AI RESEARCH
Bayesian Inference for Missing Physics
arXiv CS.LG
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ArXi:2603.14918v1 Announce Type: cross Model-based approaches for (bio)process systems often suffer from incomplete knowledge of the underlying physical, chemical, or biological laws. Universal differential equations, which embed neural networks within differential equations, have emerged as powerful tools to learn this missing physics from experimental data. However, neural networks are inherently opaque, motivating their post-processing via symbolic regression to obtain interpretable mathematical expressions.