Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Beyond Static Models: Hypernetworks for Adaptive and Generalizable Forecasting in Complex Parametric Dynamical Systems

About

Dynamical systems play a key role in modeling, forecasting, and decision-making across a wide range of scientific domains. However, variations in system parameters, also referred to as parametric variability, can lead to drastically different model behavior and output, posing challenges for constructing models that generalize across parameter regimes. In this work, we introduce the Parametric Hypernetwork for Learning Interpolated Networks (PHLieNet), a framework that simultaneously learns: (a) a global mapping from the parameter space to a nonlinear embedding and (b) a mapping from the inferred embedding to the weights of a dynamics propagation network. The learned embedding serves as a latent representation that modulates a base network, termed the hypernetwork, enabling it to generate the weights of a target network responsible for forecasting the system's state evolution conditioned on the previous time history. By interpolating in the space of models rather than observations, PHLieNet facilitates smooth transitions across parameterized system behaviors, enabling a unified model that captures the dynamic behavior across a broad range of system parameterizations. The performance of the proposed technique is validated in a series of dynamical systems with respect to its ability to extrapolate in time and interpolate and extrapolate in the parameter space, i.e., generalize to dynamics that were unseen during training. Our approach outperforms state-of-the-art baselines in both short-term forecast accuracy and in capturing long-term dynamical features such as attractor statistics.

Pantelis R. Vlachas, Konstantinos Vlachas, Eleni Chatzi• 2025

Related benchmarks

TaskDatasetResultRank
Parametric Dynamical System ModelingFinance Interpolation
TtT0.245
2
Parametric Dynamical System ModelingChua Interpolation
TtT0.211.1
2
Parametric Dynamical System ModelingRössler (Extrapolation)
TtT0.229.3
2
Parametric Dynamical System ModelingVan der Pol Interpolation
TtT0.2 Deviation22
2
Parametric Dynamical System ModelingRössler (Interpolation)
TtT0.260.2
2
Parametric Dynamical System ModelingLorenz 3D (Interpolation)
TtT0.212.6
2
Parametric Dynamical System ModelingDuffing (Interpolation)
TtT0.224.2
2
Parametric Dynamical System ModelingVan der Pol (Extrapolation)
TtT0.24.61
2
Parametric Dynamical System ModelingFinance Extrapolation
TtT0.230.5
2
Showing 9 of 9 rows

Other info

Follow for update