Researchers have developed a new theoretical framework for identifying governing equations from solution data, addressing a fundamental challenge in scientific machine learning. The approach introduces the Hausdorff distance as a metric for comparing differential equations, enabling the characterization of conditions under which equations can be uniquely and stably identified. This work provides identifiability bounds and analyzes sample complexity, quantifying the number of observations required to reliably recover the underlying equation for various classes of ODEs. AI
IMPACT Provides theoretical foundations for identifying governing equations, potentially improving scientific discovery and simulation accuracy.
RANK_REASON The cluster consists of an academic paper published on arXiv, detailing theoretical advancements in scientific machine learning.
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- arXiv
- Brunton
- convolutional neural operators
- cs.LG
- Datadriven Discovery Partial
- Discovering governing equations from data by sparse identification of nonlinear dynamical systems
- Hausdorff distance
- Hugging Face
- Kovachki
- Long
- Neural operator learning of heterogeneous mechanobiological insults contributing to aortic aneurysms
- Ordinary Differential Equations
- PDENet
- Raonići
- Rudy
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