth of data
wideData <- data.frame(matrix(rnorm(5*length(variableNames)), nrow=5));

### Assign names
names(wideData) <- variableNames;

### Add unique id variable for every participants
wideData$id <- 1:5;

So using head(wideData)[, 1:5] you can see roughly what the dataframe looks like:

  t0_fear_1_diet t1_fear_1_diet t0_know_1_diet t1_know_1_diet t0_scd_1_diet
1     -0.9338191      0.9747453      1.0069036      0.3500103  -0.844699708
2      0.8921867      1.3687834     -1.2005791      0.2747955   1.316768219
3      1.6200200      0.5245470     -1.2910586      1.3211912  -0.174795144
4      0.1543738      0.7535642      0.4726131     -0.3464789  -0.009190702
5     -1.3676692     -0.4491574     -2.0902003     -0.3484678  -2.537501824

Now, I want to convert this data to a long dataframe, with 6 variables, for example 'id', 'measurementMoment', 'interventionType', 'nrOfInterventionsSimultaneously', 'behaviorDomain', and 'evaluation', where the first variable denotes the participants to which a record belongs, the last variable is the score (rating, grade, evaluation) the participants gave a specific intervention, and the four variables in between indicate which intervention is being rated exactly.

I can probably write some 'custom' code just for this problem, but I expect R 'has something for this'. I've been playing around with reshape2, e.g.:

longData <- reshape(wideData, varying=1:(ncol(wideData)-1),
                    idvar="id",
                    sep="_", direction="long")

But it doesn't manage to guess the time-varying variables:

Error in guess(varying) : 
  failed to guess time-varying variables from their names

I have been struggling with this a few times now, and I don't manage to find any answers online. And now I really need to move on, so I thought I'd try this as a last effort before resorting to writing something custom-made :-)

I would greatly appreciate any pointers anybody can give!!!

  • What's the value of firstSecondOccurrenceVector? – krlmlr Jul 29 '15 at 17:54
  • Sorry, that was a left-over from before I clarified it a bit! It's no longer important :-) Sorry for the confusion! – Matherion Jul 29 '15 at 17:58
  • Don't apologize. Instead edit the code so it runs. – 42- Jul 29 '15 at 18:09
  • (I had done that at that point :-)) – Matherion Jul 29 '15 at 21:19
10

I think your problem can be solved with a two step approach:

  1. melt your data into a long data.frame (or as I did, in a long data.table)
  2. split the variable column with all the labels into separate columns for each required grouping variable.

As the information for this is in the labels, this can easily be achieved with the tstrsplit function from the data.table package.

This is what you might be looking for:

library(data.table)
longData <- melt(setDT(wideData), id.vars="id")
longData[, c("moment", "intervention", "number", "behavior") := 
                tstrsplit(variable, "_", type.convert = TRUE)
       ][, variable:=NULL]

the result:

> head(longData,15)
    id       value moment intervention number behavior
 1:  1 -0.07747254     t0         fear      1     diet
 2:  2 -0.76207379     t0         fear      1     diet
 3:  3  1.15501244     t0         fear      1     diet
 4:  4  1.24792369     t0         fear      1     diet
 5:  5 -0.28226121     t0         fear      1     diet
 6:  1 -1.04875354     t1         fear      1     diet
 7:  2 -0.91436882     t1         fear      1     diet
 8:  3  0.72863487     t1         fear      1     diet
 9:  4  0.10934261     t1         fear      1     diet
10:  5 -0.06093002     t1         fear      1     diet
11:  1 -0.70725760     t0         know      1     diet
12:  2  1.06309003     t0         know      1     diet
13:  3  0.89501164     t0         know      1     diet
14:  4  1.48148316     t0         know      1     diet
15:  5  0.22086835     t0         know      1     diet

As an alternative to data.table, you can also split the variable column with the cSplit function of the splitstackshape package (you will have to rename the resulting variable columns afterwards though):

library(splitstackshape)
longData <- cSplit(longData, sep="_", "variable", "wide", type.convert=TRUE)
names(longData) <- c("id","value","moment","intervention","number","behavior")

or with tidyr:

library(tidyr)
separate(longData, variable, c("moment", "intervention", "number", "behavior"), sep="_", remove=TRUE)
  • This is great, thank you! Exactly what I need. Also thank you for pointing me towards data.table, it looks great! Thank you very much!!! – Matherion Jul 29 '15 at 21:34

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