Convergence theory for Hermite approximations under adaptive coordinate transformations

arXiv stat.ML / 4/21/2026

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Key Points

  • The paper derives the first error estimates for Hermite-expansion approximations when the input is composed with adaptively learned coordinate transformations.
  • It establishes an “equivalence principle” stating that approximating a function in the span of the transformed Hermite basis is equivalent to approximating the pullback of the function in the span of standard Hermite functions.
  • By mapping the problem back to classical Hermite approximation theory, the authors express convergence/error in transformed coordinates through the regularity properties of the pullback.
  • The work includes an example where a nonlinear coordinate transformation constructed via a monotone transport map improves convergence, yielding spectral convergence rates for functions that are smooth and decay along the real axis.
  • Overall, the results provide theoretical grounding for adaptive Hermite approximations that use normalizing flows (invertible neural networks), aligning with recent computational quantum physics approaches.

Abstract

Recent work has shown that parameterizing and optimizing coordinate transformations using normalizing flows, i.e., invertible neural networks, can significantly accelerate the convergence of spectral approximations. We present the first error estimates for approximating functions using Hermite expansions composed with adaptive coordinate transformations. Our analysis establishes an equivalence principle: approximating a function f in the span of the transformed basis is equivalent to approximating the pullback of f in the span of Hermite functions. This allows us to leverage the classical approximation theory of Hermite expansions to derive error estimates in transformed coordinates in terms of the regularity of the pullback. We present an example demonstrating how a nonlinear coordinate transformation can enhance the convergence of Hermite expansions. Focusing on smooth functions decaying along the real axis, we construct a monotone transport map that aligns the decay of the target function with the Hermite basis. This guarantees spectral convergence rates for the corresponding Hermite expansion. Our analysis provides theoretical insight into the convergence behavior of adaptive Hermite approximations based on normalizing flows, as recently explored in the computational quantum physics literature.