Matlab Taking Particular Rows From Matrix

I am working on implementing cross validation at Matlab without using any other functions except for native ones.

I have a matrix like that:

``````1
2
3
..
N
``````

I have a fold size M

At first iteration I want to take that:

``````1
2
3
..
N-M
``````

at second iteration:

``````1
2
3
..
.. //Number o f M elements didn't included here
N-M+1
N-M+2
..
N
``````

iterate until I process

``````M+1
M+2
..
N
``````

When I don't include any set of elements I want to assign them into another variable or I want to know indexes so I can process them (this one is better for performance)

Further information about cross validation: http://en.wikipedia.org/wiki/Cross-validation_(statistics)

This graphic explains what I want(form Georgia Tech University slides):

I am new to matlab, how can I implement it easily?

-
You lost me on the second iteration... Are you simply trying to partition your vector into K subsets? –  jerad Nov 18 '12 at 22:15
At second iteration I have 2 subsets. One of them is size of M, other one is size of N-M –  kamaci Nov 19 '12 at 8:23
@jerad I have included a graphic that explains what I want –  kamaci Nov 19 '12 at 8:30

The following bit of code will segment your data as illustrated in your graphic.

``````K = 5; %Fold size
N = 25; % Number of data points

data = rand(1,N); % Some fake data

testIdxs = reshape(1:N,K, N/k)'; %now each row has the indices for one test set

% All indices that aren't in the test, should belong to the training set.
trainIdx = zeros(K, N-K);
for ix = 1:N/k
temp                = 1:25;
temp(testIdxs(ix,:)) = [];
trainIdx(ix,:)      = temp;
end
``````

Keep in mind that this method only works if N is a multiple of K.

-

Cross-Validation in general can be done through the function crossvalind.

You can do it by

``````Indices = crossvalind('Kfold', matrix , M)
``````
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...which is in the Bioinformatics toolbox and thus not "native" Matlab, as the OP requested. –  Rody Oldenhuis Nov 19 '12 at 5:26