## Question

What is the right way to structure multivariate data with categorical labels accumulated over repeated trials for exploratory analysis in R? I don't want to slip back to MATLAB.

## Explanation

I like R's analysis functions and syntax (and stunning plots) much better than MATLAB's, and have been working hard to refactor my stuff over. However, I keep getting hung up on the way data is organized in my work.

### MATLAB

It's typical for me to work with multivariate time series repeated over many trials, which are stored in a big ~~matrix~~ ~~rank-3 tensor~~ multidimensional array of SERIESxSAMPLESxTRIALS. This lends itself to some nice linear algebra stuff occasionally, but is clumsy when it comes to another variable, namely CLASS. Typically class labels are stored in another vector of dimension 1x`TRIALS`

.

When it comes to analysis I basically plot as little as possible, because it takes so much work to get together a really good plot that teaches you a lot about the data in MATLAB. (I'm not the only one who feels this way).

### R

In R I've been sticking as close as I can to the MATLAB structure, but things get annoyingly complex when trying to keep the class labeling separate; I'd have to keep passing the labels into functions in even though I'm only using their attributes. So what I've done is separate the array into a list of arrays by CLASS. This adds complexity to all of my `apply()`

functions, but seems to be worth it in terms of keeping things consistent (and bugs out).

On the other hand, R just doesn't seem to be friendly with tensors/multidimensional arrays. Just to work with them, you need to grab the `abind`

library. Documentation on multivariate analysis, like this example seems to operate under the assumption that you have a huge 2-D table of data points like ~~some long medieval scroll~~ a data frame, and doesn't mention how to get 'there' from where I am.

Once I get to plotting and classifying the processed data, it's not such a big problem, since by then I've worked my way down to data frame-friendly structures with shapes like TRIALSxFEATURES (`melt`

has helped a lot with this). On the other hand, if I want to quickly generate a scatterplot matrix or latticist histogram set for the exploratory phase (i.e. statistical moments, separation, in/between-class variance, histograms, etc.), I have to stop and figure out how I'm going to `apply()`

these huge multidimensional arrays into something those libraries understand.

If I keep pounding around in the jungle coming up with ad-hoc solutions for this, I'm either never going to get better or I'll end up with my own weird wizardly ways of doing it that don't make sense to anybody.

So what's the *right* way to structure multivariate data with categorical labels accumulated over repeated trials for exploratory analysis in R? Please, I don't want to slip back to MATLAB.

Bonus: I tend to repeat these analyses over identical data structures for multiple subjects. Is there a better general way than wrapping the code chunks into `for`

loops?

`melt`

your data. There are exceptions, but in general you should store your data in data.frames (or if it's big in data.tables) with value column(s) and factor columns (classifiers). But you also might want to have a look at packages that offer time series objects in R more sophisticated than the base`ts`

object (e.g., the xts package). – Roland Jan 12 '14 at 12:04`by`

syntax of the package. – Roland Jan 15 '14 at 13:245more comments