AI RESEARCH
Symbolic Graph Networks for Robust PDE Discovery from Noisy Sparse Data
arXiv CS.AI
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ArXi:2603.22380v1 Announce Type: cross Data-driven discovery of partial differential equations (PDEs) offers a promising paradigm for uncovering governing physical laws from observational data. However, in practical scenarios, measurements are often contaminated by noise and limited by sparse sampling, which poses significant challenges to existing approaches based on numerical differentiation or integral formulations. In this work, we propose a Symbolic Graph Network (SGN) framework for PDE discovery under noisy and sparse conditions.