Reducing Computational Complexity of Tensor Contractions via Tensor-Train Networks
Ilya Kisil, Giuseppe G. Calvi, Kriton Konstantinidis, Yao Lei Xu,, Danilo P. Mandic

TL;DR
This paper introduces a tensor train-based method to efficiently compute tensor contractions, significantly reducing computational complexity and making tensor operations more scalable for large, multi-dimensional data.
Contribution
The paper proposes a novel tensor train contraction product that accelerates tensor computations by reducing complexity from exponential to linear in tensor order.
Findings
Tensor train contraction significantly speeds up tensor operations.
The method is independent of tensor order, enhancing scalability.
It simplifies tensor manipulation with diagrammatic tensor network techniques.
Abstract
There is a significant expansion in both volume and range of applications along with the concomitant increase in the variety of data sources. These ever-expanding trends have highlighted the necessity for more versatile analysis tools that offer greater opportunities for algorithmic developments and computationally faster operations than the standard flat-view matrix approach. Tensors, or multi-way arrays, provide such an algebraic framework which is naturally suited to data of such large volume, diversity, and veracity. Indeed, the associated tensor decompositions have demonstrated their potential in breaking the Curse of Dimensionality associated with traditional matrix methods, where a necessary exponential increase in data volume leads to adverse or even intractable consequences on computational complexity. A key tool underpinning multi-linear manipulation of tensors and tensor…
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Taxonomy
TopicsTensor decomposition and applications · Parallel Computing and Optimization Techniques · Advanced Neuroimaging Techniques and Applications
