The size of my PCA isn't correct

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Héctor
Héctor am 18 Jan. 2016
Kommentiert: Frank Nylander am 4 Feb. 2024
I am trying to perform principal component analysis using pca and not princomp. My dataset consists of 303 samples each containing 3904 dimensions, which explains why I want to perform PCA. My data is in a matrix called Data which has a size of 303 (rows) by 3904 (columns). When I execute the PCA command with
[coeff,score] = pca(Data);
I am returned a matrix coeff of size 3904*302 and the matrix score is of size 303*302 which doesn't seem to be correct right? Online documentation suggests that coeff should be 3904*3904 (i.e. square with the dimension size of the variables, here the columns). What is going wrong here?
ps: I also tried transposing the data and this results in a coeff matrix of 303*303

Antworten (1)

Roger Wohlwend
Roger Wohlwend am 19 Jan. 2016
It seems that Matlab expects a Matrix with more observations than variables (i.e. more rows than columns). As you violate that rule (only 303 observations for 3904 variables), Matlab transposes the Matrix in order to obtain a Matrix with more observations than variables. If you transpose the Matrix, Matlab interprets your variables as observations and the other way around. So the result is not valid. You cannot solve this Problem. If you don't have more than 303 observations, your Matrix must not have mor than 303 columns.
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Frank Nylander
Frank Nylander am 4 Feb. 2024
Has this been fixed? I'm getting the same problem.

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