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In multilinear algebra, a tensor decomposition is any scheme for expressing a "data tensor" (M-way array) as a sequence of elementary operations acting on other, often simpler tensors.[1][2][3] Many tensor decompositions generalize some matrix decompositions.[4]

Tensors are generalizations of matrices to higher dimensions (or rather to higher orders, i.e. the higher number of dimensions) and can consequently be treated as multidimensional fields.[1][5] The main tensor decompositions are:

Notation

This section introduces basic notations and operations that are widely used in the field.

Table of symbols and their description.
Symbols Definition
a,𝐚,𝐚T,𝐀,π’œ scalar, vector, row, matrix, tensor
𝐚=vec(.) vectorizing either a matrix or a tensor
𝐀[m] matrixized tensor π’œ
×m mode-m product

Introduction

A multi-way graph with K perspectives is a collection of K matrices X1,X2.....XK with dimensions I Γ— J (where I, J are the number of nodes). This collection of matrices is naturally represented as a tensor X of size I Γ— J Γ— K. In order to avoid overloading the term β€œdimension”, we call an I Γ— J Γ— K tensor a three β€œmode” tensor, where β€œmodes” are the numbers of indices used to index the tensor.

References

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