I am using structures in Matlab to organize my results in an intuitive way. My analysis is quite complex and hierarchical, so this works well---logically. For example:
`resultObj.multivariate.individual.distributed.raw.alpha10(1).classification(1)`

. Each level of the structure has several fields. Each `alpha`

field is a structured array, indexed for each dataset, and `classification`

is also a structured array, one for each cross validation run on the data.

To simplify, consider the the classification field:

```
>> classification
ans =
1x8 struct array with fields:
bestLambda
bestBetas
scores
statObj
fitObj
```

In which `statObj`

has fields (for example):

```
dprime: 6.5811
hit: 20
miss: 0
falseAlarms: 0
correctRejections: 30
```

Of course, the fields have different values for each subject and cross validation run. Given this structure, is there a good way to find the mean of dprime over cross validation runs (i.e. the elements of `classification`

) without needing to construct a for loop to extract, store, and finally compute on?

I was hoping that `reshape(struct2array(classification.statObj),5,8)`

would work, so I could construct a matrix with stats as rows and cross validations runs as columns, but this won't work. I put these items in their own structure specifically because the fields of `classification`

hold elements of various types (matrices, structures, integers).

I am not opposed to restructuring my output entirely, but I'd like it to be done in such a way that the organization is fairly self-commenting, and I could say return to this structure a year from now and remember what and where everything is.

`classification`

. – Chris Cox Jul 29 '12 at 21:05`statObj`

and 8 is the number of elements of`classification`

. My function loops over the 8 elements of`classification`

and pulls each`.statObj.dprime`

into a new vector, which I just take the mean of. Simplicity itself, but your solution is better. – Chris Cox Jul 29 '12 at 21:40