The tensor Singular Value Decomposition (t-SVD) for third order tensors that
was proposed by Kilmer and Martin~\cite{2011kilmer} has been applied
successfully in many fields, such as computed tomography, facial recognition,
and video completion. In this paper, we propose a method that extends a
well-known randomized matrix method to the t-SVD. This method can produce a
factorization with similar properties to the t-SVD, but is more computationally
efficient on very large datasets. We present details of the algorithm,
theoretical results, and provide numerical results that show the promise of our
approach for compressing and analyzing datasets. We also present an improved
analysis of the randomized subspace iteration for matrices, which may be of
independent interest to the scientific community.
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