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I am trying to perform PCA on a matrix (C) where each column represents a different time points and each row represents a feature and I am trying to find the top principal components and graph them against each other. I am using the mdp module and I am confused if this module returns the matrix where each row represents a principal component with most significant components in descending order.

import mdp
C=mdp.pca(C)
print C

import matplotlib.pyplot as plt

plt.plot(C[2,:C.shape[1]], C[1,:C.shape[1]], 'r*')
plt.show()

Thank you!

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1 Answer 1

up vote 1 down vote accepted

From the mdp docs on mdp.pca:

pca(x, **kwargs) Filters multidimensioanl input data through its principal components.

Observations of the same variable are stored on rows, different variables are stored on columns.

This is a shortcut function for the corresponding node nodes.PCANode. If any keyword arguments are specified, they are passed to its constructor.

This is equivalent to mdp.nodes.PCANode(**kwargs)(x)

To break this down, it means that you send the keyword arguments to PCANode to set up the constructor, then use it's __call__ method which, according to the PCANode docs, actually calls its execute method, which does the following:

execute(self, x, n=None)

Project the input on the first 'n' principal components. If 'n' is not set, use all available components.

So you get a matrix of projections, described as above (observations of same variable on rows, different variables on columns)

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