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Autori principali: Talebi, Sayed Pouria, Took, Clive Cheong
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2603.11835
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author Talebi, Sayed Pouria
Took, Clive Cheong
author_facet Talebi, Sayed Pouria
Took, Clive Cheong
contents Numerous attempts have been made to replicate the success of complex-valued algebra in engineering and science to other hypercomplex domains such as quaternions, tessarines, biquaternions, and octonions. Perhaps, none have matched the success of quaternions. The most useful feature of quaternions lies in their ability to model three-dimensional rotations which, in turn, have found various industrial applications such as in aeronautics and computergraphics. Recently, we have witnessed a renaissance of quaternions due to the rise of machine learning. To equip the reader to contribute to this emerging research area, this chapter lays down the foundation for: - augmented statistics for modelling quaternion-valued random processes, - widely linear models to exploit such advanced statistics, - quaternion calculus and algebra for algorithmic derivations, - mean square estimation for practical considerations. For ease of exposure, several examples are offered to facilitate the learning, understanding, and(hopefully) the adoption of this multidimensional domain.
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publishDate 2026
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spellingShingle Hypercomplex Widely Linear Processing: Fundamentals for Quaternion Machine Learning
Talebi, Sayed Pouria
Took, Clive Cheong
Machine Learning
Numerous attempts have been made to replicate the success of complex-valued algebra in engineering and science to other hypercomplex domains such as quaternions, tessarines, biquaternions, and octonions. Perhaps, none have matched the success of quaternions. The most useful feature of quaternions lies in their ability to model three-dimensional rotations which, in turn, have found various industrial applications such as in aeronautics and computergraphics. Recently, we have witnessed a renaissance of quaternions due to the rise of machine learning. To equip the reader to contribute to this emerging research area, this chapter lays down the foundation for: - augmented statistics for modelling quaternion-valued random processes, - widely linear models to exploit such advanced statistics, - quaternion calculus and algebra for algorithmic derivations, - mean square estimation for practical considerations. For ease of exposure, several examples are offered to facilitate the learning, understanding, and(hopefully) the adoption of this multidimensional domain.
title Hypercomplex Widely Linear Processing: Fundamentals for Quaternion Machine Learning
topic Machine Learning
url https://arxiv.org/abs/2603.11835