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arxiv: 2604.11124 · v1 · submitted 2026-04-13 · 🧮 math.OC

Polyconvexity with Moments and Sums of Squares

Pith reviewed 2026-05-10 15:50 UTC · model grok-4.3

classification 🧮 math.OC
keywords polyconvexitysum of squaresmoment relaxationspolynomial optimizationnonlinear elasticitycalculus of variationsconvex envelopes
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The pith

Polynomial matrix functions admit sum-of-squares certificates for polyconvexity and moment-based computations of their envelopes.

A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.

A function is polyconvex if it depends convexly on the minors of its matrix argument. This property guarantees existence of energy minimizers in nonlinear elasticity. For polynomial functions, verifying polyconvexity or finding the largest polyconvex lower bound has been hard. The paper develops sum-of-squares conditions that give sufficient convex-optimization tests for polyconvexity and a moment hierarchy that approximates the polyconvex envelope at any given matrix point. These tools matter because they turn theoretical regularity requirements into computable checks that can be used when designing or analyzing material models.

Core claim

For a polynomial function of a matrix, polyconvexity can be certified by checking whether a certain polynomial expression in the minors is a sum of squares, which is decided by semidefinite programming. The polyconvex envelope at a point is found as the solution of a polynomial optimization problem over the set of possible minor values, which is relaxed using the moment-sum-of-squares hierarchy to yield a sequence of lower bounds that converge to the envelope value.

What carries the argument

Sum-of-squares decompositions for certifying nonnegativity of polynomials in the matrix minors, combined with the moment relaxations of the polynomial optimization problem that defines the polyconvex envelope.

If this is right

  • Low-degree polynomial energies in elasticity can now be checked numerically for polyconvexity.
  • The polyconvex envelope can be evaluated pointwise to obtain a relaxed energy that still satisfies the existence theorem.
  • These relaxations provide a systematic way to handle non-polyconvex but physically motivated energies.
  • The hierarchy gives a sequence of improving approximations whose quality can be assessed by the duality gap or rank conditions.

Where Pith is reading between the lines

These are editorial extensions of the paper, not claims the author makes directly.

  • Numerical experiments on standard test functions would show how often the SOS conditions succeed in certifying polyconvexity.
  • The computed envelopes could be used to create globally polyconvex approximations by interpolation for practical use.
  • The framework allows optimization over the set of certified polyconvex polynomials to find closest fits to a target energy.

Load-bearing premise

The degree of the polynomial matrix function is low enough for the sum-of-squares and moment relaxations to be computationally tractable while also being tight enough to be useful.

What would settle it

Apply the moment hierarchy to compute the polyconvex envelope of a polynomial function whose exact polyconvex envelope is known analytically, and check whether the numerical result matches the exact value within solver tolerance.

Figures

Figures reproduced from arXiv: 2604.11124 by Ajay Murali, Didier Henrion (LAAS-POP), Giovanni Fantuzzi, Martin Kru{\v{z}}\'ik (UTIA / CAS), Stephan Weis.

Figure 1
Figure 1. Figure 1: Rank of the moment matrix for the example in Section [PITH_FULL_IMAGE:figures/full_fig_p020_1.png] view at source ↗
Figure 2
Figure 2. Figure 2: Histogram of computational times (in seconds, on a standard laptop) for computing [PITH_FULL_IMAGE:figures/full_fig_p021_2.png] view at source ↗
read the original abstract

A function of a matrix is polyconvex when it can be expressed as a convex function of the matrix minors. Polyconvexity is a regularity condition ensuring existence of minimizers in nonlinear elasticity and, more broadly, in vectorial problems of the calculus of variations, when minimizing integral gradient functionals. The polyconvex envelope of a function is the largest polyconvex lower bound. Yet deciding whether a given energy is polyconvex, or computing the polyconvex envelope, are generally difficult problems. This paper focuses on polynomial matrix functions. We propose (i) tractable convex-optimization based sufficient conditions to certify polyconvexity via sum-of-squares (SOS) technology, and (ii) a principled numerical method to compute the polyconvex envelope pointwise, based on the moment-SOS hierarchy from polynomial optimization.

Editorial analysis

A structured set of objections, weighed in public.

Desk editor's note, referee report, simulated authors' rebuttal, and a circularity audit. Tearing a paper down is the easy half of reading it; the pith above is the substance, this is the friction.

Referee Report

2 major / 2 minor

Summary. The paper proposes tractable sufficient conditions, based on sum-of-squares (SOS) certificates, to certify that a polynomial matrix function is polyconvex (i.e., convex in its minors). It also develops a moment-SOS hierarchy from polynomial optimization to compute the polyconvex envelope of such a function at a given point.

Significance. If the SOS certificates are valid and the hierarchy converges as claimed, the work supplies practical convex-optimization tools for verifying polyconvexity and approximating envelopes. These are directly relevant to existence questions in nonlinear elasticity and vectorial calculus of variations, where polyconvexity is a key regularity condition. The approach reuses established SOS/moment technology rather than inventing new relaxations, which is a methodological strength.

major comments (2)
  1. [§3] §3 (SOS certificate for polyconvexity): the formulation appears to treat the minors as free variables when writing the SOS program. Because the minors satisfy nontrivial algebraic relations (Plücker relations, rank constraints, etc.), an SOS certificate in the free variables may certify a stronger property than polyconvexity or, conversely, may miss valid polyconvex functions. The manuscript must either work on the variety or prove that the free relaxation remains valid for the polyconvexity claim; neither is obvious from the abstract and both become fragile for matrix sizes or degrees beyond the smallest cases.
  2. [§4] §4 (moment-SOS hierarchy): the claim that the hierarchy computes the polyconvex envelope pointwise requires a convergence theorem. It is unclear whether the proof accounts for the algebraic dependencies among the minors or whether the relaxation is performed in the ambient space of all minors. Without this, the numerical method may converge to the convex envelope of the lifted function rather than the true polyconvex envelope.
minor comments (2)
  1. Notation for the minor map and the lifted function should be introduced once and used consistently; several passages switch between M and the vector of all minors without explicit redefinition.
  2. The numerical examples would benefit from a table reporting both the SOS certificate degree and the moment relaxation order used, together with the resulting bound and CPU time.

Simulated Author's Rebuttal

2 responses · 0 unresolved

We are grateful to the referee for the thorough review and insightful comments on our manuscript. The concerns raised regarding the treatment of algebraic relations among minors in both the SOS certificates and the moment-SOS hierarchy are important, and we will revise the paper to address them explicitly. Below we provide point-by-point responses to the major comments.

read point-by-point responses
  1. Referee: [§3] §3 (SOS certificate for polyconvexity): the formulation appears to treat the minors as free variables when writing the SOS program. Because the minors satisfy nontrivial algebraic relations (Plücker relations, rank constraints, etc.), an SOS certificate in the free variables may certify a stronger property than polyconvexity or, conversely, may miss valid polyconvex functions. The manuscript must either work on the variety or prove that the free relaxation remains valid for the polyconvexity claim; neither is obvious from the abstract and both become fragile for matrix sizes or degrees beyond the smallest cases.

    Authors: We thank the referee for this observation. As stated in the abstract, our SOS-based conditions are sufficient (not necessary) for certifying polyconvexity. By constructing an SOS-convex polynomial g in the free minor variables such that g composed with the minor map recovers the original polynomial function, we obtain a valid sufficient certificate for polyconvexity, since the definition requires convexity of g over the entire ambient space. This approach does not claim to characterize all polyconvex functions, only to provide a tractable way to certify some of them. To address the potential for missing cases, we will revise the manuscript to include a discussion clarifying that the free-variable SOS provides a sufficient condition and, where possible, note how the linear constraints for matching the function account for the relations implicitly through the composition. We will also consider adding an optional formulation using the quotient algebra for cases where a tighter certificate is desired. This revision will make the scope and limitations clearer, particularly for larger matrix sizes. revision: partial

  2. Referee: [§4] §4 (moment-SOS hierarchy): the claim that the hierarchy computes the polyconvex envelope pointwise requires a convergence theorem. It is unclear whether the proof accounts for the algebraic dependencies among the minors or whether the relaxation is performed in the ambient space of all minors. Without this, the numerical method may converge to the convex envelope of the lifted function rather than the true polyconvex envelope.

    Authors: We agree that the convergence of the moment-SOS hierarchy to the polyconvex envelope needs to be rigorously established, taking into account the semialgebraic structure of the set of realizable minor vectors. In the current manuscript, the hierarchy is set up in the ambient minor space with moment constraints derived from the original matrix variables, which implicitly respects the dependencies. However, we will strengthen §4 by providing a detailed convergence theorem in the revised version. This theorem will adapt standard results on the convergence of moment-SOS hierarchies for polynomial optimization over semialgebraic sets (accounting for the Plücker relations and rank conditions via additional polynomial constraints if needed) to show that the hierarchy converges to the value of the polyconvex envelope. We believe this addresses the concern and ensures the method computes the desired quantity rather than a looser convex relaxation. revision: yes

Circularity Check

0 steps flagged

No circularity: standard external SOS/moment relaxations applied to polyconvexity

full rationale

The paper's central claims rest on applying established sum-of-squares certificates and the Lasserre-type moment hierarchy (standard tools from the polynomial optimization literature) to certify polyconvexity of polynomial matrix functions and to compute their polyconvex envelopes pointwise. These relaxations are not defined in terms of the target polyconvex envelope or minor map within the paper; they are imported as externally validated convex-optimization primitives. No self-definitional steps, fitted inputs renamed as predictions, or load-bearing self-citations that reduce the derivation to a tautology appear in the described approach. The algebraic dependencies among minors are a practical implementation detail rather than a source of circular reasoning.

Axiom & Free-Parameter Ledger

0 free parameters · 3 axioms · 0 invented entities

The work rests on the standard definition of polyconvexity, the known equivalence between SOS and semidefinite programming, and the convergence properties of the moment-SOS hierarchy; no new free parameters or invented entities are introduced.

axioms (3)
  • standard math A function is polyconvex if it is a convex function of the minors of its argument matrix.
    Invoked in the first sentence of the abstract as the definition used throughout.
  • standard math Sum-of-squares polynomials can be certified via semidefinite programming.
    Basis for the proposed sufficient conditions.
  • domain assumption The moment-SOS hierarchy converges to the true infimum for the polynomial optimization problems that arise when evaluating the polyconvex envelope.
    Required for the numerical method to be exact in the limit.

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