Beyond data subsampling: differentiation as an uncertainty source in equation discovery

Published: 24 Sept 2025, Last Modified: 26 Dec 2025NeurIPS2025-AI4Science PosterEveryoneRevisionsBibTeXCC BY 4.0
Additional Submission Instructions: For the camera-ready version, please include the author names and affiliations, funding disclosures, and acknowledgements.
Track: Track 1: Original Research/Position/Education/Attention Track
Keywords: equation discovery, differential equation, differentiation methods, ensembles, uncertainty
TL;DR: Differentiation methods are hyperparameters not a once-a-lifetime choice in equation discovery
Abstract: Data-driven discovery of differential equations typically treats numerical differentiation as a fixed preprocessing step. Existing algorithms improve robustness through data and library subsampling but rarely account for variability in the differentiation method itself. We show that this choice introduces a systematic and reproducible source of uncertainty that alters both the structure of the equation and the coefficients. High-resolution schemes amplify noise, while heavily smoothed derivatives suppress meaningful fluctuations, yielding method-dependent results. We evaluate six differentiation techniques across multiple PDEs and noise levels using SINDy and EPDE, finding consistent shifts in the models discovered. These results establish differentiation method selection as a fundamental modeling decision and a new axis to improve ensemble-based equation discovery.
Submission Number: 45
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