Score: 2

Nonparametric estimation of homogenized invariant measures from multiscale data via Hermite expansion

Published: October 29, 2025 | arXiv ID: 2510.25521v1

By: Jaroslav I. Borodavka , Max Hirsch , Sebastian Krumscheid and more

BigTech Affiliations: University of California, Berkeley

Potential Business Impact:

Learns patterns from complex data using math.

Business Areas:
Test and Measurement Data and Analytics

We consider the problem of density estimation in the context of multiscale Langevin diffusion processes, where a single-scale homogenized surrogate model can be derived. In particular, our aim is to learn the density of the invariant measure of the homogenized dynamics from a continuous-time trajectory generated by the full multiscale system. We propose a spectral method based on a truncated Fourier expansion with Hermite functions as orthonormal basis. The Fourier coefficients are computed directly from the data owing to the ergodic theorem. We prove that the resulting density estimator is robust and converges to the invariant density of the homogenized model as the scale separation parameter vanishes, provided the time horizon and the number of Fourier modes are suitably chosen in relation to the multiscale parameter. The accuracy and reliability of this methodology is further demonstrated through a series of numerical experiments.

Country of Origin
🇮🇹 🇩🇪 🇺🇸 Germany, United States, Italy

Page Count
41 pages

Category
Mathematics:
Numerical Analysis (Math)