An Introduction to Complex Random Tensors
This work considers the notion of random tensors and reviews some fundamental concepts in statistics when applied to a tensor based data or signal. In several engineering fields such as Communications, Signal Processing, Machine learning, and Control systems, the concepts of linear algebra combined...
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Main Authors | , , |
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Format | Journal Article |
Language | English |
Published |
23.04.2024
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Subjects | |
Online Access | Get full text |
DOI | 10.48550/arxiv.2404.15170 |
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Abstract | This work considers the notion of random tensors and reviews some fundamental
concepts in statistics when applied to a tensor based data or signal. In
several engineering fields such as Communications, Signal Processing, Machine
learning, and Control systems, the concepts of linear algebra combined with
random variables have been indispensable tools. With the evolution of these
subjects to multi-domain communication systems, multi-way signal processing,
high dimensional data analysis, and multi-linear systems theory, there is a
need to bring in multi-linear algebra equipped with the notion of random
tensors. Also, since several such application areas deal with complex-valued
entities, it is imperative to study this subject from a complex random tensor
perspective, which is the focus of this paper. Using tools from multi-linear
algebra, we characterize statistical properties of complex random tensors, both
proper and improper, study various correlation structures, and fundamentals of
tensor valued random processes. Furthermore, the asymptotic distribution of
various tensor eigenvalue and singular value definitions is also considered,
which is used for the study of spiked real tensor models that deals with
recovery of low rank tensor signals perturbed by noise. This paper aims to
provide an overview of the state of the art in random tensor theory of both
complex and real valued tensors, for the purpose of enabling its application in
engineering and applied science. |
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AbstractList | This work considers the notion of random tensors and reviews some fundamental
concepts in statistics when applied to a tensor based data or signal. In
several engineering fields such as Communications, Signal Processing, Machine
learning, and Control systems, the concepts of linear algebra combined with
random variables have been indispensable tools. With the evolution of these
subjects to multi-domain communication systems, multi-way signal processing,
high dimensional data analysis, and multi-linear systems theory, there is a
need to bring in multi-linear algebra equipped with the notion of random
tensors. Also, since several such application areas deal with complex-valued
entities, it is imperative to study this subject from a complex random tensor
perspective, which is the focus of this paper. Using tools from multi-linear
algebra, we characterize statistical properties of complex random tensors, both
proper and improper, study various correlation structures, and fundamentals of
tensor valued random processes. Furthermore, the asymptotic distribution of
various tensor eigenvalue and singular value definitions is also considered,
which is used for the study of spiked real tensor models that deals with
recovery of low rank tensor signals perturbed by noise. This paper aims to
provide an overview of the state of the art in random tensor theory of both
complex and real valued tensors, for the purpose of enabling its application in
engineering and applied science. |
Author | Decurninge, Alexis Pandey, Divyanshu Leib, Harry |
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BackLink | https://doi.org/10.48550/arXiv.2404.15170$$DView paper in arXiv |
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Snippet | This work considers the notion of random tensors and reviews some fundamental
concepts in statistics when applied to a tensor based data or signal. In
several... |
SourceID | arxiv |
SourceType | Open Access Repository |
SubjectTerms | Mathematics - Statistics Theory Statistics - Theory |
Title | An Introduction to Complex Random Tensors |
URI | https://arxiv.org/abs/2404.15170 |
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