Polynomial-Time Optimal Group Selection via the Double-Commutator Eigenvalue Problem
Mitchell A. Thornton

TL;DR
This paper introduces a polynomial-time algorithm for optimal group selection in algebraic diversity frameworks, reducing a complex combinatorial problem to a generalized eigenvalue problem involving the double commutator of the covariance matrix.
Contribution
It presents a novel polynomial-time, closed-form solution for group selection using the double-commutator eigenvalue problem, linking group theory, matrix analysis, and statistical estimation.
Findings
The eigenvector of the double-commutator matrix constructs the optimal group generator.
The eigenvalue being zero indicates the optimal generator lies in the basis span.
The approach is exact, certifiable, and extends to non-Abelian symmetry recovery.
Abstract
The algebraic diversity framework generalizes temporal averaging over multiple observations to algebraic group action on a single observation for second-order statistical estimation. The central open problem in this framework is : given an -dimensional observation with unknown covariance structure, find the finite group whose spectral decomposition best matches the covariance. Naive enumeration of all subgroups of the symmetric group requires exponential time in . We prove that this combinatorial problem reduces to a generalized eigenvalue problem derived from the double commutator of the covariance matrix, yielding a polynomial-time algorithm with complexity , where is the dimension of a generator basis. The minimum eigenvector of the double-commutator matrix directly constructs the optimal group generator in closed form, with…
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