Cell two mat Execution

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Jab
Jab el 26 de En. de 2016
Comentada: Walter Roberson el 26 de En. de 2016
A cell array with size 1*178 inside each cell column vector of different sizes. I have to convert this to the matrix with 178 columns and the corresponding column vectors.
Any help is apppreciated! Thanks!

Respuesta aceptada

Walter Roberson
Walter Roberson el 26 de En. de 2016
That is not possible. Numeric matrices cannot have different column lengths for different columns.
  5 comentarios
Jab
Jab el 26 de En. de 2016
Editada: Walter Roberson el 26 de En. de 2016
for k=1,3,4,5,8...etc
% m and m1 are 3D volumes
extracted3{r}=m(m1==3);
r=r+1;
end
For each k, i am getting different vectors in a cell. Is there any way I could concatenate the vectors rather than cell2mat.
Thanks
Walter Roberson
Walter Roberson el 26 de En. de 2016
Extracting data that way would make adjacent values in extracted3{r} potentially positionally unrelated to each other -- for example the bottom of one row is in memory near the top of the next row so adjacent values could represent top and bottom. Even without that, the N'th element of one extracted3{r} is probably not going to be related to the N'th element of any other extracted3{r} (if the shape is regular for each k value then the vectors would all end up the same length and we would not be having this discussion.) (Also your sample code is not extracting anything dependent on k, which indicates your sample code is not the real code.)
NaiveBayes is like the other classifiers: the N'th value for any one sample must reflect the same origin as the N'th value of any other sample. For example, the first column being only petal width measurements and the second column being only stamen length measurements. Every sample has to have the same set of measurements in the same order. As that is obviously not the case for your situation, NaiveBayes is not appropriate for your purposes.

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Image Analyst
Image Analyst el 26 de En. de 2016
Here's one way that's fairly intuitive and easy to follow.
% Create a cell array, ca, that is random sample data.
for k = 1 : 178
% Get a random length
randomLength = randi(1000, 1);
% Make a column vector of random length.
thisData = rand( randomLength, 1);
% Put this randomly sized data into the cell.
ca{k} = thisData;
end
% =========== MAIN CODE =============================
% Examine the cell array to find the longest vector.
% I'm sure there's a more compact and cryptic cellfun() way,
% but here's an easy-to-follow "for loop" way to find the tallest column vector.
for k = 1 : length(ca);
height(k) = length(ca{k});
end
maxHeight = max(height)
% Now make a 2D numerical array that we can stuff the vectors into
array2d = zeros(maxHeight, length(ca)); % Preallocate.
for k = 1 : length(ca);
thisColumnsHeight = length(ca{k});
array2d(1:thisColumnsHeight, k) = ca{k};
end
% array2d is the output. The bottom rows of any columns will be 0 if
% that column didn't have maxHeight elements in it.

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