Asymptotic tensor rank is characterized by polynomials
Matthias Christandl, Koen Hoeberechts, Harold Nieuwboer, P\'eter, Vrana, Jeroen Zuiddam

TL;DR
This paper proves that asymptotic tensor rank can be characterized by a finite set of polynomials, making it 'computable from above' and revealing its well-ordered structure across all tensors, with implications for matrix multiplication complexity.
Contribution
It establishes that asymptotic tensor rank is determined by polynomial inequalities, proving its 'computability from above' and its well-ordered nature over infinite fields.
Findings
Asymptotic tensor rank is Zariski-closed and characterized by polynomials.
The set of all asymptotic tensor ranks is well-ordered, with no infinite decreasing sequences.
Implications for matrix multiplication exponent include stability and 'discreteness' from above.
Abstract
Asymptotic tensor rank is notoriously difficult to determine. Indeed, determining its value for the matrix multiplication tensor would determine the matrix multiplication exponent, a long-standing open problem. On the other hand, Strassen's asymptotic rank conjecture makes the bold claim that asymptotic tensor rank equals the largest dimension of the tensor and is thus as easy to compute as matrix rank. Despite tremendous interest, much is still unknown about the structural and computational properties of asymptotic rank; for instance whether it is computable. We prove that asymptotic tensor rank is "computable from above", that is, for any real number there is an (efficient) algorithm that determines, given a tensor , if the asymptotic tensor rank of is at most . The algorithm has a simple structure; it consists of evaluating a finite list of polynomials on…
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Taxonomy
TopicsTensor decomposition and applications · Elasticity and Material Modeling · Matrix Theory and Algorithms
