Distributional Gradient Matching for Learning Uncertain Neural Dynamics Models
–Neural Information Processing Systems
Differential equations in general and neural ODEs in particular are an essential technique in continuous-time system identification. While many deterministic learning algorithms have been designed based on numerical integration via the adjoint method, many downstream tasks such as active learning, exploration in reinforcement learning, robust control, or filtering require accurate estimates of predictive uncertainties.
Neural Information Processing Systems
Feb-12-2026, 00:08:15 GMT
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