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The polar decomposition of a square complex matrix A is a matrix decomposition of the form

A = UP,

where U is a unitary matrix and P is a positive-semidefinite Hermitian matrix. This differs from the QR Decomposition implemented as scipy.linalg.qr.

How can I find P with numpy/scipy?

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The Numpy docs claim that QR and polar decompositions are the same; if you're convinced of the opposite, you might want to start a discussion on one of their mailing lists. –  larsmans Jan 5 '12 at 15:00

2 Answers 2

up vote 2 down vote accepted

Well, the wikipedia page on Polar decomposition you linked to contains formulas to compute it from the SVD.

Secondly, a few paragraphs up from the one you linked to from the scipy linalg tutorial, it is explained how to compute the SVD.

So, by combining these two, you should have the polar decomposition, no?

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