Tensor-Tensor Products for Optimal Representation and Compression
Misha Kilmer, Lior Horesh, Haim Avron, Elizabeth Newman

TL;DR
This paper demonstrates that tensor-based methods for data compression outperform traditional matrix approaches, providing optimality results and new algorithms for high-dimensional data representation.
Contribution
It proves Eckart Young optimality for tensor-SVDs, shows tensor methods can surpass matrix methods in efficiency, and introduces new tensor truncated SVD variants.
Findings
Tensor-tensor representations can be more efficient than matrix representations.
Proven Eckart Young optimality for tensor-SVD truncation strategies.
Numerical results confirm the advantages of tensor-based compression methods.
Abstract
In this era of big data, data analytics and machine learning, it is imperative to find ways to compress large data sets such that intrinsic features necessary for subsequent analysis are not lost. The traditional workhorse for data dimensionality reduction and feature extraction has been the matrix SVD, which presupposes that the data has been arranged in matrix format. Our main goal in this study is to show that high-dimensional data sets are more compressible when treated as tensors (aka multiway arrays) and compressed via tensor-SVDs under the tensor-tensor product structures in (Kilmer and Martin, 2011; Kernfeld et al., 2015). We begin by proving Eckart Young optimality results for families of tensor-SVDs under two different truncation strategies. As such optimality properties can be proven in both matrix and tensor-based algebras, a fundamental question arises: does the tensor…
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Taxonomy
TopicsTensor decomposition and applications · Parallel Computing and Optimization Techniques · Algorithms and Data Compression
