Polynomial-exponential decomposition from moments
Bernard Mourrain (AROMATH)

TL;DR
This paper introduces new algorithms for decomposing multivariate polynomial-exponential functions from truncated series, leveraging algebraic duality, Hankel operators, and eigenvector methods to efficiently compute their frequencies and weights.
Contribution
It generalizes Kronecker and Prony's theorems to multivariate cases and provides a comprehensive framework for polynomial-exponential decomposition using algebraic and operator-theoretic techniques.
Findings
Established correspondence between polynomial-exponential functions and Artinian Gorenstein algebras.
Extended Kronecker theorem to multivariate polynomial-exponential series.
Developed a new algorithm for basis computation and decomposition of polynomial-exponential series.
Abstract
We analyze the decomposition problem of multivariate polynomial-exponential functions from truncated series and present new algorithms to compute their decomposition. Using the duality between polynomials and formal power series, we first show how the elements in the dual of an Artinian algebra correspond to polynomial-exponential functions. They are also the solutions of systems of partial differential equations with constant coefficients. We relate their representation to the inverse system of the roots of the characteristic variety. Using the properties of Hankel operators, we establish a correspondence between polynomial exponential series and Artinian Gorenstein algebras. We generalize Kronecker theorem to the multivariate case, by showing that the symbol of a Hankel operator of finite rank is a polynomial-exponential series and by connecting the rank of the Hankel operator with…
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