How to apply pca() [Matlab] on high dimensional data
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Atinesh Singh
on 14 Aug 2016
Commented: Akash Reddy
on 10 Nov 2020
I want to apply `pca()` function in `matlab` on data with `500 dimensions`. But pca() has a limit of only 99 dimensions. Do I have to write code for pca.
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Accepted Answer
the cyclist
on 14 Aug 2016
Why do you believe pca has such a limit?
p = pca(rand(1000,700));
runs just fine.
4 Comments
the cyclist
on 17 Aug 2016
I think I finally appreciate what you are missing.
You have more dimensions (p=700) than you have observations (n=100). When p>n, you can fully explain all the variation in the observations with n-1 principal components, which in your case is 99.
More Answers (2)
John D'Errico
on 14 Aug 2016
Edited: John D'Errico
on 14 Aug 2016
I think the problem is you don't understand the PCA code, at least how to use the tool as provided. READ THE HELP! A problem with size 100x700 for the PCA function is a problem with 700 dimensions, not 100. PCA treats each ROW of the array as one sample, one observation.
Your question (coupled with your later comment) strongly implies that your array is simply transposed from what you need to pass into the PCA tool. Read the help for PCA.
2 Comments
Walter Roberson
on 16 Aug 2016
It is not clear to me why you think that pca has a limit of 99 dimensions?
I had no problem at all a moment ago running pca on a 1000 x 1000 matrix.
Taimour Hamayoun
on 25 Oct 2017
hello! i am new in matlab and i am try to apply PCA on my dataset of 19 dimensions and try to reduce it in 4 dimension but i didnt find the proper way plz guide and provide me a proper source with explanation thanx
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the cyclist
on 27 Oct 2017
May I suggest that you carefully read the documentation and this answer of mine, to get a better understanding of the syntax and output of pca?
Also, you posted this as an answer to a question. It would have garnered more attention as a new question, but I happened to see it.
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