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July 20, 2016 01:08
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#!/usr/bin/env python | |
# -*- coding: utf-8 -*- | |
from __future__ import division | |
import numpy as np | |
def pca(X, cutoff=2): | |
""" | |
Performs principal components analysis on a data-set. | |
Arguments: | |
X (np.array): A collection of data vectors, ordered in columns. | |
cutoff (int): How many principal components to find (2). | |
Returns: | |
The principal components along with the variance | |
of the data along each component. | |
""" | |
# Mean-normalize the data to make it easier | |
# to compute the co-variance matrix | |
X -= np.mean(X, axis=1).reshape(2, 1) | |
# Compute the covariance matrix | |
cov = (1.0/X.shape[1]) * X.dot(X.T) | |
# Find the principal components (eigenvectors) and | |
# variances (eigenvalues) of the data. | |
variances, components = np.linalg.eig(cov) | |
# The components are in the columns, want them separately (in rows) | |
components = components.T | |
# Now we can zip each variance with its | |
# corresponding row (principal component) | |
# This gives us a tuple of (variance, component) pairs | |
result = zip(variances, components) | |
# Sort according to variance, in descending order | |
result.sort(key=lambda e: e[0], reverse=True) | |
# Return the first 'cutoff' variances and principal components | |
return result[:cutoff] | |
def main(): | |
X = np.array([ | |
[2.5, 2.4], | |
[0.5, 0.7], | |
[2.2, 2.9], | |
[1.9, 2.2], | |
[3.1, 3.0], | |
[2.3, 2.7], | |
[2.0, 1.6], | |
[1.0, 1.1], | |
[1.5, 1.6], | |
[1.1, 0.9]] | |
).T | |
print(pca(X)) | |
if __name__ == '__main__': | |
main() |
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