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Non-linear ICA based on Cramer-Wold metric

1 March 2019
Przemysław Spurek
A. Nowak
Jacek Tabor
Lukasz Maziarka
Stanislaw Jastrzebski
    CML
ArXiv (abs)PDFHTML
Abstract

Non-linear source separation is a challenging open problem with many applications. We extend a recently proposed Adversarial Non-linear ICA (ANICA) model, and introduce Cramer-Wold ICA (CW-ICA). In contrast to ANICA we use a simple, closed--form optimization target instead of a discriminator--based independence measure. Our results show that CW-ICA achieves comparable results to ANICA, while foregoing the need for adversarial training.

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