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Tensor decomposition

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In multilinear algebra, a tensor decomposition [1][2] is any scheme for expressing a tensor as a sequence of elementary operations acting on other, often simpler tensors. Many tensor decompositions generalize some matrix decompositions.[3]

Tensors are generalizations of matrices to higher dimensions and can consequently be treated as multidimensional fields [4]. The main tensor decompositions are:

Preliminary Definitions and Notation

This section introduces basic notations and operations that are widely used in the field. A summary of symbols that we use through the whole thesis can be found in the table [11]

Table of symbols and their description.
Symbols Definition
Matrix, Column vector, Scalar
Set of Real Numbers
Vectorization operator

Introduction

A multi-view graph with K views is a collection of K matrices with dimensions I × J (where I, J are the number of nodes). This collection of matrices is naturally represented as a tensor X of size I × J × K. In order to avoid overloading the term “dimension”, we call an I × J × K tensor a three “mode” tensor, where “modes” are the numbers of indices used to index the tensor.


References

  1. ^ Sidiropoulos, Nicholas D. "Tensor Decomposition for Signal Processing and Machine Learning". IEEE Transactions on Signal Processing.
  2. ^ Kolda, T. G. "Tensor Decompositions and Applications". SIAM Review. doi:10.1137/07070111X.
  3. ^ Bernardi, A.; Brachat, J.; Comon, P.; Mourrain, B. (2013-05-01). "General tensor decomposition, moment matrices and applications". Journal of Symbolic Computation. 52: 51–71. arXiv:1105.1229. doi:10.1016/j.jsc.2012.05.012. ISSN 0747-7171. S2CID 14181289.
  4. ^ Rabanser, Stephan. "Introduction to Tensor Decompositions and their Applications in Machine Learning" (PDF).
  5. ^ Papalexakis, Evangelos E. "Automatic unsupervised tensor mining with quality assessment".
  6. ^ Gujral, Ekta; Pasricha, Ravdeep; Papalexakis, Evangelos E. (7 May 2018). "SamBaTen: Sampling-based Batch Incremental Tensor Decomposition". Proceedings of the 2018 SIAM International Conference on Data Mining. doi:10.1137/1.9781611975321.
  7. ^ Gujral, Ekta; Papalexakis, Evangelos E. (9 October 2020). "OnlineBTD: Streaming Algorithms to Track the Block Term Decomposition of Large Tensors". 2020 IEEE 7th International Conference on Data Science and Advanced Analytics (DSAA). doi:10.1109/DSAA49011.2020.00029.
  8. ^ Gujral, Ekta. "Modeling and Mining Multi-Aspect Graphs With Scalable Streaming Tensor Decomposition".
  9. ^ Lathauwer, Lieven De. "Decompositions of a Higher-Order Tensor in Block Terms—Part II: Definitions and Uniqueness". doi:10.1137/070690729.
  10. ^ Gujral, Ekta. "Beyond rank-1: Discovering rich community structure in multi-aspect graphs". doi:10.1145/3366423.3380129.
  11. ^ Gujral, Ekta. "Modeling and Mining Multi-Aspect Graphs With Scalable Streaming Tensor Decomposition".