Alternating minimization, scaling algorithms, and the null-cone problem from invariant theory
Peter B\"urgisser, Ankit Garg, Rafael Oliveira, Michael, Walter, Avi Wigderson

TL;DR
This paper introduces a rigorous framework for alternating minimization algorithms applied to the null-cone problem in invariant theory, providing a polynomial-time approximation scheme with broad applications across multiple fields.
Contribution
It develops a general, analyzable framework for group-invariant tensor optimization problems, extending operator scaling and offering a polynomial-time approximation scheme.
Findings
Established a polynomial-time approximation scheme for the null-cone problem.
Unified various computational problems under a common invariant-theoretic framework.
Provided new bounds on invariant polynomial coefficients and advanced non-commutative duality theory.
Abstract
Alternating minimization heuristics seek to solve a (difficult) global optimization task through iteratively solving a sequence of (much easier) local optimization tasks on different parts (or blocks) of the input parameters. While popular and widely applicable, very few examples of this heuristic are rigorously shown to converge to optimality, and even fewer to do so efficiently. In this paper we present a general framework which is amenable to rigorous analysis, and expose its applicability. Its main feature is that the local optimization domains are each a group of invertible matrices, together naturally acting on tensors, and the optimization problem is minimizing the norm of an input tensor under this joint action. The solution of this optimization problem captures a basic problem in Invariant Theory, called the null-cone problem. This algebraic framework turns out to encompass…
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