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Toric invariance of vertically parametrized systems

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abstract

We consider the problem of deciding whether the solution sets of a parametrized polynomial system are toric in the sense that they admit a monomial parametrization. We focus on vertically parametrized systems, which are sparse systems where we allow linear dependencies between coefficients in front of the same monomial. We give a matroid-theoretic characterization of the maximal-dimensional torus for which all solution sets are invariant under componentwise multiplication. Building on this, we provide necessary conditions and sufficient conditions for when the solution sets are unions of finitely many or a unique coset of this torus. The motivation of this work comes from the theory of reaction networks, where toric structure of the steady state system substantially simplifies the determination of multistationarity; here, we show that this is also the case for absolute concentration robustness and steady state invariants.

fields

q-bio.MN 1

years

2024 1

verdicts

UNVERDICTED 1

representative citing papers

Positive equilibria in mass action networks: geometry and bounds

q-bio.MN · 2024-09-10 · unverdicted · novelty 6.0

Constructs alternative equation systems for positive equilibria in mass action networks via natural partitions, yielding characterizations of toricity, bounds on nondegenerate equilibria, and semialgebraic multistationarity regions, with strengthened results for quadratic networks.

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  • Positive equilibria in mass action networks: geometry and bounds q-bio.MN · 2024-09-10 · unverdicted · none · ref 33 · internal anchor

    Constructs alternative equation systems for positive equilibria in mass action networks via natural partitions, yielding characterizations of toricity, bounds on nondegenerate equilibria, and semialgebraic multistationarity regions, with strengthened results for quadratic networks.