PCA input matrix dimensions

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Tahariet Sharon
Tahariet Sharon el 12 de Nov. de 2017
Comentada: Tahariet Sharon el 13 de Nov. de 2017
Hi,
The formula for PCA is X=UV, where X is a pxn matrix (columns: observations; rows: variables), U (the coeff matrix) is a pxp matrix, and V (scores) is a pxn matrix. However, in Matlab the input should be transposed (this is, a nxp matrix, where columns are the variables, and not observations). I wonder why the consistency of the original formula was changed. Thank you.
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Walter Roberson
Walter Roberson el 12 de Nov. de 2017
"Consider a data matrix, X, with column-wise zero empirical mean (the sample mean of each column has been shifted to zero), where each of the n rows represents a different repetition of the experiment, and each of the p columns gives a particular kind of feature (say, the results from a particular sensor)."
That is columns as variables and rows as observations, the same order that MATLAB uses.
Tahariet Sharon
Tahariet Sharon el 13 de Nov. de 2017
Thanks you, Walter. So if X is time x sensors, then COEFF is time x PCs?

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