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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.

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Writing a function to handle this was easy enough, but it did require looping. I don't know if there is any way to coerce the data so that structfun() or struct2array() can work magic, unless I at least loop over the elements of classification. –  Chris Cox Jul 29 '12 at 21:05
    
can you post your loop-based function, as well as a minimal structure-array example we can play with? For example its not clear what the sizes 5 and 8 represent –  Amro Jul 29 '12 at 21:09
    
Sorry, 5 is the number of elements in 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

1 Answer 1

up vote 3 down vote accepted

I came up with the following, although I'm not sure if it is what you are looking for:

%# create a structure hierarchy similar to yours
%# (I ignore everything before alpha10, and only create a part of it)
alpha10 = struct();
for a=1:5
    alpha10(a).classification = struct();
    for c=1:8
        alpha10(a).classification(c).statObj = struct('dprime',rand());
    end
end

%# matrix of 'dprime' for each alpha across each cross-validation run
st = [alpha10.classification];
st = [st.statObj];
dp = reshape([st.dprime], 8, 5)'    %# result is 5-by-8 matrix

Next you can compute mean across the second dimension of this matrix dp

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This worked great! Knowing when and how to use [] or {} to coerce things to behave in particular ways is an art I'm still learning. Thank you! –  Chris Cox Jul 29 '12 at 21:36
1  
@ChrisCox: perhaps this doc page can provide some help. This post has some info as well. –  Amro Jul 29 '12 at 21:47
    
+1 for refs. Appreciated. –  Chris Cox Jul 30 '12 at 13:52

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